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An Automated Pinch-based Approach for the Optimum Synthesis of Water Regeneration-Recycle Network – Study on Interaction of Important Parameters Reza Parand, Hong Mei Yao, Dominic Chwan Yee Foo, and Moses O. Tade Ind. Eng. Chem. Res., Just Accepted Manuscript • DOI: 10.1021/acs.iecr.6b01372 • Publication Date (Web): 22 Sep 2016 Downloaded from http://pubs.acs.org on September 24, 2016
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Industrial & Engineering Chemistry Research
An Automated Pinch-based Approach for the Optimum Synthesis of Water Regeneration-Recycle Network – Study on Interaction of Important Parameters Reza Paranda,b,*, Hong Mei Yaoa, Dominic C.Y. Fooc, Moses O. Tadéa a Department of Chemical Engineering, Curtin University, GPO Box U1987, Perth, WA 6845, Australia. b Australasian Joint Research Centre for Building Information Modelling, School of Built Environment, Curtin University, GPO Box U1987, Perth, WA 6845, Australia. c Centre of Excellence for Green Technologies/Department of Chemical and Environmental Engineering, University of Nottingham Malaysia, Broga Road, 43500 Semenyih, Selangor, Malaysia.
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Abstract
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In this work, a recently developed Automated Composite Table Algorithm (ACTA) (Parand et al. Clean
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Technol. Environ. Policy. 2016, DOI: 10.1007/s10098-016-1138-7) is improved to explore the
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interactions among important key parameters for a water regeneration-recycle network of single
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contaminant problem. The improved ACTA is based on Pinch Analysis, but is automated for the
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various targeting tasks. In most of the literature for water regeneration-recycle network synthesis,
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the post-regeneration concentration (Co) is treated as a fixed parameter. However, the other key
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parameters (i.e. freshwater, wastewater, regenerated water flowrates, along with wastewater and
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pre-regeneration concentrations) vary with the change of Co. With the use of improved ACTA, the
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interactions among these key parameters are analysed for both types of regeneration units, i.e. fixed
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Co and fixed Removal Ratio (RR). The exploration of these interactions also enables the water
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network to be optimised for economic purposes at the targeting stage. The improved ACTA is
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demonstrated using literature examples for both fixed load and fixed flowrate problems.
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Key words: Pinch Analysis, regeneration-recycle, water minimisation, targeting, Process Integration
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1. Introduction
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Environmental sustainability regulations, the rising cost of raw material and waste treatment, and
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increasingly stringent emission regulations are the factors that encourage resource conservation in
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the process industry in the past decades. Concurrently, Process Integration (PI) has gained good
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attention since the 1970s as a promising tool in resource conservation activities and hence to
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promote sustainable development in the process industry. Most recent PI tools and their
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applications are documented in a handbook1 and an encyclopaedia chapter2.
*
Corresponding author. Telephone: +61 8 9266564. E-mails:
[email protected],
[email protected] (R.Parand);
[email protected] (H.M.Yao);
[email protected] (D.C.Y.Foo);
[email protected] (M.O.Tadé) Page 1 of 33 ACS Paragon Plus Environment
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Among various industrial resources, the one that was being researched the most is arguably water.
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Rapid depletion of water resources along with increased water demand causes a water scarcity
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which severely affects many parts of the world. Therefore, water conservation activities have
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attracted the attention of policy makers, researchers, and industrial practitioners. Among these
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practices, water minimisation through PI has made a remarkable progress since mid-1990s, started
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with the seminal work of Wang and Smith3. Water-using operations are mainly categorised into fixed
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load (FL) and fixed flowrate (FF) processes. The mass transfer is the main concern for the FL
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processes and the water flowrate through the water-using processes is deemed to be constant. For
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the FF model, however, the inlet and outlet flowrates for the processes could vary and hence, the
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flowrate loss/gain could be considered readily. It is worth noting that the FL and FF models are
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interchangeable for single contaminant problems, and thus can be addressed by the same targeting
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tools 4.
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Two major approaches for water network synthesis can be categorised as the Pinch Analysis (PA)
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techniques and mathematical optimization methods. The former offers in-depth view for the
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engineers; but requires problem simplification. On the other hand, mathematical optimization
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approach can solve complex problems (e.g. multiple contaminants, topological constraints, and
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representative cost functions), however, achieving global optimum is a challenge. After two decades
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of development, various promising PI tools for water network synthesis have been developed, and
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documented in several review papers4-9 and a textbook10. The first review paper by Bagajewicz 6
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considers both PA and mathematical programming approaches, with the emphasis on the latter.
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Foo4 reviewed specifically the application of PA methods for single-contaminant problems for both
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FL and FF models. Jeżowski8 classified all key contributions in the alphabetic order by providing the
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problem statements and the solution methods. Gouws et al.7 presented an overview on the batch
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processes. In the review of Khor et al.9, the mathematical optimization based methods were
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systematically discussed by giving the key milestone and challenges. Ahmetovic et al.5 provided an
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overview on synthesis of non-isothermal water network synthesis, in which both water and energy
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integration are considered simultaneously.
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The seminal contribution on regeneration targeting using PA technique was made by Wang and
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Smith3. The graphical Limiting Composite Curve (LCC) was proposed for the water regeneration
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problem. The reuse/recycle pinch is taken as a pinch point in regeneration system. This assumption
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is not generic enough and fails to find the minimum freshwater and regenerated water flowrates 11.
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Kuo and Smith 12 later developed a methodology to deal with more generic problems. This approach
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needs an iterative procedure to migrate the process between freshwater and regeneration regions.
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Feng et al. 13 introduced some valuable conceptual insight to the water regeneration problem with Page 2 of 33 ACS Paragon Plus Environment
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the use of LCC. It was demonstrated that the pre-regeneration concentration (Creg) can be located
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either below or above the reuse/recycle pinch point. The Mass Problem Table 14 was also extended
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as an algebraic targeting technique to complement the graphical LCC. These techniques, however,
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are more favour for the FL model, where water loss/gain is not too significant such as those in the FF
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problems.
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Hallale 15 established the seminal guidelines for regeneration targeting for the FF problems. A water
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network can be divided into two regions, i.e. below the pinch (with surplus of water) and above the
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pinch (with deficit of water). Hallale15 suggested that regeneration unit should be placed across the
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pinch concentration , in order to collect water from region with surplus of water below the pinch,
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partially purify it, and discharge it to the region with deficit of water above the pinch. These
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targeting rules lead to the reduction of overall freshwater demand. Based on the Hallale’s guideline,
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Material Recovery Pinch Diagram (MRPD) 16 and Water Cascade Analysis (WCA) 17 were made use to
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identify freshwater and wastewater flowrates in such systems. However, none of these targeting
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methods is capable to determine the optimum freshwater, wastewater and regenerated water
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flowrates at the same time. This limitation was later addressed through a algebraic method
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proposed by Ng et al. 18. The procedure however is tedious due to its iterative characteristics that is
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based on the work of Kuo and Smith12. The Composite Table Algorithm (CTA) 19 has the same
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capability as Ng et al.’s18 method does, but with less effort required. First, the CTA produces data in
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tabular format. Second, the targets for water regeneration system i.e. freshwater and regenerated
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water flowrates were determined through LCC. Based on the CTA, the improved problem table20 was
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developed for multiple water sources problem which includes regeneration unit. This approach was
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recently extended by Deng et al.21 to consider multiple participating regeneration units. The main
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limitation of CTA19 is that, the reuse/recycle pinch point is taken as the first regeneration pinch
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point. However, as will be shown in this work, the targets may not be reliable for some cases. This is
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mainly because the pinch point for a water regeneration-recycle network may change according to
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the turning point of the LCC 22; the latter phenomena is due to the change of the post- regeneration
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concentration (Co). Thus, this assumption is not generic enough.
