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Process Systems Engineering
Optimal design and management of industrial waste-to-energy systems Vasco Bolis, Elisabet Capon-Garcia, Marta Roca-Puigros, Aline Gazzola, and Konrad Hungerbuehler Ind. Eng. Chem. Res., Just Accepted Manuscript • DOI: 10.1021/acs.iecr.8b03129 • Publication Date (Web): 08 Jan 2019 Downloaded from http://pubs.acs.org on January 10, 2019
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Industrial & Engineering Chemistry Research
Optimal design and management of industrial waste-to-energy systems Vasco Bolis,
y
Elisabet Cap on-Garc a,
,z
y
Marta Roca-Puigros,
Aline Gazzola,
y
y
1
and Konrad Hungerb uhler
yInstitute for Chemical and Bioengineering, ETH Zurich, Vladimir-Prelog-Weg 1, 8093
Zurich, Switzerland zABB Switzerland Ltd., Segelhofstrasse 1K, 5405 Baden-Dattwil, Switzerland E-mail:
[email protected] Abstract
2
3
This work proposes a novel methodology for the optimization of industrial waste-to-
4
energy networks, combining logistic, site management and process elements into a single
5
MILP formulation. The developed model is validated with real information stemming
6
from industrial and institutional partners, and consequently applied to a multi-site case
7
study covering the whole Swiss industrial waste-to-energy network. Due to the sparse
8
nature of its chemical and pharmaceutical industry, and to centralized incineration
9
facilities, this can be considered as an ideal case for testing the application of developed
10
methodology to complex systems.
11
the implications of diverging goals on economic, environmental and safety aspects, with
12
particular focus on investments and possible synergies. Results indicate the importance
13
of investments in oxy-combustion that, together with a more cooperative management
14
of the network including the cement industry, enable a more local waste treatment with
15
a consequent reduction of shipments.
A set of ob jective functions is used to investigate
1
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1
Introduction
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In the last years, the increasing environmental awareness has lead to a more stringent envi-
18
ronmental legislation in many countries, aiming to foster a more sustainable consumption of
19
natural resources. This is of special concern for energy-intensive industrial sectors, such as
20
the chemical one, which currently relies predominantly on fossil sources for the supply of both
21
energy and raw chemicals. In fact, the chemical and petrochemical industry is the largest
22
energy consumer among all industrial branches, with approximately 29% of the total indus-
23
trial energy use worldwide, corresponding to about 7.8% of the global energy consumption 1 .
24
Therefore, a large number of studies have tackled sustainability issues in the manufacturing
25
industry, for instance in the form of process intensi cation and heat integration opportuni-
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ties. Nevertheless, these works have mostly focused on the process level; the integration with
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other perspectives, as waste and supply chain management, have only recently started to be
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addressed 2,3 . In fact, current scienti c interests in process system engineering increasingly
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consider more global approaches, such as enterprise-wide optimization 4 . An important is-
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sue, especially for multi-purpose plants, is the coordination between production process and
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treatment facilities for the generated hazardous waste to avoid manufacturing hold-ups. In
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this sense, Chakraborty and Linninger have discussed the importance of a well-coordinated
33
design of production processes and waste management in batch manufacturing sites in a
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series of publications, demonstrating that this can lead to important economical and envi-
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ronmental bene ts at plant level 5 . The exibility of the obtained waste management design
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and strategies can then be assessed by considering longer multi-period horizons and uncertain
37
conditions 6,7 .
38
Another interesting example of synergistic plant bene ts can be found in the work of
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Wassick about enterprise-wide optimization in integrated chemical complexes, which are
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described as a set of interconnected sub-systems that can be optimized separately 8 . Each of
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them combines several planning and operational challenges associated to a given product or
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service, such as utilities or waste treatment, thus integrating dierent process and logistic 2
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elements into a single formulation. In particular, this publication presents a detailed case
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study on the waste management sub-system of a chemical complex, showing a signi cant
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optimization potential. New opportunities arising from waste solvent mixing have been
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discussed by Rerat et al., in a formulation optimizing the choice between dierent treatment
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options available in the investigated batch manufacturing site for a set of given streams 9 .
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An optimization model including heat integration between the dierent treatment processes
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has been proposed by Capon-Garca et al. for the same chemical site studied by Rerat et al.,
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highlighting the energetic importance of thermal valorization of waste residues 10 .
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Among the available technologies for the thermal treatment of hazardous waste residues,
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incineration is surely one of the most interesting options because of its large versatility.
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Indeed, it can be applied to a broad set of waste types with dierent properties and com-
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position, as well as to solid, liquid and gaseous residuals. The remaining pollutant species
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are removed from the produced fumes, as requested by the corresponding regulation, with a
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combination of washing and dust-removing steps. An additional advantage of incineration
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is the possibility to partially recover the released combustion heat in the form of steam,
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which can be directly used as utility or converted into electricity. This is particularly in-
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teresting in the case of integrated chemical sites, whose utility requirements ensure that
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the generated heat can be successfully exploited through a straightforward integration with
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existing steam networks. However, the complexity of the incineration process necessitates
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a careful planning of both operation and waste streams management to avoid any possible
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production hold-up. Speci cally, the main diculty arises from the huge variety of waste
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residues that the chemical and process industry generates in large volumes, with disparate
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composition and physicochemical properties. Thus, an appropriate management of tempo-
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rary storage facilities is particularly critical to prevent incompatible mixing and consequent
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accidents. Moreover, it is common operational practice to simultaneously burn waste streams
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with dierent water content and heating value, so as to exploit the energy content of highly
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calori c combustible residues to sustain the incineration of non-combustible ones. Auxiliary 3
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fuels, such as natural gas, and water are used in case of energy shortage and excess, respec-
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tively. In this sense, recent studies have shown that an optimized planning and scheduling
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of hazardous waste incineration can be an ecient tool to reduce the consumption of such
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auxiliary fuels, with important economic and environmental bene ts 11,12 . The model pro-
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posed by Abaecherli et al. optimizes waste ows between dierent storage and treatment
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units, while imposing relevant operational constraints on waste mixing, treated capacity and
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combustion temperature under an auxiliary fuel minimization objective.
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Even though the previously discussed works have successfully introduced dierent per-
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spectives for hazardous waste management, either more operational or more investment-
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oriented, none of them has gone beyond the scale of an integrated chemical site. An im-
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portant reason behind this is presumably the lack of information about both shipments and
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generation of such waste residues, which has also been reported by the Organization for
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Economic Cooperation and Development 13 . In fact, whereas incinerators usually perform
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detailed analysis of their residues, companies without treatment facilities only classify them
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roughly based on the source process according to the current waste transport legislation.
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Speci cally, all transboundary waste transports are subject to the Basel Convention 14 , but
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many European countries, such as EU members and Switzerland, also require noti cation of
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intra-national shipments of hazardous residuals 15,16 . Nonetheless, incineration operators typ-
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ically rely on internal classi cation systems that are often inconsistent with both the other
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incineration sites and the transport noti cation system. Therefore, incineration-relevant
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physicochemical properties of the residues, such as heating value and composition, are not
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available for a signi cant fraction of hazardous waste. Recently, Bolis et al. have proposed
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a methodology for linking waste information from incineration plants to shipment noti -
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cation data, thus allowing for the estimation of waste properties of uncharacterized liquid
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hazardous residues 17 . Such knowledge enables the development of optimization tools for the
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management of industrial waste-to-energy networks, including chemical sites without any
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treatment facility. 4
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As previously mentioned, existing research has limited scope in terms of time and space
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scales; in contrast, this work truly goes beyond the scale of an integrated chemical site
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and considers the full chemical industrial waste-to-energy perspective. The importance of
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considering a network perspective for industrial waste-to-energy systems is given by two
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main reasons. First, chemical sites without incineration or other treatment facilities need
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to outsource the disposal of their residues, leading to considerable waste transports towards
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incineration plants. Besides representing an excellent economic opportunity for incinerators,
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as it allows to accept more external residues, an optimized waste management stands for an
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ecient tool to both diminish the consumption of auxiliary fuels and increase the amount of
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energy recovered from the residues. Second, the potentially dangerous nature of the residuals
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requires particular attention for avoiding unnecessary shipments that goes beyond purely
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economic or energetic considerations. Indeed, the transportation of hazardous chemicals
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through densely populated areas is already a major concern, as shown by recent safety
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measures introduced in Switzerland 18 . Both aspects are in line with the envisaged future
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challenges for thermal waste valorization, which include a minimization of transport and
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measures aimed at enhancing energy recovery 19 .
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An industrial waste-to-energy network consists in i), a set of waste-generating chemical
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sites without treatment facilities; ii), a set of incineration plants with a possible internal
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waste generation; and iii), a set of transportation means, such as road and rail, connecting
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all these sites. Thus, it can be considered as a supply chain that incinerates waste residues
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to produce thermal energy, which is directly utilized on the site as process heat or converted
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into electricity. Nevertheless, a classical optimization approach for supply chain, appears
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inappropriate for such system. Incineration and temporary storage capacities critically af-
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fect the capability of accepting external waste, and it is consequently essential to include
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them in the mathematical description of the system, together with supply chain aspects. In
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this sense, recent research activities have already raised the necessity of integrating process
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considerations in supply chain optimization for more accurate results, since hierarchical solu5
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tions might not correctly identify all relevant trade-o solutions 2 . Furthermore, integration
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of multiple aspects is frequently identi ed as a technical challenge in supply chain design,
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but it also brings intrinsic opportunities in terms of both enterprise-wide optimization and
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sustainability issues 3 . The latter are especially interesting since the already considerable
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energy consumption of the industrial sector does not include the huge number of shipments
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necessary to operate the corresponding supply chains.
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The aim of this work is to evaluate possible synergies for a multi-site waste-to-energy
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network. This requires the development of a novel methodology for the optimization of
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such systems, integrating dierent dimensions of the waste management problem into a
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single formulation. The proposed mathematical model considers both operational and de-
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sign decisions, with particular focus on incineration feasibility, investment prioritization and
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implications of diverging economic and transportation objectives.
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This publication presents the waste-to-energy problem for liquid hazardous residues and
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proposes a mathematical model capturing the most relevant logistic, management and opera-
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tional aspects of a multi-site network. Such formulation is validated with real data stemming
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from several industrial partners and consequently applied to a case study about the whole
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Swiss industrial waste-to-energy network to investigate economic, environmental and safety
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aspects under several objective functions. Because of the extremely sparse nature of its
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chemical and pharmaceutical industry 20 , and centralized incineration facilities for hazardous
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waste 21 , Switzerland represents one of the most complex industrial waste-to-energy net-
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works and can thus be considered as an ideal case for testing the developed methodology.
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The obtained results are critically discussed to identify relevant management policies and
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investments, as well as possible research opportunities.
6
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Industrial & Engineering Chemistry Research
2
Problem statement
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Although the management of waste shipments between dierent actors is undoubtely the
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main aspect of a waste-to-energy network, storage and operational policies within single
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incineration sites are also signi cant at systemic level and have then to be included in the
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problem. In fact, these determine the amount of waste that can be accepted from the other
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actors of the network, or how much waste has to be outsourced for external treatment. This is
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of particular importance in the context of this study, which aims at evaluating possible multi-
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site synergies. In this sense, the investigated system can be conceptually divided in three
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dierent dimensions representing i) the supply chain logistics, ii) the internal management
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of the incineration sites, and iii) the operating conditions of the incineration process.
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The great diversity concerning the nature of local chemical and process industries leads
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to waste-to-energy systems that can be very dierent from country to country. Neverthe-
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less, international regulations, such as the Basel Convention 14 and the EU legislation 22 ,
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impose a certain number of common features, especially concerning shipments of hazardous
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waste, thus enabling the formulation of a generic mathematical programming problem with
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a broad application range. Moreover, for any kind of waste-to-energy system, it is possible
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to distinguish between:
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nor the nancial means to operate own waste-to-energy or other treatment facilities.
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Industrial sites that generate chemical hazardous waste but have neither the technical
Incineration plants that burn chemical hazardous waste for treatment purposes. These
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are typically located within large integrated chemical complexes that can directly utilize
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the released combustion heat to produce steam, which is then used as utility in dierent
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production processes on the site or converted into electricity.
