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Integrating Hybrid Life Cycle Assessment with Multiobjective Optimization: A Modeling Framework Dajun Yue, Shyama Pandya, and Fengqi You Environ. Sci. Technol., Just Accepted Manuscript • DOI: 10.1021/acs.est.5b04279 • Publication Date (Web): 11 Jan 2016 Downloaded from http://pubs.acs.org on January 18, 2016

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Integrating Hybrid Life Cycle Assessment with

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Multi-objective Optimization: A Modeling

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Framework

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Dajun Yue, Shyama Pandya, and Fengqi You*

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Department of Chemical and Biological Engineering, Northwestern University, Evanston,

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Illinois 60208, United States

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ABSTRACT

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By combining life cycle assessment (LCA) with multi-objective optimization (MOO), the life

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cycle optimization (LCO) framework holds the promise not only to evaluate the environmental

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impacts for a given product but also to compare different alternatives and identify both

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ecologically and economically better decisions. Despite the recent methodological developments

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in LCA, most LCO applications are developed upon process-based LCA, which results in system

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boundary truncation and underestimation of the true impact. In this study, we propose a

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comprehensive LCO framework that seamlessly integrates MOO with integrated hybrid LCA. It

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quantifies both direct and indirect environmental impacts and incorporates them into the decision

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making process in addition to the more traditional economic criteria. The proposed LCO

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framework is demonstrated through an application on sustainable design of a potential bio-

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ethanol supply chain in the UK. Results indicate that the proposed hybrid LCO framework

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identifies a considerable amount of indirect greenhouse gas emissions (up to 58.4%) that are

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essentially ignored in process-based LCO. Among the biomass feedstock options considered,

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using woody biomass for bio-ethanol production would be the most preferable choice from a

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climate perspective, while the mixed use of wheat and wheat straw as feedstocks would be the

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most cost-effective one.

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TOC/Abstract Art

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INTRODUCTION

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Life cycle assessment (LCA) is a well-recognized tool for evaluating the environmental

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impacts throughout a product’s life cycle.1 From cradle to grave, a product’s life cycle includes

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sourcing of raw materials, logistics, production and use phases, and end-of-life disposal.2 LCA

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has been widely used to develop sustainability strategies in both the public and private sectors.3

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Many companies and researchers use LCA to compare the sustainability performances of

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different alternatives and to provide guidance in long-term planning and policy making (e.g.,

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Eco-Efficiency Analysis by BASF).2,

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alternatives, performing LCA for each alternative, comparing their indicators of sustainability

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(e.g., global warming potential5 and Eco-Indicator 996), and then making the choice (e.g.,

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selection of manufacturing technology and feedstock) according to designated sustainability

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The typical procedure is enumerating all potential

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criteria.7 However, this approach becomes intractable when a large or even infinite number of

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alternatives are involved.8 Aiming to tackle this challenge, life cycle optimization (LCO)

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framework was introduced, and the importance of a more extensive use of computational

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optimization tools in environmentally conscious decision making was established.9 Optimization

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allows us to incorporate all potential decisions (e.g., selection of manufacturing technology,

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choice of plant location, and capacity of manufacturing process) into a mathematical model that

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consists of multiple objectives (e.g., cost, profit, cumulative energy consumption, emissions, and

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water consumption) and constraints (e.g., mass balance, stoichiometry, product specification, and

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resource availability).10-12 Furthermore, the technique significantly facilitates the search for the

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desired sustainable solution by employing optimization algorithms.13-16 Therefore, the

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combination of LCA with multi-objective optimization (MOO) allows one to conduct a thorough

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analysis of all potential alternatives and automatically identify both ecologically and

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economically better decisions within the LCO framework.17-18

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Three common LCA methodologies can be potentially employed in an LCO study, namely

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process-based, input-output (IO)-based, and hybrid LCA.19-21 Most LCO applications in the

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literature are developed upon the traditional process-based LCA for life cycle inventory (LCI)

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compilation.22 The initiative to incorporate LCA objectives in process design and improvement

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was taken by Fava23 and Azapagic.24-25 Following their idea, many researchers have therefore

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undertaken process-based LCO studies aiming to simultaneously optimize both environmental

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and economic performances for systems at various scales.26-29 Although process-based LCA

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provides more accurate and detailed process information, this “bottom-up” method results in

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system boundary truncation and underestimation of the true impact.21 Since a large portion of the

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life cycle is neglected due to the truncated system boundary, any decisions made in process-

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based LCO studies are based on incomplete life cycle information and may not be truly

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optimal.22 In contrast, IO-based LCA is a “top-down” method that relies on coarse and simplified

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models derived from highly aggregated empirical data.30 It utilizes regional/national economic

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input-output (EIO) data coupled with averaged sectoral environmental impact factors.31 While

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IO-based LCA has an expanded life cycle boundary, it lacks details at the process scale.