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Note that in general, regeneration unit is categorised as fixed Co or fixed removal ratio (RR) types 3.
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Most of PA techniques mentioned above are limited to a fixed Co value in the targeting stage. Some
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works try to relax the assumption of fixed Co but none of them can handle RR-type regeneration unit
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due to complexity of the problem. Xu et al.23 made an attempt to vary the Co and analyse the
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relationship between regeneration concentration and regeneration pinch. Fan et al.24 also have
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considered various range of Co by deploying graphical approach. Two situations have been
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Shenoy and Shenoy25 proposed continuous targeting technique to consider a range of Co values for
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zero liquid discharge (ZLD) water network. Yan et al.26 developed the inflection point method to
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relax the assumption of fixed Co in the targeting stage. The relationship between minimum
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freshwater and regenerated water flowrate was studied. Despite of their scientific contributions,
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these methods suffer from several common problems. First, these techniques cannot consider the
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entire range of feasible Co values. Second, they are unable to address the RR-type regeneration unit.
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Third, most of these methods23, 24, 26 are reported for the FL problems.
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At this end, it is worthwhile to point out three important research gaps for the targeting of water
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regeneration-recycle network as follows:
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•
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have been developed for the RR-type regeneration unit. •
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Most developed techniques focus on regeneration units of the fixed Co. Very limited works
There is a lack of in-depth analysis to explore the interactions among various process parameters in the literature.
•
Economic analysis is hardly discussed in the literature of PA. This is mainly due to the nature of the techniques that were normally carried out manually.
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The key parameters to design a water regeneration-recycle network are freshwater and regenerated
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water flowrates, as well as pre-regeneration and post-regeneration concentrations. These
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parameters are highly interdependent, and also affect the total cost of the network. The post-
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regeneration concentration (Co) has been treated as a fixed parameter in most of the existing
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literature 3, 13, 18, 19 on water network synthesis. Note that the freshwater and wastewater flowrates
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of a water network will decrease with the decrease of Co value, which in turn leads to reduced
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operating cost. In contrary, the regeneration cost increases with the decrease of Co value, since
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regeneration unit of higher performance is required. Thus, analysing the effect of Co on the total cost
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is an economic optimisation problem. In an earlier work by the authors 22, the composite matrix
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analysis was developed to study the interactions of key parameters in a water regeneration-reuse
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network. The RR-type regeneration units were also addressed. However, the freshwater and
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regenerated water flowrates should be identical for the water regeneration-reuse system because
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water recycling is not allowed. For a water regeneration-recycle network (this study), the freshwater
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and regenerated water flowrates are not necessarily the same. A new algorithm, therefore, needs to
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be developed to cater for this problem. This study aims at developing a methodology that relaxes
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the assumption of fixed Co for water regeneration-recycle network that utilises both fixed Co or RR
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types regeneration units. The automated composition table algorithm (ACTA) that considers ZLD
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possibility in targeting a water regeneration-recycle network was recently proposed by Parand et Page 4 of 33 ACS Paragon Plus Environment
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al.27. The developed algorithm is however limited to fixed Co regeneration units. In this study, the
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recently established ACTA targeting procedure27 is improved by taking the incremental increase of Co
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into consideration. The three main contributions of this study are given as follows:
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•
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To identify a set of optimum key parameters for a water regeneration-recycle system, ahead of network design;
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To explore the interactions among these key parameters ;
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•
And to identify parameters contributions towards economic performance of a water
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regeneration-recycle network.
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Note that the ACTA can handle medium and large problems since it is fully automated. It is,
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however, limited to single contaminant problems, similar to most PA methods.
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The paper is structured as follows. Next section gives the problem statement. The improved ACTA
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technique is explained step by step based on the FL problem. The interaction among key parameters
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of water generation-recycle network is studied as a result of the improved ACTA. Next, the economic
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evaluation model is presented. The RR-type regeneration unit is discussed. The improved ACTA
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model is also applied for a FF problem, before the concluding remarks are made.
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2. Problem statement Consider a water network that consists of the following units: •
Processes that demand water, designated as process sinks or SKj (j=1, 2, …, m). Every sink
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requires a fixed flowrate of water (FSKj) and has maximum inlet concentration (CSKj), which is
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bound by the highest concentration limit (CSKjmax), i.e. CSKj ≤ Cskjmax
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•
Processes that produce water, in which may be sent for reuse or recycle to the process sinks,
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designated as process sources, or SRi (i= 1, 2,…, n). Each source has a fixed flowrate (FSRi),
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and an impurity concentration (CSRi).
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•
Water regeneration unit of known performance (fixed Co or fixed RR type), that may be used
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to purify water sources before they are recycled to the process sinks. Water sources enter
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regeneration unit at pre-regeneration concentration (Creg). The flowrate loss for the
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regeneration unit is assumed to be negligible. This is termed as the single pass regeneration
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unit 10.
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•
When the process sinks cannot be satisfied by the process sources, either due to quality
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(contaminant mass load) or quantity (flowrate) constraints, an outsourced freshwater
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(regarded as an external source) with flowrate of Ffw and contaminant concentration of Cfw is
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sources (if any) will be disposed as waste stream (with concentration of Cww and flowrate of
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Fww).
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27
Figure 1. Superstructure Presentation of the model
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Figure 1 depicts the superstructure presentation of the model. The main objective is to determine
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the various flowrate targets of a water regeneration-recycle network, i.e. Ffw, Fww, Freg, along with
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other important process parameters (e.g. Creg, and Cww). In addition, economic evaluation model is
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incorporated to determine a cost optimum water regeneration network.
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3. Methodology and Example 1 13, 19
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Figure 2 shows the LCC that is widely used for targeting water regeneration-recycle system
.
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Note that each water network has a distinctive LCC with different turning points. The existence of
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two regeneration pinch points (e.g. Pinch 1 and Pinch 2 in Figure 2) is common for a water
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regeneration-recycle system. As shown in previous works 13, 19, the regeneration pinch points dictate
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the shape of the water supply line (WSL), as well as the various water network targets (i.e. the
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freshwater, wastewater and regenerated water flowrates) for a given Co value. It is also worth
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mentioning that for some cases, Pinch 1 and Pinch 2 may overlap for a confined range of Co (i.e. only
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single regeneration pinch exists). This fact will be explained in the later sections. For the LCC in
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Figure 2, the freshwater line starts at the origin and terminates at Creg (indicated by dotted line). The
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inverse slope of this freshwater line identifies the optimum freshwater flowrate (Ffw). The
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regenerated water line, on the other hand, is indicated by the dotted line between Co and Creg, with
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its optimum flowrate (Freg) dictated by the inverse slope of the line. The limiting freshwater supply
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line is also introduced as the first segment of WSL (starts from origin and intersect with LCC at Co)13.