170 171
Cement plants that can use a selected, low-polluted, fraction of waste solvents as substitution fuel in their calcination processes. 7
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Such elements are interconnected through a transportation network. Waste shipments be-
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tween incineration plants, as well as from industrial sites to cement and incineration plants,
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normally occur quite frequently. Additionally, there usually are several intermediary compa-
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nies that perform temporary storage and/or some pre-treatment activities before transferring
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the residues to incineration and cement plants. However, the considerable number of these
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intermediaries, and the fact that waste exchanges can be repeated would presumably result
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in excessive computational requirements. Even though their technical support is undoubtely
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very important, in particular for smaller enterprises without dedicated waste management
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sections, the assessment of such bene ts is practically impossible without complex consid-
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erations about size and business model for each company. Hence, it has been decided to
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disregard the role of the aforementioned intermediaries for the scope of this study. The sup-
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ply chain dimension of the investigated multi-enterprise waste-to-energy network consists
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of:
185 186
187 188
189 190
191 192
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1. A set of regions g, grouping industrial sites without treatment facilities, that produce several waste types w with dierent heating value and composition. 2. A set of incineration sites a, including both incineration and cement plants, each of them with plant-speci c features. 3. A speci c amount of waste imported into incineration sites a, together with outsourced waste from both regions g and such sites. 4. A set of inter-site transportation means connecting production and incineration facilities, such as road and rail networks. as graphically represented on the left side of Fig. 1.
8
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Industrial & Engineering Chemistry Research
Figure 1: Schematic overview of the investigated system. On the left side: the supply chain dimension including incineration and cement plants a, together with chemical sites without treatment capability grouped in regions g. On the right side: internal waste management in sites a with temporary storage means and incineration units u, as well as the capacity expansion possibilities considered in this study. Decisions on waste transfer in terms of mass are represented as follows: m : mass of waste w transferred from tank e to tank : mass of waste w transferred from tank e to unit u in period t (not i in period t, m : mass of waste w transferred from tank i to unit u in represented in the gure), m : period t, m : mass of waste w transferred from truck k to tank i in period t, m mass of waste w transferred from wagon r to tank i in period t, m : mass of waste w : mass of waste w transferred from transferred from truck k to unit u in period t, m wagon r to unit u in period t, m : mass of waste w transferred from tank e to truck k in period t, m : mass of waste w transferred from tank e to wagon r in period t, m : mass of waste w transferred from region g to internal tank i in period t, m : mass of waste w transferred from region g to unit u in period t, m : mass of waste w exported from tank e during period t (abroad), m : mass of waste w exported from region g in period t (abroad). trei
e;i;w;t
treu
e;u;w;t
triu
i;u;w;t
trik
trir
i;r;w;t
i;k;w;t
trku
k;u;w;t
trru
r;u;w;t
trek
e;k;w;t
trgi
trer
e;r;w;t
g;i;w;t
trgu
g;u;w;t
EAB e;w;t
GAB g;w;t
194
The second dimension considered in the problem describes the internal management of
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the incineration sites a. Although the operation can signi cant diverge from site to site, all
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of them share a set of basic structural elements that allow for a generic description of the
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internal waste management, as shown on the right side of Fig. 1. Speci cally, integrated
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chemical sites usually operate centralized incineration facilities that burn waste residues
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stemming either from internal production lines, sparse within the site, or from third sources.
200
The waste generated on the site is temporarily stored by the production facilities in a set
201
external tanks e, from which it can be transferred to dierent storage units, outsourced to 9
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other incineration sites a or shipped outside the system boundaries. Storage equipment can
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be distinguished into xed internal tanks i, located in tank farms at the incineration facilities,
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and mobile items, such as trucks
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purposes. From trucks and wagons, the waste can be conveyed to both internal tanks i and
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incineration units
207
of residues accepted from external sources. Alternatively, some plants present a pipeline
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network connecting external tanks e to internal ones i, and linking the latter to incineration
209
units u, thus allowing for a direct transfer without going through unloading stations.
210
u
k
and rail wagons r, which are also used for transferring
through dedicated unloading stations, which are also used in the case
Residues of dierent types
w
can only be mixed in certain internal tanks and storage
211
requires compatibility between waste and tank types for avoiding possible damages, such as
212
equipment corrosion. Nonetheless, it is possible to simultaneously incinerate several waste
213
types in the same unit. This enables to exploit the heating value of highly-calori c residues
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for sustaining the incineration of low-calori c ones, which is extremely interesting from an
215
energetic perspective as it can decrease the consumption of auxiliary fuels. In this sense,
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incineration units can be separated in ovens (U ), which can accept both combustibles and
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mother liquors, and burners (U ) that can only incinerate combustible waste. In contrast
218
to integrated complexes, cement plants (U
219
generation and only accept external residuals as substitution fuels. In this case, storage tanks
220
are only used for buering purposes; consequently, cement kilns can be modelled as simple
221
incineration units (burners) that can only accept a selected fraction of combustible waste.
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The storage capacity of each incineration plant can be increased by purchasing additional
223
internal tanks, trucks and rail wagons, whereas the treatment capacity can be incremented
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by upgrading existing ovens with oxy-combustion technologies. Indeed, the oxy-combustion
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process consists of burning fuel by partially replacing air with pure oxygen. As a result,
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since some nitrogen is removed, a larger amount of waste can be treated and the volumetric
227
ow of ue gas through the treatment processes can be reduced.
228
O
u
B
u
cem u
) typically do not present any internal waste
The process dimension of the investigated system takes relevant operating aspects of 10
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the incineration units into account. These typically consist of an incineration chamber, or
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furnace, a heat exchanger to partially recover the released energy (steam boiler), and a set of
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consequent puri cation steps for the fumes. In order to ensure that the emission regulation
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is ful lled, it is crucial to operate the incineration step in a proper way. Precisely, the
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injected residues have to be completely incinerated and the furnace temperature has always
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to be maintained in the speci ed operational range. Such conditions can be achieved by
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providing a stoichiometric excess of combustion air and a sucient residence time in the
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combustion chamber, as well as an appropriate energy input. Amounts of combustible and
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non-combustible waste have to be carefully balanced such that the released heat is enough for
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a complete thermal decomposition, while not exceeding a maximum temperature to prevent
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the formation of nitrogen oxides and possible damages to the equipment. Auxiliary fuels, such
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as natural gas, and water are provided in case of energy shortages and excesses, respectively.
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Moreover, the volumetric throughput of the generated fumes must not exceed a certain
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value to ensure that the subsequent cleaning units can remove the remaining pollutants in
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compliance with the emission limits. A graphical representation of an incineration unit can
244
be found in Fig. 2.
Figure 2: Schematic overview of the operation of incineration units. 245
Cement plants can only use a low-polluted fraction of the waste as substitution fuel and,
246
apart from this, do not have to respect any additional constraint for the scope of the study. 11
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Therefore, the only limitation is the total amount of suitable residues.
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This work introduces a novel methodology for the optimization of multi-enterprise waste-
249
to-energy networks, combining in a single formulation supply chain logistics, site management
250
and operation of the incineration process. Given:
251
252
A nite time horizon divided in multiple time periods t with xed duration.
A set of waste classes w with known heating value, elementary composition, water con-
253
tent and density, together with the corresponding amounts produced in each location
254
during every period t.
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256
A set of mixing constraints for combinations of waste classes w.
A set of treatment sites a, including cement and incineration plants, with site-speci c features concerning
257
258
{ waste production, fed to external tanks e;
259
{ storage equipment (trucks k, rail wagons r and internal tanks i) with capacity,
260
waste compatibility and connections to both external tanks
261
units u;
e
and incineration
262
{ incineration units u, including maximum fumes throughput, required air excess,
263
operational temperature range, compatible waste and emission limits, together
264
with the capability of performing oxy-combustion;
{ initial waste content for each storage equipment.
265
266
with the corresponding waste production.
267
268
A set of regions g, grouping all waste-generating sites without treatment capability,
A set of transportation means, such as rail and road, connecting regions to sites, sites
269
between each other and both of them to other treatment facilities located outside the
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system boundaries. 12
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Economic information about capital, operating, maintenance and shipment costs, as well as revenues from waste treatment services and sales of the recovered heat.
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273
The goal is to obtain the following information, which can be provided to stakeholder as
274
decision-supporting tools:
275
All waste shipments occurring outside the incineration sites, including exports outside the system boundaries.
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All waste transfers within incineration sites a, together with lling levels for each storage equipment.
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An investment plan considering storage items and oxy-combustion upgrades to existing ovens.
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The incineration performance, expressed in terms of treated waste, fumes volumetric
ow, recovered heat and consumption of auxiliary fuels.
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283
Cash ow considerations for each site a, with all costs and incomes in detail.
284
Furthermore, several objective functions should be applied to the considered system with
285
the aim of investigating their in uence on the dierent stakeholders. Particular focus is
286
dedicated to economic bene ts for the incinerators, to waste shipments, and to trade-o
287
solutions between such perspectives.
288
3
Mathematical formulation
289
The investigated waste-to-energy system is modelled as a mixed-integer linear problem
290
(MILP) with discrete time representation, as successfully introduced in previous studies
291
on the optimization of industrial waste incineration 11,12 . The developed multi-period model
292
is written with a modular formulation, such that it can be applied to both single-site sys-
293
tems and multi-site networks. Moreover, it is easily adaptable to dierent time resolutions by
294
changing the aected parameters accordingly, in order to achieve the desired result precision. 13
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295
3.1 Assumptions
296
Because of the extremely complex nature of the investigated system, it has been necessary to
297
introduce a set of dierent assumptions for keeping the model size within reasonable limits.
298
The goal is to enable its application to relevant case studies, whose results can then be
299
used as decision-support by stakeholders. The following assumptions are then considered to
300
develop the mathematical formulation of the problem:
301
For energy balance purposes and the calculation of the fumes volume, it is assumed
302
that the fumes are only composed of their most abundant species, namely nitrogen,
303
oxygen, carbon dioxide and water. Such assumption can be justi ed by the extremely
304
low concentration of other combustion products, which can be due to the low amounts
305
present in the residues, as in the case of halogenated compounds and salts, or achieved
306
through an appropriate setting of the operation. In fact, incomplete combustion is
307
prevented by ensuring a sucient residence time in the furnace, an excess of combustion
308
air and by providing enough energy to reach a minimum temperature. An upper
309
temperature bound has to be imposed for hindering the formation of nitrogen oxides,
310
as well as to prevent possible equipment damages caused by acid species that might be
311
produced during the incineration. If necessary, auxiliary fuels and water can be added
312
to the combustion for keeping the furnace temperature within the de ned operation
313
range.
314
The fumes volume is calculated from the mass using the ideal gas law. Such assumption
315
allows for a linear formulation of the model and is justi ed by the operating pressure
316
of about 1 bar used through the whole incineration process. Further details about the
317
validity of this assumption are provided as supporting information.
318
During inventory, the dierent waste classes w are considered as immiscible concern-
319
ing physicochemical properties. This approximation can be used as all incineration-
320
relevant properties are additive with respect to mass (i.e., energy content and elemen14
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Industrial & Engineering Chemistry Research
321
tary amounts), and since density is similar for all classes 17 . Additionally, it is common
322
operational practice to avoid potentially reactive waste mixtures, in order to prevent
323
infrastructure damages and other technical issues.
324
The energy balance is linearised with two inequalities setting upper and lower bounds
325
for the energy input as a function of the incinerated residues, as successfully introduced
326
in previous studies 12 .
327
w
is assumed to be constant in time. Changes
concerning waste residues are expressed as variations of the amounts for each class.
328
329
The composition of each waste class
The choice between rail and road transportation for inter-site shipments depends on
330
several empirical aspects that cannot be satisfactorily captured in a mathematical
331
model, including forewarning and forecast reliability. As a consequence, it has been
332
decided to consider a xed share of rail and road transportation for modelling waste
333
shipments. For this reason, speci c unloading stations are not considered and an overall
334
constraint on the waste throughput is considered to model the limited availability of
335
pump capacity.
336
Because of data unavailability about age and lifetime of each equipment piece, it is not
337
possible to consider its replacement or dismantlement in the formulation. Therefore,
338
it is assumed that both existing and purchased pieces can be neither substituted nor
339
removed. Consequently, salvage is also not considered in the proposed methodology.
340
Taxation is not included, since the related information could not be disclosed for con-
341
dentiality reasons. Moreover, local tax dierences, as incentives and rates, might be
342
signi cant and, in this sense, a speculative tax optimization favoring certain actors of
343
the network is beyond the scope of the study. This choice has been agreed with all
344
involved research and industrial partners 23 .