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Figure 2. Graphical presentation for targeting the regeneration-recycle system27
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The LCC sets the boundary for a water regeneration-recycle network. This also means that the WSL
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should always stay below and touch the LCC at the regeneration pinch point(s) for a feasible water
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network. In general, Co could take any point on the LCC, so long as it stays lower than the
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reuse/recycle pinch concentration (Cpr). However, in determining the optimum Co value, the WSL (in
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particular the limiting freshwater supply line) may appear above the LCC, which implies a mass load
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infeasibility problem. Hence, a new pathway is created in order to keep the WSL in the feasible
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region. This will be explained in detail in the following sections. Note that in most cases, the change
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of Co will also lead to different value of Creg.
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Example 1 from Xu et al. 23 is adopted to describe the proposed methodology. The limiting data is
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provided in Table 1. As shown, the network consists of four FL operations. For the base case system,
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the fresh water and wastewater flowrates are identified as 240 t/h (sum of the total water sinks and
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source flowrates). In this example, pure freshwater (Cfw=0) is assumed to serve the network. The
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flowrate of fresh water could be reduced to 86.67 t/h if reuse/recycle scheme is implemented, with
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the reuse/recycle pinch concentration (Cpr) identified at 120 ppm. These values can be readily
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calculated by using existing methodologies such as WCA 17, MRPD 28, CTA 19 , etc.
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Table 1. Limiting data for Example 1
SKj 1 2 3 4
FSKj (t/h) 40 70 10 120
23
CSKj (ppm) 0 25 25 90
SRi 1 2 3 4
FSRi (t/h) 40 70 10 120
CSRi (ppm) 120 40 150 120 Page 7 of 33
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The ACTA is improved by considering the range of Co i.e. [Comin, Comax ] incrementally and identifying
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other key parameters. Graphically, the limiting freshwater supply line moves alongside the LCC with
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the change of Co. The pathway is updated (if needed) to keep the WSL below the LCC for all range of
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Co. The feasible Ffw, Freg, Creg, Fww, and Cww for every Co are identified. The improved ACTA is
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implemented by using MATLAB and the detailed procedure is described as follows:
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Step 1. Generation of Co vector
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As mentioned, with the change of Co, other key parameters in a water regeneration-recycle network
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will also vary. Thus, in the first step, it is necessary to produce a range of Co from its minimum (Comin)
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to maximum values (Comax). This is represented using Eq. 1.
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Co ,n = Comin + ∆ min Comax − Comin max +1 Co ≤ Co,n ≤ Co , ∀n ∈ N = 1,2,...., ∆
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In order to plot the vector of Co, the incremental step (Δ) and Comin are set to 0.1 and 1 ppm,
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respectively. As mentioned earlier, Co has to stay lower than the reuse/recycle pinch concentration.
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The latter corresponds to 120 ppm in this example, which then sets the maximum bound of Co, i.e.
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Comax. With the above set-up, Eq. 1 generates the vector of Co=[1, 1.1, 1.2, ….., 120]T.
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Step 2. Determination of freshwater flowrate target (Ffw) for every Co value
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The CTA 19 is employed to identify freshwater flowrate (Ffw) for every Co value. The targeting for
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minimum freshwater flowrate with Comin = 1 ppm (first iteration) is shown for demonstration
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purposes. Other Co values are considered in the following iterations in order to identify the
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associated minimum freshwater flowrate targets. Populating all these targeted values will generate
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the freshwater flowrate vector (Ffw).
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The detailed procedure for targeting minimum freshwater flowrate can be found in Parand et al.27
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and is not included here for the purpose of brevity. The results are also presented in the Supporting
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Information (Table S1).
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Step 3. Checking of feasibility condition for all Co values
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The limiting freshwater supply line (the first segment of WSL below Co) always moves alongside the
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LCC with the increase of Co for a regeneration-recycle water system. For illustration purposes, the
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limiting freshwater supply lines (lines AB) for Co values of 10 ppm, 30 ppm, 35 ppm (generated using
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the CTA) are depicted in Figure 3.
(1)
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Figure 3. Limiting freshwater supply lines for Co values of 10, 30 and 35 ppm in regeneration-recycle system
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In order to maintain the mass load feasibility, the WSL should always stay below the LCC. However,
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there are cases where this requirement is not being fulfilled. Figure 4 shows such a case. A convex
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turning point (CTP) is observed in the LCC below the reuse/recycle pinch point, corresponding to the
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concentration (CCTP) of 40 ppm. For this kind of water networks, the limiting freshwater supply line
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may cross the LCC when it goes over the CTP, which implies infeasibility to the problem. As
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demonstrated in Figure 4, the limiting freshwater supply line (line AB) which corresponds to the Co
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greater than CTP (40 ppm) crosses the LCC (the magnified version around the CTP is also shown for
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clearer illustration).
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Figure 4. WSL with the Co above the convex turning point
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For such a case, it is necessary to determine whether the CTP is the upper bound to relax the Co.
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Note that even though the reuse/recycle pinch concentration (Cpr) is the ultimate upper bound for
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the Co value, the CTP can be a potential upper bound as well. Hence it is necessary to perform such a
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cross-check.
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To avoid the limiting freshwater supply line from crossing the LCC, a new pathway is needed. Figure
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5 shows such a case where the updated LCC provides the possibility of relaxing Co further above the
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CTP (the magnified version around the CTP is also shown for clearer illustration). As such, the
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limiting data need to be modified to reflect this update (to be explained in details in step 4). The
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area enclosed between the original and updated LCC is termed as the infeasible pocket, indicating
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mass load infeasibility in this region.
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Graphically, the updated LCC is achieved by removing the upper lines of the infeasible pocket. When
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the limiting freshwater supply line reaches the CCTP (i.e. 40 ppm, through iteration by increasing Co
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value in step 1), a pseudo segment is introduced by extending the limiting freshwater supply line
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(indicated by line A’B’). The pseudo segment should intersect the LCC below the reuse/recycle pinch
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point (i.e. 120 ppm). As shown in Figure 5, pseudo segment starts at the CTP and intercepts with the
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LCC at the interim point, with concentration (Cint) of 100 ppm. With this updated pathway, the
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limiting freshwater supply line now moves along the pseudo segment (instead of the original LCC)
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for all possible Co values between CCTP and Cint. Thus, all WSLs (that corresponds to the Co values
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ranging between 1 – 120 ppm) are now staying below the original LCC. Note that what was
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explained graphically for this step was converted to algebraic procedure and implemented via
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MATLAB. The details of the formulations are provided in the appendix.
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Figure 5. Updated LCC to remove infeasible pocket for relaxing Co above the CTP
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Step 4. Update of limiting data for infeasible pocket(s) removal
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The limiting data need to be updated in order to reflect the removal of the upper lines of infeasible
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pocket. The updated limiting data are given in Table 2. All modified data (as compared to the original
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ones in Table 1) are shown in bold. The limiting data are updated based on the location of CTP and
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interim point. Also, the numerical index (i.e. pseudo flowrate) which represents the slope of line A’B’
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needs to be considered. The detailed steps to identify these updated data are explained as follows.