345
Transport expenses are paid by the corresponding shipping parties. 15
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346
Page 16 of 63
The released combustion heat is partially recovered in the form of process steam,
347
for incineration plants, or directly used, in the case of cement plants. A subsequent
348
conversion into electricity is not considered for the purpose of this study. Economic
349
revenues arising from energy recovery are accounted as steam sales for both incineration
350
and cement plants.
351
3.2 Waste management logistics
352
Concerning the management of hazardous liquid waste, the following aspects should be
353
considered for planning purposes:
354
1. Waste transfers from production sites to internal incineration facilities.
355
2. Waste transfers from production sites to external incineration facilities.
356
3. The capacity of dierent storage units, both at production locations and at the incin-
357
eration facilities.
358
4. The mixing of dierent waste streams in storage units at incineration facilities.
359
5. Waste transfers from storage means to incineration units.
360
In order to model waste transfers and storage, it is rst necessary to impose mass balances
361
around each storage unit. In this sense, the mass inventory of an external tank m
362
end of period t can be de ned with waste ows in and out of the storage unit, together with
363
the stored amount at the end of the previous period m
364
represent waste streams coming from connected production facilities and are given by the
365
parameter M
366
units, trucks, rail wagons and to other treatment facilities not included in the system, which
367
are represented by variables m
ste e;w;t
P
e;w;t
st e;w;t
1
at the
(Eq. 1). In this case, in ows
. Instead, out ows stand for waste transfer to internal tanks, incineration trei e;i;w;t
,m
treu e;u;w;t
,m
trek e;k;w;t
16
,m
trer e;r;w;t
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and m
EAB e;w;t
, respectively. Initial
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368
Industrial & Engineering Chemistry Research
conditions for waste levels are provided with the parameter M mste e;w;t
=
ste;0 Me;w t=1
X
+m
st e;w;t
X
mtrei e;i;w;t
1
2 + M
t
u
i
.
mEAB e;w;t
P e;w;t
X
mtreu e;u;w;t
ste;0 e;w
X
mtrek e;k;w;t
mtrer e;r;w;t
8e; w; t
(1)
r
k
369
The binary variable b
370
external storage tank e at the end of period t, as well as for setting minimum and maximum
371
volumetric lling levels for each contained waste stream w, which are given by the parameters
372
V min
373
results, whereas the maximum one is simply determined by the volumetric capacity of the
374
equipment. The volume of a stored waste stream
375
mste e;w;t
ste e;w;t
and
Vee ,
is implemented to de ne if a waste stream w is stored in a speci c
respectively (Eq. 2). The minimum lling level is set to avoid unrealistic can be obtained by dividing its mass
w
by the corresponding density . w w
bste V min e;w;t
6
mste e;w;t
6
w w
8e; w; t
bste Vee e;w;t
(2)
376
Since a considerable fraction of storage tanks can also stock a mixture of dierent waste
377
streams simultaneously, an additional constraint (Eq. 3) is necessary to ensure that the
378
maximum volumetric capacity is not exceeded. Vee
>
X mste e;w;t
379
8e; t
w w
w
Similarly, mass balances are de ned for trucks
k
(3)
(Eq. 4) and rail wagons
r
(Eq. 5) at
380
the end of each time period t. In both cases, input ows are only allowed in the form of
381
transfers from external tanks (variables m
382
and wagons, waste can be transferred to internal tanks (m
383
units (m
384
given by the initial conditions parameters M
trek e;k;w;t
and m
trer e;r;w;t
, respectively). From both trucks trik k;i;w;t
trku k;u;w;t
and m
trru r;u;w;t
and m
trir r;i;w;t
) or incineration
). The stored mass at the end of previous period t stk;0 k;w
17
and M
str;0
r;w
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1 is instead
for the rst period (t = 1), or
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385
by the variables m
st k;w;t
mstk k;w;t
=
1
and m
stk;0 Mk;w t=1
st r;w;t
1
, otherwise (t 2).
+m
st
1
k;w;t
8k; w; t mstr r;w;t
=
str;0 Mr;w t=1
+m
st r;w;t
Page 18 of 63
1
2 +
X
t
2 +
mtrek e;k;w;t
X
e
X
t
X
mtrer e;r;w;t
X
mtrku k;u;w;t
u
i
e
8r; w; t
mtrik k;i;w;t
mtrir r;i;w;t
X
(4) mtrru r;u;w;t
u
i
(5)
386
Minimum lling levels and capacity constraints are de ned as for the previously discussed
387
case of external tanks (Eqs. 6-7 and 8-9 for trucks and rail wagons, respectively). In this
388
sense, the volumetric capacity of external tanks has to be substituted with the values for
389
trucks (V ) and wagons (V ). k
r
bk;w;t V stk
min
Vkk
6
mstk k;w;t
>
X mstk k;w;t w w
w
br;w;t V str
min
Vrr
6
w w
6
mstr r;w;t
>
X mstr r;w;t
6
w w
w
w w
bstk Vkk k;w;t
8k; w; t
8k; t
bstr Vr r;w;t
(6) (7)
8r; w; t
8r; t
(8) (9)
390
Moreover, it is assumed that the considered trucks and wagons can only be used internally for
391
waste transfers within the same plant. Waste shipments between dierent sites are allowed
392
through the variables m
393
as operated by third parties, such as transport companies. Concerning investments in new
394
trucks and rail wagons, their availability is controlled by subordinating the binary variables
395
bstk k;w;t
trei e;i;w;t
and b
str r;w;t
and m
treu e;u;w;t
, but they are subject to higher costs and considered
to the purchase of the corresponding equipment (section 3.4.2).
396
As previously mentioned, the production sites without incineration facilities have been
397
grouped into regions for modelling purposes. Therefore, a mass balance over each region g is
398
de ned for all time periods t and waste streams w (Eq. 10). The sole in ow consists in the 18
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Industrial & Engineering Chemistry Research
399
local waste generation de ned by the parameter M
400
incineration units or outside the system boundaries are given by variables
401
and m
402
the variable m
403
For these reasons, an upper bound
404
accumulation (Eq. 11). Concerning this, the stored amount at the end of the previous period
405
t
406
rst period (as t 1 is not de ned in this case).
GAB g;w;t
CH g;w;t
, whereas transfers to internal tanks, mg;i;w;t , mg;u;w;t trgi
trgu
, respectively. Even though no information about inventory capacity is provided, stg g;w;t
has been added to represent temporary storage at these production sites.
1 is given by the variable m
stg
mg;w;t
mg;w;t
1
g;w;t
=
stg;0 Mg;w t=1
X stg
st
, or with the initial conditions parameter M
+m
trgu
mg;u;w;t
st
1
g;w;t
2 + M
t
CH
X
g;w;t
stg;0 g;w
for the
trgi
mg;i;w;t
i
8g; w; t
mg;w;t
GAB
u
6
has been assumed for avoiding in nite waste
Mgstg;max
(10)
8g; w; t
Mgstg;max
(11)
407
From the described external tanks, trucks, wagons and regions, waste can be shipped
408
to internal tanks, incineration units or, in the case of external tanks and regions, outside
409
the system. Internal tanks are located at incineration facilities and are used for temporary
410
storage, buering and mixing dierent waste streams w before these are incinerated. Thus,
411
an additional equation block is used to model storage and throughput operation in such
412
equipment (Eq. 12). This mass balance involves the amount of waste stored in the previous
413
period t 1 (m
414
tanks (m
415
waste can only be transferred to incineration units of the same integrated site (m
st i;w;t
trei e;i;w;t
1
or, for t = 1, the initial amount M
), trucks (m
trik k;i;w;t
msti i;w;t
=
), wagons (m
sti;0 Mi;w t=1
X
mr;i;w;t
r
416
The minimum lling level V
+m
trir
+
st i;w;t
X
trir r;i;w;t
1
X
t
trgi
), as well as transfers from external
) and regions (m
2 +
mg;i;w;t
g
min
sti;0 i;w
mtrei e;i;w;t
e
X
+
trgi g;i;w;t
X k
mi;u;w;t triu
). From internal tanks,
mtrik k;i;w;t
8i; w; t
triu i;u;w;t
).
+ (12)
u
for every waste stream w is also imposed in the case of internal 19
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Page 20 of 63
417
tanks through the binary variable b
418
impractical solutions. Nevertheless, it is necessary to introduce some modi cations to the
419
approach used for external tanks, trucks and rail wagons, in order to account for possible
420
investments in capacity expansion. Speci cally, every internal tank is characterized by a
421
speci c pipeline connectivity from dierent external tanks e and to several incineration units
422
u belonging to the same site a.
423
combination leads to excessive computational requirements, particularly when considering
424
that multiple investments (storage tanks of dierent possible sizes) should be possible for the
425
same connectivity combination. Hence, in order to reduce the required computing power,
426
each existing internal tank is considered as a slot i, to which n
427
size s can be added to the initial capacity V . A lower and upper bound for the lling level
428
of each waste stream
429
Instead, the maximum volumetric capacity of an internal tank slot
430
14. The additional capacity in an internal tank slot i available during a certain period
431
is obtained by multiplying the number of new tanks of size
432
volumetric capacity V . The total slot capacity can then be expressed as the sum of initial
433
and additional capacity, as listed on the left side of Eq. 14.
sti i;w;t
As explained in detail in section 3.4, considering every possible
i i;t;s
i
w
is then included with Eq. 13, so as to avoid unrealistic solutions.
s
i
is enforced by Eq.
in the slot
nii;t;s
t
with their
s
s
X
Vs
s
n
i i;t;s
+V
i i
6
msti i;w;t
>
X msti i;w;t
s
435
additional storage tanks of
i
bsti V min i;w;t
434
(left side of Eq. 13), with the same aim of avoiding
w
w w
w w
6
bsti i;w;t
i;max
Ni
8i; t
V
s
smax
+V
i
i
8i; w; t
(13) (14)
A nal mass balance is used to model the waste transferred and treated in every incineration unit u, given by m
inc u;w;t
. Since such waste is immediately incinerated, meaning that
20
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436
Industrial & Engineering Chemistry Research
no accumulation can occur, the mass balance only involves a single time period (Eq. 15). X
=
minc u;w;t
+
mtriu i;u;w;t
mtreu e;u;w;t
X
+
e
i
X
X
+
mr;u;w;t trru
X
r
mtrku k;u;w;t
+
k
8u; w; t
trgu
mg;u;w;t
(15)
g
437
Furthermore, waste shipments by trucks or wagons have to go through unloading stations
438
before storage in internal tanks or direct treatment in an incineration unit. Thus, the waste
439
throughput is limited by the installed pump capacity
440
stations, respectively. As previously explained, the proposed formulation does not distinguish
441
between rail and road transportation for inter-site waste shipments. Consequently, a single
442
constraint is imposed for all unloading stations (Eq. 16)
tot a
X
>
mtrir r;i;w;t
j( )2
r;i
a;i
j(
r;u
2
a;u)
a;i
j(
mg;i;w;t
j(
e
X a;i
2
j(
mtrik k;i;w;t
X
X
+
U Aa;u ;w
2
a;u)
mtrei e;i;w;t
trgu
mg;u;w;t
+
U Aa;u ;w
+
mtreu e;u;w;t
2
a;u)
+
mtrku k;u;w;t
2
a;u)
I Aa;i ;w
X
a;e) = EAa;e ;u
j(
g;u
j( )2
for wagon and truck unloading
I Aa;i ;w
j(
+
I Aa;i ;w
2
a;i
k;u trgi
a;e) = EAa;e ;i
e
j( )2
+
U Aa;u ;w
X
j( )2
g;i
k;i
mtrru r;u;w;t
a
X
+
I Aa;i ;w
X
tot
8a; t
(16)
U Aa;u ;w
443
3.2.1 Allowed waste transfers
444
By considering the dimension of the investigated system, it is clear that solutions involving
445
small and consequently unrealistic values for indirect waste transfers should be avoided in
446
the model. Similarly to storage modelling, this can be achieved by implementing lower and
447
upper bounds for all waste transfers between model units. For each set of transfer variables
448
mtr ,
449
occurs or not. For instance, a binary variable b
a corresponding set of binary variables b is de ned, indicating if a given waste transfer tr
trei e;i;w;t
21
is assigned to each waste transfer from
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Page 22 of 63
450
external tank e to internal one i, represented by positive variable m
451
upper bounds are imposed for shipments leaving the system boundaries from external tanks
452
e
453
variables
454
outside the system boundaries, whereas parameters M
455
and upper bounds for such shipments. A detailed description of such lower and upper bounds
456
is listed in the supporting information for every waste transfer variable.
or regions g, represented by variables m
EAB e;w;t
bEAB e;w;t
and
bGAB g;w;t
and m
GAB g;w;t
trei e;i;w;t
. Similarly, lower and
, respectively. In this case, binary
indicate if residues from external tanks and regions are shipped and M
exp;min
exp;max
represent lower
457
Infeasible waste movements are speci ed by setting the value of corresponding transfer
458
variables m to zero. As previously mentioned, the model does not distinguish between rail
459
and road shipments for inter-plant waste transport. Consequently, waste movements through
460
trucks k and wagons r are only modelled for transfers possible within the same incineration
461
plant a. This can be achieved by xing to zero the value of all variables representing inter-
462
plant waste shipments with trucks k and wagons r (further details are provided as supporting
463
information). These are instead expressed with variables m
464
internal tanks i and incineration units u, respectively. On the one hand, m
465
to model direct waste transfers within the same incineration according to a speci c pipeline
466
connectivity EI . Thus, m
467
EIe;i ,
468
other hand, m
469
are already modelled as combination of transfers via trucks, wagons or incineration tanks.