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Table 2. Updated limiting data to remove the upper lines of infeasible pocket
SKj Pseudo 1 2 3 4
FSKj (t/h) 20 40 70 10 120
CSKj (ppm) 40 0 25 25 100
SRi Pseudo 1 2 3 4
FSRi (t/h) 20 40 70 10 120
CSRi (ppm) 100 120 40 150 120
276 277
Modification of limiting concentration data
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The CCTP and Cint are found at 40 ppm and 100 ppm, respectively. To remove the upper lines of
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infeasible pocket, all turning points of LCC between CCTP and Cint should be removed. In other words,
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all concentrations for sources (CSRi) and sinks (CSKj) that lie between CCTP and Cint are to be replaced by
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Cint. For this example, this involves SK4; hence its concentration is now changed to 100 ppm (instead
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of 90 ppm).
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Inclusion of pseudo sink and pseudo source
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Once the turning points of LCC between CCTP and Cint are removed, the pseudo segment needs to be
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added for the updated LCC (shown in Figure 5). This can be done by inclusion of a pair of pseudo
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source and sink.
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The pseudo flowrates for both sink and source are calculated using Eq. 2. For this example, when
288
the Co reaches the CTP (40 ppm), the freshwater flowrate (Ffw) is calculated as 70 t/h and the interval
289
net flowrate (Net Fk) at the same level of Co is 50 t/h (both of these values were obtained using the
290
CTA explained in step 2, detailed steps are omitted for brevity). Thus, the pseudo flowrate (Fs) is
291
calculated as 20 t/h.
292
Fs = F fw,n − NetFk , ∀n, k → Co,n = CCTP
293
Now a pair of pseudo sink and source is added to the limiting data, both with flowrates of 20 t/h.
294
The pseudo sink will have a concentration equal to the CCTP, i.e. 40 ppm. This represents the
295
beginning point of the pseudo segment in Figure 5. On the other hand, the pseudo source takes a
296
concentration of Cint (100 ppm), which represents the finishing point of the pseudo segment in Figure
297
5. These pseudo sink and pseudo source are the algebraic representation of the pseudo segment for
298
the updated LCC as illustrated in Figure 5.
(2)
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299
Once the upper lines of infeasible pocket are removed (through the updated limiting data), the
300
targeting procedure goes back to step 1, where the vector of Co is generated again from Comin to
301
Comax. Note that the iteration ensures that all other infeasible pockets (if any) are also eliminated
302
throughout the Co relaxation procedure. When all infeasible pockets below the reuse/recycle pinch
303
point are removed, the algorithm moves forward to step 5.
304
Step 5. Identification of regenerated water flowrate (Freg) and pre-regeneration concentration
305
(Creg) for all Co values
306
In this step, the regenerated water flowrate (Freg) and pre-regeneration concentration (Creg) are
307
calculated for every Co value. The improved CTA27 (provided in the Supporting Information, Table S2)
308
is used for this purpose. Note that the updated limiting data should be used for the implementation
309
of improved CTA. The first five steps are the same as the original CTA27 (Table S1). Two more
310
columns are added to calculate the interval regenerated water flowrate (Freg,k, column 7) and the
311
corresponding pre-regeneration concentrations (Creg,k, column 8) using Eq. 3 and Eq. 4, respectively.
312
These equations are borrowed from Feng et al. 13 and Parand et al. 27 Note that Eq. 3 considers the
313
concentration levels (Ck) that stays between Co and Cpr; while Eq. 4 considers the concentration
314
levels (Ck) between the Cpr and the largest arbitrary value.
315
Freg,k =
316
Creg,k =
317
The largest values among all the entries in columns 7 and 8 give the optimum Freg and Creg values for
318
the given Co. As shown in Table S2, these values are identified as 47.06 t/h and 120 ppm, respectively
319
for Co of 1 ppm. In addition, the Cks at the same level as the targeted Freg and Creg are the
320
concentrations for the regeneration pinch points (i.e. correspond to Pinch 1 and Pinch 2 in Figure 2).
321
As mentioned earlier, these two points may lie on each other for some specific range of Co. This
322
happens for the case in Table S2, where the concentration of Pinch 1 and Pinch 2 are identified at
323
120 ppm for Co = 1 ppm. Graphically, the WSL touches the LCC at only one regeneration pinch point
324
(i.e. 120 ppm). However, this is not the case for the entire range of Co values. The regeneration pinch
325
points switch among the turning points of LCC with the change of Co.
326
To consider the entire range of Co= [Comin,Comax] , Eq. 3 is modified to Eq. 5, where Co and Ffw in Eq. 3
327
are now replaced by Co,n and Ffw,n, respectively, where the subscript “n” indicates the numbers of
328
iterations in the improved ACTA procedure.
Cum.∆mk − F fw × Ck Ck − Co
, ∀k → Co < Ck ≤ C pr
Cum.∆mk − F fw × Ck + Freg × Co Freg
(3)
, ∀k → Cpr ≤ Ck
(4)
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Industrial & Engineering Chemistry Research
Cum.∆mk − F fw,n × C k
, ∀n, k → Co,n < Ck ≤ Cpr &∀n ∈ N
329
MFreg ,kn =
330
Note that Eq. 5 considers the entire range of Co (generated in step 1) and also the entire range of Ffw
331
(generated via CTA in step 2). By taking these modifications into account, Eq. 5 generates the
332
regenerated water flowrate matrix MFreg. Specifically, every column of MFreg consists of the Freg,k
333
values (generated in column 7 of the improved CTA in Table S2) for a chosen Co . For better
334
illustration, the quantified MFreg with Co of 10 ppm, 35 ppm, and 60 ppm (labelled at the top of the
335
matrix) are provided in Figure 6. Next, the maximum value in every column of MFreg is extracted and
336
stored as the regenerated water flowrate vector (Freg). For Co values of 10 ppm, 35 ppm and 60 ppm,
337
Freg values are identified as 50.90 t/h, 57.47 t/h and 33.33 t/h, respectively (see Figure 6).
338
In addition, extracting the associated concentration level (Ck) of every value in Freg creates the Pinch
339
1 concentration vector (CPinch 1). For instance, CPinch 1 for Co = 10 ppm is identified as 120 ppm
340
(corresponds to Freg=50.90 t/h). For Co = 35 ppm, CPinch 1 moves to 40 ppm (corresponds to Freg=57.47
341
t/h). However, CPinch 1 moves back to 120 ppm for Co = 60 ppm (corresponds to Freg = 33.33 t/h). This
342
means that Pinch 1 switches among the turning points of LCC, with the change of Co (this will be
343
discussed further in later section). The Pinch 1 concentration vector (CPinch 1) for three random
344
iterations is also shown in Figure 6.
C k − C o ,n
(5)
345 346 347
Figure 6. Regenerated water flowrate matrix, regenerated water flowrate vector, and Pinch 1 concentration vector for Co = 10 ppm, 35 ppm, and 60 ppm
348
On the other hand, Eq. 6 is a modified version of Eq. 4, where regeneration concentration matrix
349
MCreg is produced. As compared to Eq. 4, Co, Ffw, and Freg are replaced by Co,n (generated in step 1),
350
Ffw,n (generated in step 2), and Freg,n (generated via Eq. 5), respectively where “n” is the dimension of
351
the vectors.
352
MCreg,kn =
Cum.∆mk − F fw,n × Ck + Freg,n × Co,n Freg,n
, ∀n, k → Cpr ≤ Ck & ∀n ∈ N
(6)
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353
Specifically, every column of MCreg consists of the entries from column 8 of the improved CTA (Table
354
S2) for a chosen Co. The quantified MCreg for three random iterations with Co of 10 ppm, 35 ppm, and
355
60 ppm are provided in Figure 7.