470
Intra-plant waste transfers through m
471 472
tr
trei e;i;w;t
dir
trei
e;i
e;i;w;t
dir
e;i
e;u;w;t
treu e;u;w;t
for transfers to
trei e;i;w;t
is also used
transfers are only allowed for (e; i) pairs belonging to subset
de ned as the union between EI treu
and m
and inter-site connectivity EI
CH
e;i
(Eq. 17). On the
are only used to describe inter-plant shipments, since at plant level they treu e;u;w;t
mtrei e;i;w;t
= 0
mtreu e;u;w;t
= 0
are then forbidden with Eq. 18.
8 (e; i; w; t j (e; i) 2= EI ) 8 (a; e; u; w; t j (a; e) 2 EA
(17)
e;i
a;e
and (a; u) 2 U A )
(18)
a;u
Direct waste transfers from internal tank slots i to units u, described with variable m
triu i;u;w;t
,
can only be performed if these are physically connected through the pipeline network (Eq. 22
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473
Industrial & Engineering Chemistry Research
19).
8 (i; u; w; t j
= 0
mtriu i;u;w;t
(i; u) 2= IU )
(19)
i;u
474
Likewise, indirect waste movements via trucks or wagons can only occur if the corresponding
475
source or destination units are equipped accordingly. Further details about this are provided
476
as supporting information.
477
3.3 Plant operation
478
3.3.1 Incineration process
479
Besides inventory mass balances and fumes capacity constraints, the operation of an inciner-
480
ation plant for hazardous requires to consider other technical limitations, such as the mixing
481
of potentially reactive waste streams and the ful lment of speci c temperature conditions
482
for the process. Moreover, physical and regulative constraints have to be considered for the
483
combustion fumes.
484
Dierently to storage units, the incineration capacity is determined by the volumetric
485
ow of the combustion fumes. In fact, these have to undergo several washing steps to re-
486
move possible pollutant species before being released into the environment. For this reason,
487
the fumes volumetric throughput per period cannot exceed a maximum value V
488
fumes volume
489
w
490
summing the incinerated waste m
491
bustion, represented by the term m
492
and combustion stoichiometry, the composition
493
combustion of stream w, the mass of each component m
494
wardly from the fumes mass m
495
volume
f umes
vu;w;t
inc u;w;t
u;w;t
f umes u;w;t
f umes
mu;w;t
is calculated by
with the amount of air required for its complete com-
inc
f umes
. The
resulting from the combustion of a given amount of a waste stream
can be obtained with the following procedure: rst, its mass
vu;w;t
f umes u
Q
air w
(Eq. 20). Given, from waste composition f umes Xc;w
of the fumes produced during the
c c;u;w;t
can be determined straightfor-
(Eq. 21). Then, assuming ideal gas behavior, the fumes
resulting from the incineration of stream 23
w
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can be estimated as the sum of
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Page 24 of 63
496
the volume of all the single components c, obtained by dividing the mass of each of them by
497
its density in the considered incineration unit
498
to achieve a linear model formulation, it is a reasonable approximation for the operating
499
conditions of the incineration units, which involve a temperature range comprised from 750
500
to 1200 C and a pressure very close to the atmospheric one. mu;w;t
=
minc u;w;t
mcc;u;w;t
=
mu;w;t
f umes
=
f umes
vu;w;t
f umes
cc;u .
1+Q
X
air
8u; w; t
(20)
8c; u; w; t
f umes
X mc;u;w;t
w
c;w
c
(21)
8u; w; t
cc;u
c
Although this assumption is necessary
(22)
501
The same procedure is done for calculating the volume v
502
eventual use of natural gas as auxiliary fuel to sustain the incineration process, with the only
503
dierence of using the gas-speci c air demand Q
gas
u;t
gas
vu;t
X
=
gas
mu;t
gas
(1 + Q
of the fumes resulting from an
and fumes composition X
gas
)
c
Xcgas
!
cc;u
gas c
( Eq. 23).
8u; t
(23)
504
In case of mother liquor scarcity, water might be injected in the incineration unit for
505
temperature control purposes. As this does not involve any chemical reaction, the added
506
water completely evaporates. Thus, the volume v
507
calculated from its mass m
water u;t
of the vaporized water can be directly
and its density H2 O (Eq. 24). c
;u
water vu;t
508
water
u;t
=
mwater u;t c H2 O;u
8u; t
(24)
Additionally, there is the possibility of performing oxy-combustion, if the concerned
509
equipment has already been installed. Since the amount of injected oxygen m
510
sion variable of the problem, it is not possible to include it directly in the fumes composition
511
parameter, required to calculate the fumes volume, while keeping the model formulation
512
linear. For this reason, the partial substitution of air with pure oxygen has to be considered
oxy u;t
24
ACS Paragon Plus Environment
is a deci-
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Industrial & Engineering Chemistry Research
513
as follows: rst, the amount of \spared" nitrogen mN2 , corresponding to the amount of air
514
containing an oxygen mass equal to the injected m , can be easily obtained from the air
515
composition (Eq. 25). The nitrogen volume vN2 is then calculated by dividing mN2 with its
516
oven-speci c density N2 (Eq. 26).
u;t
oxy u;t
u;t
c
;u
= 3:253 m
N
mu;t2
=
N
vu;t2
517
u;t
8u; t
oxy u;t
N
mu;t2
(25)
8u; t
c N2 ;u
(26)
Finally, the maximum fumes volumetric throughput per period
Vuf umes
limits the to-
518
tal fumes volume produced in unit
519
the volumes resulting from waste incineration, natural gas combustion and water addition,
520
and subtracting the amount of nitrogen contained in the air amount substituted by oxy-
521
combustion (Eq. 27). As previously discussed, the ideal gas approximation is required to
522
keep the model linear, which is of outermost importance in the case of large and complex
523
problems, such as the investigated one. If necessary, the proposed formulation has also the
524
possibility of specifying shutdown periods for the dierent incineration units, as well as to
525
optimize them. In this sense, the availability of incineration unit u in period t is expressed
526
by binary variable bu .
u
during any period t, which is obtained by summing
u;t
buu;t Vuf umes
>
X
f umes
vu;w;t
+v
gas
u;t
+v
water
u;t
N
vu;t2
8u; t
(27)
w
527
The amount of pure oxygen (oxy-combustion) allowed in unit u during period t cannot
528
exceed a value corresponding to the oxygen fraction, including excess, of the required com-
529
bustion air (Eq. 28). Additionally, more stringent limitations might have to be applied for
530
meeting emission legislations, which are often based on a reference oxygen composition 24 . (3:253 + 1) m
oxy u;t
6
X
minc u;w;t
Q
w
25
ACS Paragon Plus Environment
air w
8u; t
(28)
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
The combustion heat
531
inc
u;t
Page 26 of 63
released during the waste incineration in unit u during period
can be estimated from the lower heating value (Eq. 29). In incineration plants, the
532
t
533
released combustion heat is then partially recovered in the form of steam with an unit-
534
speci c eciency
535
cement plants, no steam is generated as the combustion heat is directly utilized in the kiln
536
and for this reason a complete recovery of the released heat is assumed in the model ( = 1).
537
The recovered heat in plant a during time period t ( ) can then be obtained as presented
538
in Eq. 30 for both cement and incineration plants.
u ,
which has been retrieved from industrial partners. In the case of
u
rec
a;t
=
inc u;t
X w
=
a;t
rec
j(
minc Hw u;w;t
+m
H
X
8a; t
2
a;u)
u
gas u;t
inc u;t u
8u; t
gas
(29) (30)
U Aa;u
539
In order to keep the combustion temperature within the given operational range, several
540
residuals with dierent heating values are simultaneously incinerated in variable amounts,
541
according to their availability. In case of energy de cits, natural gas is used to sustain the
542
incineration process, whereas water is added when the energy content of the residuals is too
543
high. From a modelling perspective, enforcing such unit-speci c temperature range requires
544
an energy balance, which would still result in a non-linear formulation. Therefore, it has been
545
decided to rely on the approach proposed by Abacherli for linearising the energy balance of
546
an incineration process for liquid hazardous waste 12 . In practice, the released combustion
547
heat
548
heat the resulting fumes up to the lowest allowed operational temperature
549
energy
inc u;t
should be comprised between the value
max
u;t
, representing the energy required to
needed for reaching the maximum temperature T min u;t
550
min
u;t
The values of
max u;t
and
6
min u;t
inc u;t
6
max u;t
8u 2= U
max u
cem u
;t
Tumin ,
and the
(Eq. 31). (31)
depend on the amounts of fumes resulting from the com26
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Industrial & Engineering Chemistry Research
bustion of dierent waste streams (m
552
with the additional use of pure oxygen (m ) and water (m
553
amounts
554
fumes components with their average speci c energy (Eq. 32 and 33). As the operational
555
temperature range is equipment-speci c, the average speci c energy (\E "-parameters), and
556
consequently also the value of
f umes u;w;t
max u;t
and
min u;t
=
X
max
f umes
mu;w;t
E
w;max
(1 + Q X m E gas
mu;t
=
w gas
mu;t
u;t
oxy
water
u;t
u;t
gas
w;min
u;w;t
u;w
gas
min u;t
+m
gas
)), together
). The required energy
, are dierent for each incineration unit u.
water
)E
f umes
(1 + Q
and
u;t
u;w
w
min u;t
gas
can then be estimated by multiplying the mass of the mentioned
u;t
max u;t
) and auxiliary fuels (m
(1 + Q
551
water;max u
+
3:253 m
oxy
gas;max
u;t
u
+m
)E
E
water u;t
E
water;min u
N2 ;max
u
8u 2= U
;t
(32)
;t
(33)
cem u
+
3:253 m
oxy
gas;min
u;t
u
E E
N2 ;min
u
8u 2= U
cem u
557
Since both operation and design of incineration furnaces and cement kilns can be quite
558
dierent, the described energy balance (Eq. 31-33) does not apply to cement plants units
559
(u 2 U
cem u
). In this case, only certain waste streams are suitable for being used as substitution
560
fuels and no constraint about the combustion heat is considered, apart from a limited waste
561
availability. The use of natural gas is also not considered for cement plants, as there is no
562
need of auxiliary fuels for sustaining the combustion.
563
3.3.2 Storage units
564
Although multiple waste streams can be simultaneously incinerated to better exploit the
565
energy content of the residues, there are logistic constraints concerning the temporary stor-
566
age prior to thermal treatment. Precisely, incompatible waste streams cannot be mixed in
567
order to avoid possibly dangerous chemical reactions, such as acid-base ones. Moreover, the
568
storage of certain waste streams requires special equipment, especially in the presence of
569
corrosive species. Based on information from the involved industrial partners 23 , this study
570
approximates such limitations by dividing internal storage tanks in the three categories, 27
ACS Paragon Plus Environment
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 28 of 63
571
namely shared combustibles, shared mother liquors and dedicated mother liquors, as further
572
described in the supporting information. Speci cally, only one mother liquor stream at the time can be stored in each suitable
573 574
internal tank, namely the ones belonging to types I
575
as slots i, consisting of one existing storage unit, to which new tanks can be purchased at
576
dierent times of the optimization horizon, thus making possible to store more than one
577
mother liquor stream in a single slot i. In fact, the maximum number of mother liquors
578
that can be stocked in a slot i is given by the current number of tanks installed in it, which
579
is obtained by summing the number of purchased tanks
580
Ni
581
tanks, the number of present mother liquor streams, expressed as sum of storage variables
582
, bsti i;w;t
M L;0
ML i
and I . Internal tanks are modelled B
i
nii;t;s
in the slot to the parameter
, representing the initial number of storage tanks in slot i. For all suitable storage
is then set lower or equal to the current tank number with Eq. 34. X w
2
bsti i;w;t
6
M L;0
Ni
+
X
ML Ww
8i 2
nii;t;s
IiB
[I
ML
i
s
583
In order to avoid the presence of mother liquor waste in combustible tanks I
584
bsti i;w;t
585
to prevent the storage of combustibles in mother liquor tanks (Eq. 36).