356 357 358
Figure 7. Regeneration concentration matrix, regeneration concentration vector, and Pinch 2 concentration vector for Co = 10 ppm, 35 ppm, and 60 ppm.
359
Next, the maximum value in every column of MCreg is extracted and stored in the regeneration
360
concentration vector (Creg). For instance, Creg of 120 ppm, 85 ppm, and 120 ppm are determined for
361
Co of 10 ppm, 35 ppm, and 60 ppm, respectively (see Figure 7). The corresponding concentration for
362
every Co (designated as Pinch 2, i.e. CPinch 2) is also extracted and stored in the Pinch 2 concentration
363
vector (CPinch 2). As shown in Figure 7, CPinch 2 stays at 120 ppm for Co = 10, 35 and 60 ppm. In the later
364
section, the relationship between the entire range of Co and CPinch 2 will be discussed.
365
Step 6. Determination of wastewater flowrate (Fww) and concentration (Cww) for every Co
366
Flowrate (Fww) and concentration (Cww) of the wastewater streams can be readily calculated using
367
the flowrate and impurity balances in Eqs. 7 & 8, for every Co values. In Eq. 7, the only unknown
368
variable is Fww. At every iteration, Fww,n (where ‘n’ is the dimension of the vector) is calculated and
369
stored in the wastewater flowrate vector (Fww). Since Example 1 is a FL problem with no water
370
loss/gain for its water-using processes, the right hand side terms of Eq. 7 is calculated as zero. This
371
means that all the entries in Fww are identical to those in Ffw.
372
Since pure fresh water is used in this example, i.e. Cfw = 0, the only unknown variable in Eq. 7 is Cww,
373
which is calculated in every iteration. Populating the Cww values for all iteration will form the
374
wastewater concentration vector (Cww).
375
F fw,n − Fww,n = ∑ FSKj − ∑ FSRi , ∀ n ∈ N j
(7)
i
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376
Industrial & Engineering Chemistry Research
F fw,n × C fw − Fww,n × Cww,n − Freg,n × (Creg,n − Co,n ) =
∑F
SKjCSKj
j
377
−
∑F
SRiC SRi
, ∀n ∈ N
(8)
i
The general structure of the improved ACTA is summarised in Figure 8.
378 379
Figure 8. The general structure of the improved ACTA
380
By this end, the optimum feasible values of all key parameters in a regeneration-recycle network
381
(Ffw, Freg, Creg, Fww, and Cww) have been identified for every feasible Co. Following that, all feasible
382
range of freshwater (Ffw), regenerated water flowrates (Freg), and regeneration concentration (Creg)
383
are produced. WSL for every set of these values may then be constructed. Populating all WSLs hence
384
forms the feasible region, as shown in Figure 9. Note that the feasible region stays entirely below the
385
LCC. This graphical presentation verifies the accuracy of the improved ACTA for targeting a water
386
regeneration-recycle network.
387
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388 389 390
Figure 9. Demonstration of feasible region for Example 1
4. Interactions among important process parameters
391
With the improved ACTA procedure, the interactions among all key parameters of a water
392
regeneration network can now be examined. The correlation of the various Co values and their
393
corresponding optimum flowrates (i.e. Ffw, Freg and, Fww) and concentrations (i.e. Creg, Cww, CPinch 1,
394
CPinch 2) for Example 1 are shown in Figure 10.
395
(a)
396 397 398
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(b)
399 400
Figure 10. Interaction of (a) flowrates; (b) concentrations with varying Co values for Example 1
401
Apparently, the behaviour of the network with the change of Co is hardly predictable because of the
402
nonlinear relationship of the parameters. As a general trend, with the increase of Co (lower
403
regenerator performance), higher freshwater flowrate is required to satisfy the flowrate
404
requirement of the water network, which in turn leads to higher flowrate of wastewater (see Figure
405
10a). Since this example is a FL problem without water loss/gain, the wastewater flowrate is
406
identical to that of freshwater (hence the Ffw and Fww curves are overlapping in Figure 10a). On the
407
other hand, it is also observed that higher Co attributes to lower Cww (Figure 10b). This is because the
408
lower quality regenerated water provides less chance for the regenerated water to be
409
reused/recycled within the network (hence, higher flowrate leads to dilute wastewater). In
410
summary, the regeneration unit of higher performance results in lower freshwater demand. In
411
contrast, the regeneration cost will increase dramatically with the increase of its performance. The
412
trade-off analysis will be presented in the later parts of this paper.
413
Note that in the previous work, Xu et al. 23 attempted to relax the assumption for fixed Co in the
414
targeting stage of water regeneration-recycle system. However, the entire feasible region of Co was
415
not examined. More specifically, the Co values were only analysed up to 18 ppm. As having been
416
shown in this study, the Co values can be increased up to 120 ppm (with feasible values for other key
417
parameters). Note also that the results of this study are validated with those reported in Xu et al. 23.
418
The fresh water (Ffw) and wastewater (Freg) flowrates for Co values between 10 – 18 ppm are
419
completely in agreement with those reported by Xu et al. 23.
420
5. Pinch migration
421
The other valuable insight which is captured from Figure 10b is the pinch migration with the change
422
of Co value. The concentration of the first regeneration pinch point (Pinch 1) switches from 120 ppm Page 17 of 33 ACS Paragon Plus Environment
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Page 18 of 33
423
to 40 ppm at Co= 18.1 ppm. The same observation was also reported by Xu et al. 23. Pinch 1 then
424
switches back to its original concentration of 120 ppm at Co= 40 ppm and remains unchanged from
425
thereafter.
426
Note that the Pinch 2 may also switch between the tuning points of LCC with the increase of Co. This
427
is however not applicable for Example 1. The Co values at which the pinch migration takes place are
428
termed as transient post-regeneration concentration (Cotr), originally introduced by Parand et al. 22.
429
For Example 1, Figure 10b shows that Cotr takes place at 18.1 ppm and 40 ppm.
430
6. Economic evaluation of water regeneration system
431
It is a well-known fact that a regeneration unit that can produce higher quality regenerated water
432
(with lower Co) will lead to higher water saving, and in turn lower fresh water requirement and
433
waste disposal. Note however that the cost of regeneration unit increases dramatically with lower Co
434
value 29. Thus, the performance of regeneration unit has a dominant influence on the total cost of a
435
water regeneration-recycle system. However, there is not much attention being paid to this aspect.
436
The Co value has always been assumed to be the lowest concentration among all limiting
437
concentrations (except 0) for most of PA studies 3, 13, 19. With this assumption, the water
438
regeneration-recycle network may possibly be economically unfavourable due to high regeneration
439
cost. With the establishment of the interactions among various process parameters, the economic
440
performance of a water regeneration-recycle network may be incorporated during the targeting
441
stage. The economic trade-off between various operating (including freshwater supply and waste
442
disposal costs) and regeneration costs can then be explored. In the following section, the various
443
cost functions of a water regeneration-recycle network are established, which are then applied for
444
Example 1.
445
6.1. Cost functions for a water regeneration-recycle network
446
A total water system comprises the water utilisation processes, water regeneration system, and end-
447
of-pipe wastewater treatment facilities 10. The total operating cost (CT) given in Eq. 9 is broken down
448
to the freshwater cost, regeneration cost, and waste disposal cost, respectively.