586
(34)
;t
CO i
, the value of
is xed to zero in case of non-compatible storage (Eq. 35). A similar constraint is used
bsti i;w;t
= 0
bsti i;w;t
= 0
8 8
i; w; t i; w; t
j j
2I i2I i
CO i
ML i
and and
2W w2W
w
ML
w
CO w
(35) (36)
Additionally, no mixing is allowed in external tanks, trucks and wagons (Eq. 37, 38 and 39,
28
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587
Industrial & Engineering Chemistry Research
respectively). X
bste e;w;t
6
1
8e; t
(37)
bstk k;w;t
6
1
8k; t
(38)
bstr r;w;t
6
1
8r; t
(39)
w
X w
X w
588
Transferring residues to incineration units in periodic maintenance is clearly not possible.
589
Thus, a set of tightening constraints is added to the model for waste transfers from exter-
590
nal and internal tanks, trucks, wagons, and regions by setting the corresponding transfer
591
variables lower than the use of the sink unit (bu ), as shown in Eqs. 40-44. u;t
btreu e;u;w;t btriu i;u;w;t btrku k;u;w;t btrru r;u;w;t trgu
bg;u;w;t
6 6 6 6 6
buu;t buu;t buu;t buu;t buu;t
8e; u; w; t 8i; u; w; t 8k; u; w; t 8r; u; w; t 8g; u; w; t
(40) (41) (42) (43) (44)
592
3.3.3 Oxy-combustion
593
In order to avoid unrealistic solutions, the amount of oxygen has to be larger than a minimum
594
value M
595
46. Such constraints only apply to incineration ovens, since oxy-combustion is not used in
596
burners and cement plants. If necessary, the upper bound M
597
that the resulting fumes composition is in compliance with the current emission regulation.
598
In this sense, it has been decided to consider a conservative approach for preventing solutions
oxy;min
if oxy-combustion is used in a given period t, as imposed with Eqs. 45 and
29
ACS Paragon Plus Environment
oxy;max
can also be set to impose
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
599
Page 30 of 63
at limit values.
> 6
oxy
mu;t
oxy
mu;t
b
oxy
M oxy;min bu;t M oxy;max
oxy u;t
8u 2 U 8u 2 U
O
u
;t
(45)
;t
(46)
O
u
600
Additionally, an upper bound is set for total amount of oxygen available in each period t for
601
an incineration site a (Eq. 47). X
j(
u
2
a;u)
oxy
mu;t
6
8a; t
M oxy;max
(47)
U Aa;u
602
The impossibility of using oxy-combustion when its corresponding oven is shut down is
603
included as listed in Eq. 48. buu;t
604
>
oxy
bu;t
8u 2 U
O
u
;t
(48)
3.4 Investments in new equipment
605
A realistic modelling of investments is crucial to evaluate long-term bene ts in terms of eco-
606
nomic and environment aspects. Besides cash ow calculations (section 3.5), it is necessary
607
to link the purchase of each new equipment piece to the possibility to use it. On the one
608
hand, oxy-combustion upgrades, new trucks and wagons can be simply considered as inactive
609
items that are unlocked from the purchase period onwards through binary variables. This
610
means that all equipment pieces are included in the formulation, with the value of variables
611
corresponding to existing ones xed to 1. A single size is considered for both truck and
612
wagons, whereas the amount of pure oxygen used during oxy-combustion is a model vari-
613
able. On the other hand, internal tanks can be directly linked to dierent external tanks
614
and incineration units, as well as being equipped for indirect transfers through trucks and
615
wagons, resulting in a complex connectivity matrix. Therefore, the same approach used for 30
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Industrial & Engineering Chemistry Research
616
the other types of investments, based on inactive equipment pieces that can be unlocked
617
as part of the optimization, would lead to excessive computational requirements because of
618
the large number of possible combinations. This work proposes a novel approach based on
619
the addition of new items to slots representing the existing equipment. In order to partially
620
capture the considerable amount diversity of available tank volumes, investments in internal
621
tanks also involve the choice between dierent sizes.
622
3.4.1 Oxy-combustion
623
Concerning oxy-combustion upgrades to existing incineration ovens, the possibility of using
624
such technology, modelled with variable
625
pressed through binary variable
626
former (Eq. 49).
, boinst u;t
boinst u;t
oxy
bu;t
, is subordinated to equipment purchase, ex-
whose value has then to be larger or equal to the
>
oxy
bu;t
8u 2 U
O
u
(49)
;t
627
As previously mentioned, it is assumed that all types of equipment, including oxy-combustion
628
upgrades, cannot be decommissioned or replaced. Thus, the value of variable bo
629
ing if such equipment is installed, cannot decrease in time (Eq. 50).
inst u;t
boinst u;t
>
8u 2 U
boinst u;t 1
O
u
;t
>2
, indicat-
(50)
630
For cash ow calculations, it is also necessary to know, for each plant a, exactly when new
631
equipment is bought. Purchase events are represented by integer variable n , which can
632
be obtained by subtracting the number of available oxy-combustion upgrades in the previous
633
period t 1 to the value n
oxy a;t
oxy a;t
for the current one (Eq. 51), calculated by summing variables
31
ACS Paragon Plus Environment
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
634
boinst u;t
Page 32 of 63
over the ovens belonging to the same plant (Eq. 52). oxy
na;t
=
oxy
na;t
oxy
na;t
1
2 +
t
oxy
na;t
=
X
j(
u
oxy
na;t
2
a;u)
O (Uu
Naoxy;0 t=1 boinst u;t
\
8a; t 8a; t
(51) (52)
U Aa;u )
635
3.4.2 Trucks and wagons
636
Similarly to oxy-combustion, the availability of trucks and wagons is expressed by binary
637
variables b
638
Waste storage and transfers from and to such units must then be lower or equal than these
639
variables, as imposed with Eqs. 53-56 for trucks, and with Eqs. 57-60 for rail wagons.
truck k;t
and b
wag r;t
, respectively, which are set to 1 in the case of existing equipment.
btrek e;k;w;t btrik k;i;w;t btrku k;u;w;t bstk k;w;t btrer e;r;w;t btrir r;i;w;t btrru r;u;w;t bstr r;w;t
640
As for oxy-combustion, the value of
641
62). btruck k;t wag
br;t
6 6 6 6 6 6 6 6
btruck k;t btruck k;t btruck k;t wag
br;t
wag
br;t
wag
br;t
wag
br;t
btruck k;t
> >
8e; k; w; t 8k; i; w; t 8k; u; w; t 8k; w; t 8e; r; w; t 8r; i; w; t 8r; u; w; t 8r; w; t
btruck k;t
and
btruck k;t 1 wag
br;t
1
32
wag
br;t
(53) (54) (55) (56) (57) (58) (59) (60)
cannot decrease in time (Eqs. 61 and
8k; t > 2 8r; t > 2
ACS Paragon Plus Environment
(61) (62)
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Industrial & Engineering Chemistry Research
642
Similarly, the purchase of new equipment in each period t is expressed through variables
643
nka;t
644
the number of available trucks (n ) and wagons (n ) is again calculated from activation
645
variables b
and n for trucks and rail wagons, respectively (Eqs. 63 and 65). For each plant a, r
a;t
truck k;t
and b
wag k;t
r
a;t
a;t
, as shown in Eqs. 64 and 66.
nka;t
=
nka;t
=
na;t
=
nrt
=
nka;t
nka;t
1
X k
r
k
j(
2
a;k )
na;t
nra;t
X r
j(
2
a;r )
2 +
t
nka;t
btruck k;t
8a; t
nra;t
K Aa;k
r
1
2 +
t
Nak;0 t=1
(63) (64)
Nar;0 t=1
8a; t
wag
br;t
8a; t 8a; t
(65) (66)
RAa;r
646
3.4.3 Internal tanks
647
As previously mentioned, internal tanks require a dierent approach for overcoming compu-
648
tational issues arising from their complex connectivity with external tanks e and incineration
649
units u, as well as from the possibility of purchasing new equipment in dierent sizes s. For
650
these reasons, a slot i is de ned for all existing internal tanks. New storage tanks can then
651
be added to such slots, keeping the same connectivity as the original. Concerning model
652
formulation, this implies shared material balance and capacity constraints (Eqs. 12 and 14,
653
respectively), as well as a constraint on the mixing of mother liquor streams (Eq. 34). Ad-
654
ditionally, upper bounds on the total number of purchased internal tanks is limited at both
655
plant (N
656
in the tank farm by the incineration facility, as listed in Eqs. 67 and 68. Moreover, such
657
constraints allow to decrease the model's complexity, which is of great importance in the
i;tot
a
) and slot (N
i;max i
) level with the aim of simulating the limited space availability
33
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Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
658
Page 34 of 63
case of large problems such as the investigated one. Nai;tot
X
>
j( )2
s;i i;max
Ni
>
nii;t;s
a;i
X
I Aa;i
nii;t;s
8a; t
(67)
8i; t
(68)
s
659
As for other equipment types, the number of purchased tanks of size
660
decrease in time (Eq. 69). The number of tanks purchased in each period t for plant
661
(n
662
N
663
problem (Eq. 71).
i a;t;s
in slot
i
cannot a
) is obtained as listed in Eq. 70 for cash ow calculation purposes. An upper bound
i;max a
s
is then imposed to decrease the number of possible combinations considered in the
nii;t;s
>
nia;t;s
=
nii;t
X
j( )2
i
N
i;max a
>
1;s
a;i
X
I Aa;i
nia;t;s
8i; t > 2; s nii;t;s
nii;t
(69) 1;s
2 + n
i
t
8a; t
i;t;s t=1
8a; t; s
(70) (71)
s
664
3.5 Economic evaluation
665
The net present value is undoubtedly one of the most used tools when evaluating dierent
666
investment opportunities in process design 25 . The formulation used in this work is based on
667
the approaches proposed by Chakraborty et al. 6 , Sahinidis and Grossmann 26 , and Wassick 8
668
with some adaptations to capture characteristic features of the investigated system. In
669
order to determine the net present value, time value of money has to be considered in the
670
problem. In this sense, a nominal compounding period of one year is considered as basis
671
for the calculations, with a xed interest rate
672
of the problem requires the possibility of using a time resolution for the operation higher
673
than the compounding one (i.e., a duration of periods t inferior to one year). Therefore, the
674
actualization term
t
I R.
Nevertheless, the modular formulation
is introduced to compound the interest only at the end of selected time 34
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Industrial & Engineering Chemistry Research
675
periods t, expressed through the binary parameter
676
of
677
otherwise.
BtN P V
(Eq. 72). Speci cally, the value
BtN P V
is set equal to 1 when time periods t coincide with compounding ones, or zero,
=
t
1+I
B
R
NP V
8t
t
t
(72)
678
The cumulative cash ow,
679
a;t
680
73). Precisely, the partial income results from extracting the expenses derived from out-
681
sourcing the residues for external treatment to the income obtained from both steam sales
682
and waste treatment.
f low a;t
op
and maintenance
mai a;t
, is the sum of cumulative actualized capital , operating cap a;t
costs plus an additional term, so-called partial income
ni a;t
=
f low
a;t
cap
op
a;t
a;t
mai a;t
8a; t
+
ni a;t
683
The cumulative actualized capital costs
684
purchased equipment to the value of the previous period,
cap
a;t
1
a;t
a;t
=
t
cap
a;t
na;t Ct k
k
1
2 +
X
t
+ n
r a;t
(73)
can be obtained by adding the cost of newly cap
cap
(Eq.
i nia;t;s Ct;s
+
C
oxc
s
C
r t
+ n
oxy a;t
(Eq. 74):
t
8a; t
(74)
685
where C , C , C and C
686
and oxy-combustion upgrades, respectively. The cumulative actualized operating costs
687
are similarly obtained from the value of previous period
688
ments of the current period t. All costs that are not directly in uenced by optimization
689
are expressed as a function of incinerated mass through parameter C
690
sumption of natural gas, oxygen and water is part of the model's decision variables and is
691
then considered separately with cost parameters
692
75). Maintenance costs are instead expressed simply as multiplication of the amount of
i
k
r
oxc
t;s
t
t
t
represent the cost of internal tanks of size s, trucks, rail wagons
35
gas
Ct
,
t
oxy
Ct
ACS Paragon Plus Environment
op a;t
1 and all operational require-
and
OP u;w;t
, whereas the con-
Ctwater ,
respectively (Eq.
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
693
Page 36 of 63
incinerated waste by the corresponding cost parameter C (Eq. 76). M
op
a;t
=
t
op
a;t
1
j(
mai a;t
=
t
t
j(
gas
OP Cu;w;t minc u;w;t
2
a;u)
u
mu;t
2
a;u)
X
2 +
X u
C
+m
gas
oxy
t
u;t
C
oxy t
+m
water u;t
U Aa;u
mai a;t 1
X
2 +
t
j(
u
+
U Aa;u ;w
water t
8a; t
(75)
8a; t
C M minc u;w;t
2
a;u)
!
C
!
(76)
U Aa;u ;w
694
The last term of the cash ow expression (Eq. 73), , is obtained as sum of income from
695
heat recovery and waste treatment, minus the expenses for outsourcing residues to other
696
incineration or cement plants as listed in Eq. 77. The revenue from heat recovery can
697
be calculated by multiplying its period-speci c price
698
whereas the income from treatment of external residues are expressed as multiplication
699
between treatment price P
700
for treating their waste but have access to a preferential price
701
treatment, the shipping party has to pay transport expenses in addition to treatment price.
702
Hence, outsourcing costs can be obtained by multiplying the amount of shipped waste with
703
the sum of treatment price and the distance-depending costs associated to the corresponding
704
transportation activity. Such transport costs are described by parameters C
705 706
ni
a;t
T EAB , Ce;w;t
w w;t
heat Pa;t
and the generated heat
rec a;t ,
and the shipped amounts. Internal customers also have to pay site . Pa;w;t
Concerning external
T EI e;i;w;t
,C
T EU e;u;w;t
and
representing shipments to internal tank slots i, incineration units u and outside the
system boundaries, respectively. As already explained in section 2, outsourcing is assumed
36
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707
Industrial & Engineering Chemistry Research
to only occur from external tanks e. ni a;t
=
t
ni a;t
1
2 +
t
j(
U Aa;u ;w
2
a;u)
j(
j(
2
me;u;w;t
2
a;u) = U Aa;u ;w
Ce;i;w;t
+P
Ce;u;w;t T EU
I Aa;i ;w
w w;t
+P
w w;t
8a; t
T EAB mEAB Ce;w;t e;w;t
+
P site Me;w;t Pa;w;t
EAa;e ;w
T EI
a;i
+
w mtrei Pw;t e;i;w;t
j( )2
2
!
X
2
a;e)
I Aa;i ;w
X
j(
treu
trgi
w mg;i;w;t Pw;t
a;e) = EAa;e ;i
a;i = I Aa;i ;w
EAa;e ;u
a;e)
me;i;w;t
a;i
j(
+
trei
X
2
j(
+
e
X
X e
j( )2
a;e)
j( )2
e w mtreu Pw;t e;u;w;t
EAa;e ;i
j(
e
X
+
U Aa;u ;w
2
a;e)
e
trgu
X
j(
e;u
heat a;t
w mg;u;w;t Pw;t
2
a;u)
P
g;i
X g;u
rec
a;t
(77)
EAa;e ;w
for the cumulative actualized cash ow is enforced by Eq. 78 with the
708
A lower bound
709
aim of distributing investments between multiple periods in order to obtain a clear priority
710
order for them. Similar applications of budget constraining have already been reported in
711
works investigating the capacity planning of power generation in developing countries 27 .
min a
f low
a;t
>
8a; t
min a
(78)
712
Finally, the net present value
713
at the end of the last time period t , as presented in Eq. 79. The total net present value
714
a
is obtained for each plant a from the cumulative cash ow end
tot
is then calculated as sum of the values for single plants a (Eq. 80). a
tot
= =
f low a;t t=t
end
X
8a
a a
37
ACS Paragon Plus Environment
(79) (80)
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
715
Page 38 of 63
3.6 Objective functions
716
The complexity of the network and diverging perspectives of the dierent stakeholders makes
717
dicult to express an overarching objective in the form of a single mathematical function.
718
Therefore, it has been decided to de ne a set of dierent objective functions with the aim
719
of assessing the implications of contrasting goals for the major actors of the network, as
720
presented in Table 2. Table 2: Objective functions and associated variables. Objective Variable Description OF1 1 Maximizing the total net present value for incineration sites. OF2 2 Maximizing the total amount of incinerated waste. OF3 3 Minimizing the total amount of transported waste. OF4 4 Maximizing the net present value for the whole network.
721
Unit Swiss Francs [CHF] [kg] [kgkm] Swiss Francs [CHF]
The rst objective function (OF1 ) represents the perspective of incineration sites and sets
722
the goal of maximizing the total net present value
723
(Eq. 81). The interests of waste-generating companies without treatment facilities are not
724
taken into account in this objective function. They are simply considered as waste sources
725
and their preference to ship their residues to a certain site, e.g. for cost reasons, is not
726
considered. 1
727 728
=
tot
for incineration and cement plants
tot
(81)
The second objective function (OF2 ) consists of maximizing the treatment of waste within the system boundaries (Eq. 82), thus fostering a local use of waste as a resource. 2
=
X
minc u;w;t
u;w;t
38
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(82)
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Industrial & Engineering Chemistry Research
729
Although such objective might already reduce the shipment of hazardous residues, the im-
730
plications of a minimization of waste shipments can only be completely assessed with a
731
dedicated objective function. For this reason, a third objective function (OF3 ) minimizing
732
the amount of transported waste, expressed as multiplication of the amount of shipped waste
733
mtr
with the corresponding transport distance D, is de ned as shown in Eq. 83. 3
X
=
trgi
+
T GI mg;i;w;t Dg;i
trgu
T GU mg;u;w;t Dg;u
X
+
g;u;w;t
g;i;w;t
X
X
+
me;i;w;t De;i trei
T EI
X
+
g;w;t
me;u;w;t De;u treu
T EU
e;u;w;t
e;i;w;t
mGAB DgT GAB g;w;t
X
+
mEAB DeT EAB e;w;t
(83)
e;w;t
734
A last objective function (OF4 ) is de ned with the aim of investigating the role of dierent
735
revenue distribution models across the supply chain network. In this sense, the perspective
736
of waste-generating companies without treatment capability is included through variable !
737
(Eq. 84).
g
4
=
X
tot
(84)
!g
g
738
The variable ! represents the net present costs that companies of region g have to bear for
739
shipping their residues as a part of treatment outsourcing. Waste exports also comprise cost
740
for treatment services, since these represent an economic loss for the investigated system as
741
whole, and in order to partially account for additional customs and noti cation expenses.
742
!g
743
actualized costs
g
can be obtained similarly to outsourcing costs for incineration plants with the cumulative reg g;t
!g reg
g;t
for each region g, as presented in Eqs. 85 and 86. = =
g;t t=t reg
t
8g
end
reg
g;t
1
2 +
(85) X
t
trgi
T GI mg;i;w;t Cg;i;w;t
+
g;i;w
X
trgu
T GU mg;u;w;t Cg;u;w;t
+
g;u;w
X
T GAB mGAB Cg;w;t g;w;t
w
39
ACS Paragon Plus Environment
!
8g; t
(86)
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
744
4
Results and discussion
745
The developed optimization model has been applied for the ve-year time horizon 2010-2014
746
to the Swiss industrial waste-to-energy network, consisting in ve incineration plants located
747
in integrated chemical complexes, six cement plants and seven regions grouping all chemical
748
sites without any treatment facility (Fig. 3). Every location is connected to each of the
749
other ones by both rail and road. Information about waste composition and properties has
750
been directly retrieved from incineration plants, if available, or estimated with the method
751
proposed by Bolis et al. 17 , otherwise. For modelling purposes, the hazardous liquid residues
752
considered in this study are divided into twelve classes representing waste streams of similar
753
properties and composition, as presented in the supporting information. One of the most
754
signi cant properties of each class is the capacity of self-sustaining its combustion, which
755
depends on both heating value and water content. High-calori c residues are hereinafter
756
de ned as combustibles, whereas the remaining ones, requiring either auxiliary fuels or the
757
simultaneous incineration of additional combustible waste to sustain their incineration, are
758
referred to as mother liquors.
40
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Industrial & Engineering Chemistry Research
Figure 3: Schematic overview of the Swiss industrial waste-to-energy network as considered in this study 21,28,29 , with the seven regions g and incineration sites a, consisting of ve chemical sites with integrated incineration facilities and six cement plants. 759
For validation purposes, the methodology has been rst tested with the separated opti-
760
mization of four single incineration plants for both a weekly and a yearly time resolution,
761
with the aim of checking if they are able to reproduce the historical industrial operation.
762
By comparing the results obtained under these two resolutions with the historical operation,
763
such procedure allows to obtain an insight into trade-os between computational eort and
764
result precision. This is especially important considering the size of the multi-site problem,
765
which is signi cantly larger than single-site ones and presumably requires a certain number
766
of simpli cations. Next, the validated optimization model has been applied to an industrial
767
case study comprising the whole multi-site Swiss network. Both validation and multi-site
768
case studies are formulated as mixed-integer linear problems (MILP) according to section
769
3 in GAMS and solved with CPLEX 12.6.1 on an Intel Core i7-4790 machine (3.60 GHz
770
CPU, 24.0 GB RAM). All results (single- and multi-site) are shown in aggregated form for 41
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771
772
Page 42 of 63
con dentiality reasons.
4.1 System-speci c assumptions
773
In addition to the modelling assumptions discussed in section 3.1, it has been necessary to
774
introduce the following ones, speci c to the investigated system:
775
Cement plants are considered as single furnaces without storage facilities, as in reality
776
these are mainly used for buering purposes. Such plants can only accept a xed
777
fraction of CONO combustible residues as substitution fuel, with its total amount as
778
the only constraint. In particular, no limitation is considered for the fumes capacity
779
(imposed with Eq. 27 for each other type of incineration unit). All cement plants
780
are considered as suitable for using such hazardous residues as substitution fuels in
781
their production processes. The modest availability of suitable waste residuals already
782
ensures that the maximum substitution ratio is never exceeded.
783
For con dentiality reasons, it has been agreed with the involved industrial partners to
784
use the same economic parameters for the whole system 23 . Therefore, no plant-speci c
785
costs or prices are considered for this case study. Concerning the economic evaluation,
786
cement plants are then modelled as incineration plants.
787
Since the maximum volumetric fumes throughput is based on average gures, every
788
incineration unit is considered as operational in all time periods. Thus, the value of
789
binary variable bu
u;t
is xed to 1 as listed in Eq. 87. buu;t
790
= 1
8u; t
(87)
4.2 Single-site optimization: validation and rst considerations
791
As previously explained, the methodology has been rst tested with four single-site case
792
studies, representing four Swiss integrated chemical sites and the companies that operate 42
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Industrial & Engineering Chemistry Research
793
their incineration facilities. Besides residues stemming from their corresponding incineration
794
site, the entire pool of waste streams produced in companies without treatment facilities
795
is considered as available to each single site in order to investigate possible implications of
796
an optimized solution. Non-treated residues are then assumed to be exported outside the
797
system.
798
4.2.1 Comparison between weekly and yearly resolution
799
Concerning validation, the most important data available for comparison is the total amount
800
of treated waste. Other information about waste management is not provided for all incin-
801
eration sites, thus preventing a more rigorous validation of each result obtained with the
802
model. For this reason, considering that this publication focuses on a multi-site perspective,
803
the validation of the proposed methodology is based on the total amount of treated waste.
804
In order to investigate the eect of dierent time resolution on the result precisions, the
805
methodology has been applied to the same ve-year horizon 2010-2014 for both weekly and
806
yearly periods. A model run with capacity expansion (CE) and a second one without allowed
807
investments have been performed for the two time resolutions under dierent objectives, giv-
808
ing the results shown in Fig. 4. This allows to assess the impact of dierent resolutions on
809
both the amount of incinerated waste and the typology of investments predicted by the
810
model.