449
CT = CF + CR + CD
450
where:
451
CF = u fw × Ffw
(9)
(10)
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γ
452
C max CR = α × o Co
453
CD = ( A + ( B ×
454
Eq. 10 considers the operating cost of freshwater (CF), which is a linear function of its unit cost (ufw).
455
Eq. 11 shows the expression for regeneration operating cost (CR) taken from Feng et al.
456
shown, CR is function of Comax , which has been assumed arbitrarily by Feng et al.29 without
457
systematic analysis. Thus, the final result obtained in the work of Feng et al.29 could be sub-optimal.
458
The improved ACTA is capable of identifying this parameter very accurately and this crucial for
459
economic analysis. In Eq. 12, the operating cost of wastewater treatment (CD) is mainly based on
460
primary treatment (Mogden Formula).30
461
× Freg β
(11)
Cww )) × Fww Ss
(12)
29
As
6.2. Example 1 revisited - total cost evaluation
462
With the identification of feasible range for Ffw, Freg, Fww, and Cww through improved ACTA for
463
Example 1, the objective here is to determine the minimum CT of the water network (given as Eq. 9).
464
Doing so also means the determination of the optimum Co value for the water regeneration-recycle
465
network. It is assumed that the unit cost of fresh water is taken as 1$/t, while the annual operating
466
hours is taken as 8600 h/y. Note that all cost functions and coefficients are given in US dollar. The
467
coefficients of β and γ in Eq. 11 are taken from Feng et al. 29 to be 0.14 and 1.75. The α sets at 10 and
468
CR gives the cost in k$/ y. The Comax value in Eq. 11 was taken as 120 ppm, identified in preceding
469
sections.
470
For Eq. 12, the coefficients A, B and Ss are taken from Kim 30 with the values of 34 ¢/t, 23 ¢/t and 336
471
ppm respectively. Note that CD is also calculated in k$/y.
472
Plotting the various cost elements with the varying Co resulted with the graphs shown in Figure 11.
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Page 20 of 33
473 474
Figure 11. Interaction among costs for Example 1
475
The economic optimum scenario with minimum CT of 778.3 k$/y is identified at Co=25 ppm. For Co
476
values lower than 25 ppm, CT increases due to higher contribution of regeneration cost. For Co value
477
beyond 25 ppm, fresh water and waste discharge costs have dominant influence over the total cost.
478
Detailed results for the example is summarised in Table 3 (along with direct reuse/recycle scenario).
479
In order to compare with the original solution by Xu et al. 23, a scenario with Co=18 ppm is also
480
solved, with results summarised in Table 3.
481
Table 3. Results comparison for three different scenarios of water network for Example 1
Scenarios
Reuse/recycle
Ffw (t/h) Fww (t/h) Freg (t/h) Cww (ppm) Co (ppm) CF (k$/y) CD (k$/y) CR (k$/y) CT (k$/y)
86.67 86.67 123.46 745.3 316 1061.3
Regeneration-recycle with Co=18 ppm from ref. 23 40 40 54.9 127.5 18 344 146.8 484.6 975.4
Regeneration-recycle with Co= 25 ppm (this work) 40 40 80 127.5 25 344 146.8 287.5 778.3
482 483
As shown in Table 3, both scenarios with water regeneration-recycle scheme achieve lower CT and
484
also the lower freshwater demand, as compared to direct reuse/recycle scenario. Note that the
485
requirement for freshwater for both regeneration scenarios are identical. However, lower CT is
486
achieved for the case with optimum Co (25 ppm) identified in this work, since this scenario has a
487
regeneration unit with lower performance, and hence lower regeneration cost. The network for
488
this case may be designed using the enhanced nearest neighbour algorithm (NNA)31, as shown using
489
the matching matrix in Figure 12. Notice that the outlet (Regout) and inlet (Regin) regeneration
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Industrial & Engineering Chemistry Research
490
streams are considered as source and sink, respectively. To design the network, the sinks are
491
satisfied from the lowest to highest contaminant concentration. The first regeneration pinch point
492
(i.e. Pinch 1) concentration has been identified at 40 ppm. The forbidden matches across the pinch
493
point are shown as shaded cells. Local Recycle (LR) matches are identified and eliminated to simplify
494
the network structure, following the enhanced NNA procedure.31
FSRi(t/h)
495 496 497
CSRi(ppm)
FSKj (t/h)
40
70
10
120 45
80
40
CSKj (ppm)
0
25
25
90 40
95
127.5
SK1
SK2
SK3
SK4
Regin
WW
70
10 45
25 40
75 LR
15
SKj SRi
40
0
FW
80 70 40
25 40 120
Regout SR2 SR1
120 45
120
SR4
10
150
SR3
40
30 10
Figure 12. Network design presented as matching matrix for Example 1 with the regeneration unit of Co = 25 ppm (updated limiting data are shown as strikethrough font)
7. Regeneration unit of removal ratio (RR) type
498
Apart from the regeneration unit of fixed Co type, another important category of regeneration unit is
499
the removal ratio (RR) type. The RR is first reported in the seminal work of Wang and Smith 3 with
500
Eq. 13.
501
RR =
502
Wang and Smith 3 applied the conventional PA technique to identify the flowrate targets for a water
503
regeneration-recycle network, when regeneration unit of known RR is given. However, the case
504
study presented was a simple single pinch problem. This means that the regeneration concentration
505
(Creg) stays constant regardless of the Co value. Note however that the existence of two regeneration
506
pinch points is common for most water regeneration-recycle systems. For those cases, the change of
507
Co will affect the optimum Creg, as has been shown in previous sections. With the establishment of
508
relationship between Co and Creg, one may now determine the optimum RR for a water regeneration-
509
recycle network. Note that the identification of this relationship is case dependant, as Co and Creg
510
have non-linear relationship for most water regeneration-recycle systems. In this study, since the
511
correlation between Co and Creg is explicitly determined through the improved ACTA, the feasible
512
range of RR for a particular network can also be obtained.
Creg − Co
(13)
Creg
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513
Page 22 of 33
7.1. Example 1 revisited - regeneration unit of RR type
514
Example 1 is revisited here. The feasible range of Co has been produced via Eq. 1, while the optimum
515
value for Creg has been obtained in step 5 of improved ACTA for every Co value. Now, the optimum RR
516
for every Co can be determined via Eq. 13. The relationship between Co and RR for Example 1 is
517
examined and showed in Figure 13.
518 519
Figure 13. Interaction between RR and Co for Example 1
520
Interestingly, as revealed, this graph has discontinuity with partial overlap. This means that two
521
different Co values result with the same RR index within the overlapping region, i.e. [0.50, 0.67].
522
Thus, for instance, the Co values of 31 ppm and 42 ppm are both determined for a RR value of 0.65.
523
In other words, two structurally different water regeneration-recycle networks could be constructed
524
when the regeneration unit with RR of 0.65 is used. The selection of the final network design may
525
be done by taking other considerations into account, e.g. network complexity, controllability,
526
economic feasibility (e.g. cost evaluation scheme in previous section), etc. It is worth mentioning
527
that the existence of different Co values for the same RR may not applied for some networks, as it is
528
fully dependent on the limiting water data.
529
From Figure 13, it can also be observed a linear relationship exists between Co and RR for Co ≥ 40.1
530
ppm. On the other hand, Figure 10 shows that the Creg value stays identical for Co ≥ 40.1 ppm. This
531
means that Eq. 13 represents a linear function of Co and RR.