43
ACS Paragon Plus Environment
Industrial & Engineering Chemistry Research
20
Treated waste relative to historical data [%]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Weekly resolution Yearly resolution
15
10
5
0
-5
OF1 with CE
OF1 without CE
OF3 with CE
OF3 without CE
Figure 4: Comparison between weekly and yearly resolution in terms of total amount of treated residues, relative to historical data, in time horizon 2010-2014 under economic and transportation objectives, with allowed and not allowed capacity expansion (CE). Aggregated results for separated single-site optimization of the four aforementioned incineration plants. (OF1 : max incinerators NPV; OF3 : min transportation; more details in Table 2). 811
From this gure, it is possible to observe that, compared to the transportation objective
812
OF3 , the economic objective function OF1 leads to much lower amounts of treated waste.
813
This can be explained by considering the correlation between heating value and the stoi-
814
chiometric amount of air required for a complete waste combustion. In fact, highly calori c
815
residues, mainly composed of waste solvents, require more combustion air due to their larger
816
organic fraction compared to aqueous residues, which have a signi cantly lower energy con-
817
tent. For a given volumetric capacity for the incineration fumes, it is then possible to choose
818
between dierent combinations of waste streams with dierent heating value and air de-
819
mand. Such exibility is further enhanced by a relatively large range of allowed operational
820
temperatures for most incineration units. Therefore, an economic objective will prefer, up
821
to a certain extend, highly energetic waste streams because of their advantage in terms of
822
generated steam, resulting in less treated residues.
823
By considering the cases without allowed investments, it is possible to observe that the
824
obtained results are comparable to the historical operation, spacing from 4 % less to 9 % more 44
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Industrial & Engineering Chemistry Research
825
incinerated waste for objective function OF1 and OF3 , respectively. The model can then be
826
considered as validated for the scope of this work, since it produces plausible results for both
827
weekly and yearly time resolutions. Moreover, the long-term perspective of this study does
828
not necessarily require the precision of a detailed incineration schedule, which could probably
829
not be achieved as this would signi cantly increase both size and complexity of the problem.
830
Such results are also in line with typical goals of the incinerators, which frequently adopt
831
strategies aiming at maximizing both the economic performance and the internal incineration
832
of their own residues, thus minimizing costs and shipments due to treatment outsourcing,
833
and ideally positioning themselves somewhere between OF1 and OF3 .
834
As expected, the amount of incinerated residues presents higher values for the model runs
835
with allowed investments compared to the ones without capacity expansion. This dierence
836
is accentuated when using a transportation objective, since in such cases investments are
837
not driven by their pro tability and have only a positive eect on the objective function. In
838
terms of incinerated waste, these gures indicate a potential improvement due to capacity
839
expansion up to about 8 and 13 % for OF1 and OF3 , respectively, depending on the chosen
840
time resolution. Nonetheless, it has to be remarked that single-site case runs do not present,
841
because of their own nature, any competition for the limited availability of the most valuable
842
waste streams, so the actual improvement potential is presumably lower and shall be further
843
investigated with a full multi-site case study.
844
The dierence between weekly and yearly time resolution is less than 5 % with respect
845
to the historical operation for transportation objective function OF3 without capacity ex-
846
pansion, and much lower in the other cases, indicating that a yearly resolution leads to
847
comparable results to the ones obtained with a more accurate weekly representation. How-
848
ever, it is plausible that possible waste management issues arising from oscillations in waste
849
production are not fully captured by the yearly resolution. In particular, inconstant amounts
850
of generated residues might lead, during certain weeks, to capacity constraints for both tem-
851
porary storage and treatment. In contrast to the transportation objective, usually giving 45
ACS Paragon Plus Environment
Industrial & Engineering Chemistry Research 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
852
all possible investments, the results obtained under OF1 are more likely to be aected by
853
the chosen resolution for what concerns predicted investments. For this reason, both oxy-
854
combustion upgrades and other storage investments have been compared between weekly and
855
yearly resolution as listed in Table 3. The corresponding computational times can instead
856
be found in Table 4. Table 3: Comparison between weekly and yearly resolution in terms of obtained investments, in time horizon 2010-2014 under objective functions OF1 and OF3 (Table 2). Total additional capacity obtained from the separated optimization of the four investigated single-site cases. The maximum possible total number of oxy-combustion upgrades in the investigated singlesite systems is 6. Objective Resolution Oxy-combustion upgrades [-] Weekly 6 OF1 Yearly 6 Weekly 6 OF3 Yearly 6
Additional installed Additional truck and tank capacity [m3 ] wagon capacity [m3 ] 0 0 0 0 1140 210 1200 210
Table 4: Average computational time for the separated optimization of the four single-site cases, in time horizon 2010-2014 under objectives OF1 and OF3 (Table 2). Objective Resolution Computational time [s] Weekly 1049 OF1 with capacity expansion Yearly 2 Weekly 22999 OF3 with capacity expansion Yearly 2 857
Although these results show comparable investments for weekly and yearly resolution
858
over the investigated ve-year horizon, it has to be remarked that a higher resolution still
859
provides a more detailed investment plan as these are allowed to occur more frequently (every
860
year quarter). Additionally, in some cases, their order does not match perfectly between the
861
two resolutions, indicating a slightly dierent prioritization depending on short-term condi-
862
tions, such as a peak generation of certain residues. Nevertheless, such minor improvements
863
require massively longer computational times, which become of special concern for larger op46
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Industrial & Engineering Chemistry Research
864
timization problems. In fact, this might prevent the application to more complex multi-site
865
case studies, as well as future uses of both multi-objective and uncertainty tools. Therefore,
866
it can be concluded that using a yearly resolution represents a reasonable compromise for
867
the multi-site and long-term perspective considered in this study.
868
4.2.2 Preliminary assessment of dierent objectives
869
In addition to validation purposes, results of model runs with yearly resolution have been
870
further analysed with the aim of obtaining a rst insight into possible implications of di-
871
verging objectives. Even though a direct and rigorous comparison of results, in particular
872
for transportation aspects, between single- and multi-site is not possible because of intrinsic
873
limitations, such as the absence of competition for the former, it might still be interesting
874
to confront some results. In this sense, it is useful to refer to average values per amounts of
875
treated waste for a simpler comparison between dierent case studies or objective functions.
876
Fig. 5 shows selected results obtained under the diverging objectives OF1 , OF2 and OF3 .
877
Objective function OF4 has not been used for single-site runs, since it focuses on purely
878
network aspects. For similar reasons, shipment-related results are only discussed for multi-
879
site optimization. Among the investigated objectives, OF1 leads to the highest economic and
880
energy recovery bene ts per amount of treated waste, while globally resulting in the lower
881
quantity of incinerated residues. This can again be explained with the fact that high-calori c
882
residues, more interesting from an economic perspective, require a higher amount of air for
883
a full combustion, implying that less waste can be treated for a given fumes capacity. A
884
similar eect can be observed by comparing the results of OF2 and OF3 : for similar values
885
of energy recovery per amount of treated waste, objective OF2 , maximizing the amount of
886
incinerated residues, obviously leads to more treated waste but also provides less pro t per
887
incinerated residues, as it prefers aqueous waste streams due to their low air demand.
888
Even though oxy-combustion allows for treating more waste, these additional amount
889
mainly consists of aqueous residues, thus resulting in less pro t and energy recovery per 47
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890
amount of incinerated waste for all the investigated objective functions. This is a consequence
891
of temperature constraints, which require to compensate the decreased heat absorption eect
892
of nitrogen. On the one hand, a lower nitrogen amount in the fumes, due to the partial
893
substitution of combustion air with pure oxygen, increases the incineration capacity for
894
a given fumes throughput. On the other hand, a smaller nitrogen quantity imposes that
895
such additional waste streams must release less energy than the one required to heat their
896
resulting fumes up to the allowed operational temperature. Nevertheless, investments in
897
such upgrades are still obtained under economic objective OF1 , implying that they have a
898
bene cial eect in absolute terms. In this sense, it is worth pointing out that such outcome
899
is presumably aected by the duration of the investigated horizon, shorter than the lifetime
900
of the equipment to be purchased, and by the assumption of using the same price, or value,
901
for all waste types.
48
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Page 48 of 63
Page 49 of 63
Treated waste relative to historical data [%]
25 with capacity expansion without capacity expansion
20
15
10
5
0
-5
OF1
OF2
OF3
(a) Total amount of treated residues relative to historical operation. 0.40 with capacity expansion without capacity expansion
0.35
Profit / Treated waste [CHF/kg]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Industrial & Engineering Chemistry Research
0.30 0.25 0.20 0.15 0.10 0.05 0.00
OF1
OF2
OF3
(b) Actualized pro t per amount of treated waste.
Figure 5: Comparison between objectives OF1 , OF2 and OF3 for time horizon 2010-2014 with yearly resolution. Single-site optimization of the four aforementioned incineration plants, with allowed and not allowed capacity expansion. (OF1 : max incinerators NPV; OF2 : max treated waste; OF3 : min transportation; more details in Table 2). 902
By comparing results of single-site optimization, the investigated investment opportuni-
903
ties in capacity expansion show an optimization potential of 6-7 % in terms of the amount
904
of treated residues, depending on the selected objective. Among the considered possible
905
purchases, oxy-combustion upgrades to existing incineration units seem the most promising
906
ones. Speci cally, other investments are not obtained under the economic objective OF1 49
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Industrial & Engineering Chemistry Research
20
Energy recovery / Treated waste [MJ/kg]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
with capacity expansion without capacity expansion
15
10
5
0
OF1
OF2
OF3
(c) Energy recovery (steam) per amount of treated waste.
Figure 5: Comparison between objectives OF1 , OF2 and OF3 for time horizon 2010-2014 with yearly resolution. Single-site optimization of the four aforementioned incineration plants, with allowed and not allowed capacity expansion. (OF1 : max incinerators NPV; OF2 : max treated waste; OF3 : min transportation; more details in Table 2). 907
(Table 3), indicating that oxy-combustion represents most of the improvement potential
908
related to capacity expansion. In any case, the waste management problem need to be fur-
909
ther addressed with a network case study, which also allows for a more complete evaluation
910
including transportation aspects.
911
4.3 Case study: Swiss multi-site network with historical data
912
After validation, the developed methodology has been applied to a full-size multi-site case
913
study covering the Swiss industrial waste-to-energy network for the horizon 2010-2014 with
914
yearly resolution. Originally, waste production was provided on a weekly and yearly basis,
915
depending on the information source for the period 2010-2014. In this case study, the model
916
has been run under all the objective functions listed in Table 2. As previously discussed,
917
the main outcome that can be easily compared to historical operation is the total amount
918
of incinerated waste, which is shown in Fig. 6, together with the same results presented in
919
the analysis of single-site runs. The size and computational eort of the problem with and 50
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920
without capacity expansion are provided in the Supporting information.
Treated waste relative to historical data [%]
25 with capacity expansion without capacity expansion
20
15
10
5
0
-5
OF1
OF2
OF3
OF4
(a) Total amount of treated residues relative to historical operation. 0.40 with capacity expansion without capacity expansion
0.35
Profit / Treated waste [CHF/kg]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Industrial & Engineering Chemistry Research
0.30 0.25 0.20 0.15 0.10 0.05 0.00
OF1
OF2
OF3
OF4
(b) Actualized pro t per amount of treated waste.
Figure 6: Comparison between all objectives. Multi-site optimization of the whole Swiss waste-to-energy network for the horizon 2010-2014 divided in yearly periods, with allowed and not allowed capacity expansion. (OF1 : max incinerators NPV; OF2 : max treated waste; OF3 : min transportation; OF4 : max network NPV; more details in Table 2). 921
From this gure, it can be seen that the total amount of incinerated residues does not
922
present signi cant dierences between objective functions, in contrast to single-site results
923
(Fig. 5). This is caused by the competition between the dierent actors of the network,
924
clearly only present in the multi-site case study. More precisely, there is a limited avail51
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Industrial & Engineering Chemistry Research
20
Energy recovery / Treated waste [MJ/kg]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
with capacity expansion without capacity expansion
15
10
5
0
OF1
OF2
OF3
OF4
(c) Energy recovery (steam or released heat for incineration and cement production, respectively) per amount of treated waste.
Figure 6: Comparison between all objectives. Multi-site optimization of the whole Swiss waste-to-energy network for the horizon 2010-2014 divided in yearly periods, with allowed and not allowed capacity expansion. (OF1 : max incinerators NPV; OF2 : max treated waste; OF3 : min transportation; OF4 : max network NPV; more details in Table 2). 925
ability of the most interesting waste streams, whose nature depends on the chosen objective
926
function. As previously observed, economic goals focused on incinerators seem to prefer
927
high-calori c residues, while objectives involving both minimization of shipments and max-
928
imization of waste treatment tend to choose more mother liquors because of their lower air
929
demand. In this sense, as the optimization is performed separately, single-site runs are more
930
free to choose both type and amount of external residues, consequently leading to more dif-
931
ferences between objectives. Similarly, the total amounts of incinerated waste obtained with
932
multi-site optimization is either considerably lower, for OF2 and OF3 , or much higher, when
933
OF1 is used. These gures con rm that the diverging nature of single- and multi-site sys-
934
tems, especially in terms of competition, prevents a full comparison aimed at a quantitative
935
assessment of bene ts arising from a more coordinated network management. Nonetheless,
936
such comparison still allows for a better understanding of the dynamics of the investigated
937
systems, as well as for a qualitative evaluation of possible synergies. Furthermore, the multi-
938
site optimization favors a better utilization of waste since the addition of water and auxiliary 52
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Industrial & Engineering Chemistry Research
939
fuel is avoided in all solutions for OF1 and OF3 , both in cases without and with capacity
940
expansion (refer to Supporting Information).
941
Concerning the actualized pro t per amount of treated waste, the results show a similar
942
trend between single- and multi-site optimization, with OF1 giving the best value, followed
943
by OF3 and OF2 . In general, the pro t obtained under all objectives is comparable between
944
the two cases, but the multi-site one presents more levelled values. In fact, compared to
945
single-site results, OF1 gives slightly lower values, whereas OF2 leads to a higher pro t per
946
amount of treated waste. OF3 results more or less in the same values obtained with single-
947
site optimization. A lower value for OF1 has indeed been expected from the introduction of
948
competitive dynamics with the multi-enterprise system, but it is somehow remarkable that
949
the limited availability of certain waste classes can lead to such similar pro t for strongly
950
diverging objectives. Such gures highlight the important fact that a more sustainable
951
management aimed at a more local waste treatment does not require particular economic
952
sacri ces, presumably thanks to a consequent reduction of shipment costs. Moreover, the
953
pro t obtained with OF1 is somehow unrealistic since it does not consider the perspective
954
of waste providers. The actual value would be with any probability considerably lower, as
955
suggested by OF4 results that do take such perspective into account.
956
In any case, it would be necessary to develop a strong exchange platform between the
957
network actors, communicating current waste levels and free incineration capacity, to achieve
958
the full potential of a more coordinated management. The poor information ow currently
959
represents the main barrier against the implementation of network synergies potentially
960
leading to economic, environmental and safety bene ts. The need of a continuous commu-
961
nication can already be observed at site level, where imprecise and outdated waste forecasts
962
lead to quite frequent adaptations to the waste treatment plan, resulting in a sub-optimal
963
management.
964
The average energy recovery per waste amount shows very similar values under all ob-
965
jective functions, in contrast to the ones obtained with single-site runs. The former also 53
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966
present signi cantly larger energy recovery results, as expected from the inclusion of ce-
967
ment plants and competition in the multi-site case study. In fact, compared to dedicated
968
incineration plants, these enable a better energy recovery eciency of the residues used as
969
substitution fuel, since the released heat is directly utilized in the kiln for the production of
970
cement instead of being converted into process steam. Moreover, they considerably increase
971
the total treatment capacity for combustible waste, compared to the sole incineration facil-
972
ities in integrated chemical complexes. In this sense, the overall fraction of mother liquors
973
in the incinerated waste is lower than the one resulting from single-site optimization, even
974
though their total amount remains more or less constant. Emission limits, often based on dry
975
composition, signi cantly constrain the increase in incineration capacity for such aqueous
976
residues through oxy-combustion upgrades. In any case, it must be remarked the considered
977
amount of waste suitable for thermal valorization in cement plants is based on the approxi-
978
mation of Bolis et al. 17 . Thus, the actual compatibility of such waste streams as substitution
979
fuels should be further checked to better evaluate the potential contribution of the cement
980
industry.
981
In addition to the results presented in Fig. 6, a multi-site perspective allows for a more
982
complete assessment of transportation aspects. Fig. 7 shows the average transportation
983
distance per amount of waste treated in the system obtained under dierent objective func-
984
tions. The average distance per generated residues, shown in sub- gure (a), can be simply
985
obtained by dividing the value of variable
986
consider the average distance for the waste treated within the system boundaries, presented
987
in sub- gure (b). From both graphs, it can be seen that the objective functions can be di-
988
vided in two distinct groups giving similar results, as especially noticeable for what concerns
989
the average distance of the residues treated in Switzerland. As expected, objectives that are
990
negatively in uenced by all types of shipments result in much lower transport distances than
991
values obtained under OF1 and OF2 . Nonetheless, as previously discussed, the remarkable
992
potential in shipment reduction, obtained by comparing results from the minimization of
3
by the one of 2 , but it is also interesting to
54
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993
transportation to OF1 , does not imply particular sacri ces in terms of pro t per amount of
994
treated waste since all functions present similar values.
Transport distance / Treated waste [kg km/kg]
1000 with capacity expansion without capacity expansion
800
600
400
200
0
OF1
OF2
OF3
OF4
(a) Average transportation distance, including exports, per amount of waste treated in Switzerland. 150
Transport distance / Treated waste [kg km/kg]
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Industrial & Engineering Chemistry Research
with capacity expansion without capacity expansion
125
100
75
50
25
0
OF1
OF2
OF3
OF4
(b) Average transportation distance (residues treated within the system boundaries) per amount of waste treated in Switzerland.
Figure 7: Comparison of transportation aspects between all objectives. Multi-site optimization of the whole Swiss waste-to-energy network for the horizon 2010-2014 divided in yearly periods, with allowed and not allowed capacity expansion. (OF1 : max incinerators NPV; OF2 : max treated waste; OF3 : min transportation; OF4 : max network NPV; more details in Table 2). 995
Another important comparison term between the dierent objectives is represented by 55
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996
the type of investments predicted by the model (Table 5). In general, the obtained in-
997
vestments show a similar trend to single-site results. Whereas the maximum number of
998
oxy-combustion upgrades is obtained under every objective function, purchases of storage
999
equipment are limited to the non-economic objectives, namely OF2 and OF3 . As there is
1000
not a signi cant dierence with the other objective functions (Fig. 6), it can be concluded
1001
that investments in storage capacity only result in limited bene ts in terms of treated waste.
1002
Shipments seem mainly decreased by investing in oxy-combustion, since improvements due
1003
to capacity expansion show comparable results under all objectives, implying that the limited
1004
incineration capacity act as the bottleneck of the waste-to-energy network. Nevertheless, the
1005
increasing focus of the chemical and pharmaceutical industry in life science and biotechnol-
1006
ogy sectors indicates a possible growing importance of process steps performed in aqueous
1007
media. In this sense, it is reasonable to expect a consequent change in the waste composition,
1008
with an increment in the fraction of mother liquor residues. Such variation has already been
1009
observed by some research partners in the last years 23 . On the one hand, an increased share
1010
of mother liquor waste could potentially lead to storage issues arising from technical limita-
1011
tions for the mixing of aqueous residues. On the other hand, their combustion requires less
1012
combustion air, thus potentially enabling to treat more waste with the given incineration ca-
1013
pacity. In such future perspective, storage investments might be more meaningful but their
1014
eectiveness should be further evaluated with additional case studies involving uncertain
1015
conditions. This would also allow a better assessment of the robustness of oxy-combustion
1016
upgrades, which should theoretically play a more relevant role in case of an increased frac-
1017
tion of mother liquor residues. Indeed, as previously explained, an incremented treatment
1018
capacity due to oxy-combustion is mainly limited to aqueous residues because of their lower
1019
energy content. Nevertheless, such upgrades might also be limited in their application by
1020
emission regulations as these are often based on a dry fumes composition.
56
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Industrial & Engineering Chemistry Research
Table 5: Comparison of obtained investments, in time horizon 2010-2014, under dierent objective functions (Table 2). Total additional capacity obtained from the optimization of the whole Swiss industrial waste-to-energy network with yearly resolution. The maximum possible number of oxy-combustion upgrades in the investigated system is 6. (OF1 : max incinerators NPV; OF2 : max treated waste; OF3 : min transportation; OF4 : max network NPV; more details in Table 2). Objective Oxy-combustion upgrades [-] OF1 6 6 OF2 OF3 6 6 OF4
Additional installed Additional truck and tank capacity [m3 ] wagon capacity [m3 ] 0 0 1020 350 1140 360 0 0
1021
The strong dierence in terms of predicted shipments, together with the fact that in-
1022
vestments in additional storage capacity are as likely to be good as bad depending on the
1023
chosen objective function, indicate that multi-objective tools could be useful for identifying
1024
possible trade-o solutions between economic and transportation objectives. This is of par-
1025
ticular importance considering the increasing safety concerns about shipments of hazardous
1026
waste 18 , whose associated risk is intrinsically linked with both amount and distance of the
1027
transported residues.
1028
5
Conclusions
1029
This work proposes a novel methodology for the optimization of industrial waste-to-energy
1030
networks, combining logistic, site management and process elements into a single mathe-
1031
matical formulation. The model is formulated as multi-period mixed-integer linear problem
1032
(MILP) with discrete time representation and includes the possibility of investing in addi-
1033
tional storage means, as well as in oxy-combustion upgrades. After validation with real data
1034
stemming from industrial and institutional partners, the developed model has been applied
1035
to a complex multi-site case study consisting of the whole Swiss industrial waste-to-energy
1036
network. This covers the ve-year horizon 2010-2014, using historical data and a yearly 57
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1037
resolution. A set of objective functions allows for investigating the implications of diverging
1038
goals in terms of investments, shipments and energy recovery.
1039
Results highlight the importance of both investments in oxy-combustion and the role of
1040
the cement industry, which increase the treatment capacity for mother liquor and combustible
1041
residues, respectively. Speci cally, a systematic planning for the distribution of residues
1042
between incineration and cement plants seems to be the key factor for increasing both the
1043
amount of incinerated waste and the consequent energy recovery, as well as to diminish
1044
transport distances. In contrast to oxy-combustion, investments in additional storage means
1045
are only obtained under certain objectives, indicating that the limited bene ts associated
1046
to them are presumably situational and arising from an increasing exibility concerning
1047
waste mixing. Nevertheless, the importance of a more exible temporary waste storage
1048
and oxy-combustion might be considerably aected by possible future changes in waste
1049
amounts and composition. Therefore, further studies should consider uncertain conditions
1050
for a more complete evaluation of the dierent investment opportunities. In this sense,
1051
longer time horizons would also allow to better assess the long-term eects of investments.
1052
Furthermore, purchases of storage equipment are only obtained with half of the objective
1053
functions, suggesting that multi-objective tools could be applied to investigate possible trade-
1054
o solutions.
1055
The comparison between the solutions obtained under dierent goals shows a signi cant
1056
improvement potential in terms of shipped waste, which would result in important environ-
1057
mental and safety bene ts, together with a decrease of transport expenses. Nonetheless, it
1058
is worthy to remark that the predicted improvements should be considered as upper bounds,
1059
since they assume a perfect information ow between all actors in the network. A common
1060
platform for information exchange would thus be required to achieve most of the bene ts
1061
arising from a synergistic management of the network.
58
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1062
Industrial & Engineering Chemistry Research
Acknowledgement
1063
The authors thank the companies Cimo Compagnie industrielle de Monthey SA, Dottikon
1064
Exclusive Synthesis AG, Holcim Schweiz AG, Infrapark Baselland AG, Lonza AG and the
1065
Swiss Federal Oce for the Environment for supplying data and their support in technical
1066
questions. The members of the advisory board of the project 23 are acknowledged for their
1067
feedback on both assumptions and results of the optimization model. Sincere gratitude is
1068
also dedicated to Christoph Hugi, Corinna Baumgartner, Cynthia Muller and Paolo Ferrara
1069
of the Fachhochschule Nordwestschweiz for their collaboration on the economic evaluation.
1070
This research project is part of the National Research Programme \Energy Turnaround"
1071
(NRP 70) of the Swiss National Science Foundation (SNSF). Further information on the
1072
National Research Programme can be found at www.nrp70.ch.
1073
1074 1075 1076
1077 1078 1079
1080 1081
1082 1083
1084
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For Table of Contents Only.
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