532
At this end, the designer can make use of Figures 10 and 13 to determine the various water network
533
targets. For a given RR index, the corresponding Co(s) is firstly identified from Figure 13. With this Co
534
value, Figure 10 provides the corresponding values of other key parameters. For example, assuming
535
that a regeneration unit with RR = 0.65 is available. Figure 13 determines that the Co values
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Industrial & Engineering Chemistry Research
536
correspond to 31 ppm and 42 ppm. Figure 10 is next referred. Magnified version of Figure 10
537
around Co values of 31 ppm and 42 ppm is given in Figure 14 for clear depiction of targeted values. (a)
538
(b)
539 540 541
Figure 14. Interactions among process parameters with Co values for Example 1 (magnified version): (a) flowrates (b) concentrations
542
For Co of 31 ppm, the Ffw and Fww targets are found as 55.48 t/h, while the Freg is determined as
543
64.52 t/h (Figure 14a). Figure 14b next determines the Creg and Cww as 89 ppm and 125.4 ppm.
544
Figure 14b also determines that the Pinch 1 concentration falls at 40 ppm, while the Pinch 2
545
concentration is located at 120 ppm. On the other hand, for Co of 42 ppm, the Ffw and Fww targets are
546
both found as 70 t/h, while Freg is determined as 25.64 t/h (Figure 14a). Creg and Cww are identified as
547
120 pm and 124.3 ppm from Figure 14b. The latter also shows that both Cpinch 1 and Cpinch 2 locate at
548
the same concentration of 120 ppm.
549
The network designs for both of these systems are illustrated in Figure 15. The regeneration unit for
550
both of these networks has an RR value of 0.65, but with different Co values of 31 ppm (Figure 15a)
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Page 24 of 33
551
and 42 ppm (Figure 15b), respectively. Note that the original limiting data (not the updated ones
552
used in Step 4 of the improved ACTA targeting procedure) should be used for the network design.
553
(a) Co=31 ppm
554
FSKj (t/h)
40
70
10
64.52
120 45
55.48
CSKj (ppm)
0
25
25
89
90 40
125.4
SK1
SK2
SK3
Regin
SK4
WW
40
13.55
1.93
56.45
8.07 25 39.52
45
SKj
FSRi(t/h)
CSRi(ppm)
55.48
0
FW
64.52 70 40 120 45
31 40 120 120
Regout SR2 SR1 SR4
150
SR3
10 (b) Co=42 ppm
SRi
75 LR
0.48 45 10
FSKj (t/h)
40
70 26.25
10
120 85.64
25.64
70
CSKj (ppm)
0
25 0
25
90 77.96
120
124.3
SK1
SK2
SK3
SK4
Regin
WW
40
26.25
3.75
43.75 LR
6.25
25.64
60
SKj
FSRi(t/h)
CSRi(ppm)
70
0
FW
70 26.25 25.64 40
40 42 120
SR2 Regout SR1
120 85.64
120
SR4
10
150
SR3
SRi
20 25.64 40 34.36 LR
10
555 556
Figure 15. Network design presented as matching matrix for Example 1 with regeneration unit of RR = 0.65: (a) Co=31 ppm (b) Co=42 ppm
557
For the network in Figure 15a, the outlet streams of process 1 and 2 (SR2 and SR1) are purified in the
558
regeneration unit (Regin) before partially recycled back to the process 2 (SK2). This network has the
559
total of 11 matches. For the network in Figure 15b, the process 4 outlet stream (SR4) is purified by
560
regeneration unit and totally recycled back to this process. This network shows a lower number of
561
matches compared to the network in Figure 15a.
562
8.
Example 2 – Fixed flowrate problem
563
A FF problem is solved here to demonstrate the applicability of the improved ACTA targeting
564
procedure. The water recycling problem in a Kraft pulping process from El-Halwagi 32 (Example 2) is
565
illustrated here, with limiting water data shown in Table 4. This FF case currently requires 640.2 t/h
566
of freshwater, and generates 742.16 t/h of wastewater. By implementing the reuse/recycle scheme, Page 24 of 33 ACS Paragon Plus Environment
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Industrial & Engineering Chemistry Research
567
the freshwater and wastewater flowrates are identified as 89.90 t/h and 191.86 t/h, respectively,
568
where the pinch point is determined at 30 ppm 18. The possibility of performing regeneration-
569
recycling scheme is analysed next.
570
Table 4. Limiting data for Example 232
SKj 1 2 3 ∑FSKj SRi 1 2 3 4 5 6 7 8 9 ∑FSRi
FSKj (t/h) 467 465 8.2 640.2 FSRi (t/h) 12.98 9.7 10.78 116.5 48 52 52.2 300 140 742.16
CSKj (ppm) 20 20 10 CSRi (ppm) 419 16248 9900 20 233 311 20 30 15
571 572
Following the improved ACTA procedure, the relationship between RR and Co is depicted in Figure
573
16. Assuming that a regeneration unit of RR = 0.76 is used, the corresponding Co value is hence
574
identified as 15 ppm.
575 576
Figure 16. Relationship between Co and RR for Example 2
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(a)
577 (b)
578
(c)
579 580 581
Figure 17. Interaction among process parameters with Co values for Example 2 (a) flowrates (b) contaminant concentrations (c) wastewater contaminant concentration
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Industrial & Engineering Chemistry Research
582
The corresponding flowrates and contaminant concentrations for the Co ranging between 0 and 30
583
ppm (reuse/recycle pinch point) are shown in Figure 17. For Co of 15 ppm, Figure 17a identifies Ffw,
584
Freg, and Fww as 2.73 t/h, 174.3 t/h and 104.7 t/h, respectively. The corresponding Creg, CPinch 1, and
585
CPinch 2 values are determined as 63.5 ppm, 30 ppm, and 233 ppm, respectively from Figure 17b,
586
while Figure 17c identifies Cww at 2774 ppm. The same targeting results are also reported in Ng et al.
587
18
588
regeneration unit with Co ≤ 10 ppm is used. The same observation is also reported in Ng et al. 18.
589
It is worth mentioning that improved ACTA is also applicable for FF problem with total water loss.
590
For this kind of problem, the possibility for achieving Zero Liquid Discharge (ZLD) network should be
591
analysed before the improved ACTA targeting procedure is carried out. The detailed procedure for
592
analysing a ZLD network is reported in Parand et al.27 .
593
Conclusions
594
An improved Automated Composite Table Algorithm (ACTA) has been developed in this work. The
595
improved ACTA is used for the targeting of water regeneration-recycle network, by relaxing the
596
assumption of fixed post-regeneration concentration (Co) that has been the main assumption in most
597
previous works. Hence, the correlations among various key parameters of a regeneration-recycle
598
water network (i.e. freshwater, regenerated water, and wastewater flowrates, and, pre-
599
regeneration, regeneration pinch concentrations) with the change of Co have been investigated. The
600
contribution of key parameters toward the economic performance has been studied. The latter
601
provides an opportunity to determine the economic optimum scenario at the targeting stage which
602
was lagged behind for most reported PA works. The improved ACTA is capable of identifying key
603
parameters for both types of regeneration units (i.e. fixed Co and fixed RR), and also for both fixed
604
load and fixed flowrate problems. The ACTA is implemented using MATLAB and can deal with
605
medium to large scale problems. It is, however, limited to single contaminant problems, similar to
606
most of PA methods. Further extension may explore the use of partitioning regeneration unit for
607
water purification. Besides, future work may consider the heat integrated water network.
608
Supporting Information
609
This information is available free of charge via the Internet at http://pubs.acs.org/ which include:
610
Table S1 – CTA for targeting minimum freshwater flowrate with Co=1 ppm, and Table S2
611
Determination of Freg and Creg with improved CTA for Co=1 ppm.
. As depicted in Figure 17a, this network encounters zero freshwater feed (0 ppm) when
612 613 Page 27 of 33 ACS Paragon Plus Environment
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614
Acknowledgment
615
The University of Nottingham Malaysia Campus and Curtin University Matched Funding Initiatives
616
on the support of this research work is gratefully acknowledged.
617
Nomenclatures
618
Abbreviations
619 620
ACTA
Automated Composite Table Algorithm
CTA
Composite Table Algorithm
CMA
Composite Matrix Analysis
CTP
Convex Turning Point
FF
Fixed Flow rate
FL
Fixed Load
LCC
Limiting Composite Curve
LR
Local Recycle
MRPD
Material Recovery Pinch Diagram
NNA
Nearest Neighbour Algorithm
RR
Removal Ratio
SK
Sink
SR
Source
WCA
Water Cascade Analysis
WSL
Water Supply Line
ZLD
Zero Liquid Discharge
Symbols Co
post-regeneration concentration
Cotr
transient post-regeneration concentration
CCTP
convex turning point concentration
CD
disposal charge
CF
freshwater supply cost
Cfw
freshwater contaminant concentration
Cint
interim concentration
Ck
concentration level
Cpr
reuse/recycle pinch concentration
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CR
regeneration cost
Creg
pre-regeneration concentration
CSKj
concentration of process sink
CSRi
concentration of process source
CT
total cost
Cum.Δm
cumulative mass load
Cww
wastewater contaminant concentration
Ffw
freshwater flowrate
Freg
regenerated water flowrate
FSKj
flowrate of process sink
FSRi
flowrate of process source
Fww
wastewater flowrate
MCreg
regeneration concentration matrix
MFreg
regenerated water flowrate matrix
SK
sink
SR
source
Δmk
interval impurity load
621 622
Appendix – numerical procedure for step 3 of the improved ACTA
623
Since the improved ACTA procedure was implemented using MATLAB, numerical procedure is
624
needed for step 3, in order to perform the mass load feasibility check. First, the location of CTP
625
should be identified automatically. Next, it should be determined if the infeasible pocket exists
626
numerically. These numerical procedures are outlined as follows. Example 1 is used for the
627
description.
628
Derivation of limiting freshwater supply line formula for every Co
629
The formula of the limiting freshwater supply line is readily derived. For instance, for line AB in
630
Figure 3, the coordinates of points A and B are determined at each iteration using Eq. A1 (Cfw = 0
631
ppm, assuming that pure fresh water is used). Furthermore, cumulative mass load (Cum. Δmk)
632
correspondent to the first concentration level is also zero (Table S1). Hence, the coordinates of point
633
A are zeroes for all iterations. On the other hand, coordinates of point B are related to Co (ranging
634
from 1 to 120 ppm) and Ffw; the latter is determined in step 2 of the improved ACTA for every Co
635
value.
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636
A=
Cum.∆mk ∀k = 1 C fw
Bn =
(Co,n − C fw ) × F fw,n Co,n
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∀n ∈ N
(A1)
637 638 639
Construction of LCC segment formula
640
As illustrated in Figure 4, when Co passes the CTP, the limiting freshwater supply line (AB) crosses the
641
segment of the LCC located below the CTP. Thus, it is possible to relate the LCC segment formula to
642
the Co.
643
Having introduced line GH as an LCC segment, the coordinates of points G and H are identified using
644
Eq. A2. When the Co shifts from one LCC segment to another, the line formula derived via Eq. A2 is
645
exactly the segment below the one which the Co is currently moving on. For better illustration,
646
consider Figure 4 as an example. The Co is located between 40 and 90 ppm. Hence, points G and H
647
are derived with coordinates of (1,25) and of (2.8, 40), respectively, following Eq. A2.
648
Cum .∆ m k − 2 Cum . ∆ m k − 1 Hn = G n = Ck −2 C k −1 n , k C C & n N & k ∀ → = ∀ ∈ ∀ >2 o,n k
(A2)
649 650
Next, the intersection between limiting freshwater supply line (AB) and LCC segment (GH) will be
651
found at each Co value. If the intersection point is between point G and H, this means that the
652
limiting freshwater supply line is located above the LCC, which implies a mass load infeasibility. For
653
the case in Figure 4, all limiting freshwater supply lines until the Co of 40 ppm are feasible. For one
654
incremental step forward (i.e. Co=40.1 ppm), the limiting freshwater supply line intersects with LCC
655
segment at coordinates of (2.79, 39.96) which is between points G (1,25) and H (2.8,40). Since this
656
condition takes place at Co= 40.1 ppm, the algorithm identifies the concentration of CTP at previous
657
iteration (i.e. CCTP= 40 ppm).
658
Determination of the limiting freshwater supply line formula touches the CTP
659
In Figure 5, line A'B' represents the extended limiting freshwater supply line that touches the CTP.
660
Coordinates of points A’ and B’ can be determined using Eq. A3. This line should intersect with the
661
LCC below the reuse/recycle pinch, to allow the LCC to be modified. Thus, the end point (B’) is
662
related to reuse/recycle pinch concentration (Cpr) and the flowrate of limiting freshwater supply line
663
at CTP (determined in step 2). For the case in Figure 5, A’ is defined as (0,0) and B’ is determined as
664
(8.4, 120) using Eq. A3. Page 30 of 33 ACS Paragon Plus Environment
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Industrial & Engineering Chemistry Research
A′ =
Cum.∆mk ∀k = 1 C fw
Bn ′ =
(C pr − C fw ) × F fw,n C pr
∀n → Co,n = CCTP
(A3)
666 667 668
Construction of the LCC segment formula above the CTP
669
In Figure 5, line G'H' is the representation of every LCC segment located above the CTP but below
670
the reuse/recycle pinch point. The coordinates of points G’ and H’ can be determined using Eq. A4.
671
For Example 1 two LCC segments are identified. Segment 1 has the starting point of G’ at (2.8, 40)
672
and ending point of H’ at (5.3, 90). On the other hand, segment 2 has the starting point of G’ at (5.3,
673
90) and the ending point of H’ at (10.4, 120).
674
Cum . ∆ m k Cum . ∆ m k + 1 H n′ = G n′ = Ck C k +1 ∀ n , k → C o , n = C CTP & C o , n ≤ C k ≤ C pr
675
Next, the intersection between line A’B’ and all G’H’ lines is identified. The intersection point should
676
be between point G’ and point H’ to construct the updated LCC. If this condition does not hold, the
677
concentration of CTP shall take the maximum Co value and the algorithm moves to steps 5 and 6
678
(explained in the body of this paper) to identify the other key parameters for the last iteration.
679
For the case in Figure 5, the intersection point between lines A’B’ and G’H’ is found at coordinates of
680
(7,100). This point locates on one of the LCC segments below the pinch point. This point is termed as
681
the interim point, as outlined in step 3.
682
References
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TOC graphic
742 743
744 745
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