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Therefore, LCO studies based on IO-based LCA method are restricted to macroscopic analysis at

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national or global levels.32-33 Hybrid LCA has been proposed to achieve a systematically

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complete LCA system and retain process specificity.21 It combines the strengths of both process-

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based LCA and IO-based LCA and addresses their respective shortcomings, thus enabling us to

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quantify both direct and indirect environmental impacts in a detailed and comprehensive

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manner.19-20, 34

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So far, sustainability studies using hybrid LCA focused solely on analysis with static LCI data.

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Consequently, all processes and exchanges in the system are pre-determined and fixed.22

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However, processes to be deployed in practice are influenced by many factors, e.g., availability

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of feedstock, acceptance by market, economies of scale, and access to transportation modes.35

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Different decisions in various parts of a system can lead to distinct LCIs. In traditional process-

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based LCO studies, such changes are captured using fundamental process and supply chain

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models, but these benefits do not automatically extend to hybrid LCO. In a hybrid LCO study,

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the interactions do not merely exist within the process system boundary, but also among the

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numerous industrial sectors in the economy and between the processes and sectors across the

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process system boundary.

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Very few sustainability studies have attempted to integrate all-encompassing flexible LCIs

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with MOO. As a pioneer in this area, Bakshi et al.22, 36 proposed a “Process-to-Planet” modeling

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framework that applies hybrid LCA to sustainable process design problems from an LCA

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perspective. They developed an integrated matrix formulation that incorporates models at the

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equipment, value chain, and economy scales in a consistent manner. A case study on bio-ethanol

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plant design was also provided. Our goal is to develop a general hybrid LCO modelling

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framework that allows for thorough analysis of all alternatives and assists in optimal decision-

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making based on a complete life cycle system. This work occupies a niche between the works

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that combine MOO with process-based LCA and the works that use single-objective

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optimization with hybrid LCA. With the aid of mathematical programming methods, the

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proposed framework is applied to a supply chain design problem, which can be closely related to

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existing works on process design and process improvement problems.24,

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integrated hybrid LCA method for the LCA component in our LCO framework, which is

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regarded as the state of the art in LCA and has a consistent and robust mathematical

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framework.42 Overview of integrated hybrid LCA along with detailed mathematical models of

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the hybrid LCO framework are presented in the next section. We present an application on

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sustainable design of a potential bio-ethanol supply chain in the UK based on a multi-regional

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input-output (MRIO) model.43 Decisions such as facility location, technology selection,

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production planning, and logistics are optimized by simultaneously minimizing the total project

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cost and minimizing the sum of direct and indirect life cycle greenhouse gas (GHG) emissions.

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To the best of our knowledge, this is the first time that a hybrid LCO study has been conducted

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for sustainable supply chain design.

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We employ

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2.1

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MATERIALS AND METHODS Integrated Hybrid LCA.

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Since its definition by Suh34 and Suh and Huppes,21 many researchers have contributed to the

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development and application of integrated hybrid LCA.42-44 On one hand, integrated hybrid LCA

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uses process-based LCA methodology to capture key life cycle processes. On the other hand, it

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complements the truncated process system boundary with IO-based LCA methods that include

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the macroeconomic system within which the processes operate. The resulting hybrid LCI,

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therefore, retains the level of detail and specificity from process-based LCA and has the

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completeness of an economy-wide system boundary from IO-based LCA.21 Exchanges within

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the process system boundary are represented by a process matrix that describes the inputs of

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goods to processes in various physical units. Exchanges within the economy are represented by

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the direct requirements matrix that describes interdependencies among various industrial sectors

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in monetary units at a highly aggregated level.45 The direct requirements matrix can be derived

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from regional/national EIO models consisting of a transaction matrix, a value added matrix, and

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a final demand vector.46-47 Throughout the rest of this article, we will refer to the two systems

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above as the process system and the IO system, respectively. Exchanges across the process and

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IO systems are captured in upstream and downstream cutoffs matrices.34 Upstream cutoff flows

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are inputs to the process system that are produced by industrial sectors in the IO system. These

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flows are typically specified in monetary units. Downstream cutoff flows are outputs from the

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process system that are consumed by industrial sectors in the IO system. These flows are

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typically specified in various physical units. Market price data are used to convert physical units

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of flows originating from the process system and monetary units of expenditures originating

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from the IO system. Let m be the number of processes/goods in the process system and n be the

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number of industrial sectors in the IO system. Using a matrix notation, the mathematical basis

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for integrated hybrid LCA is given by:

Full Environmental Impact = e p

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A eio   p  −Cu

−1

−Cd   y  I − Aio   0 

(1)

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where Ap is a square matrix representing the process inventory with dimension m × m ; Aio is the

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direct requirements matrix with dimension n × n ; I is an identity matrix with dimension n × n ;

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Cu is a matrix representation of upstream cutoffs to the process system with dimension n × m ;

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C d is a matrix representation of downstream cutoffs to the process system with dimension m × n

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; e p is the process inventory environmental extension vector with dimension 1 × m ; eio is the IO

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environmental extension vector with dimension 1 × n ; [ y 0 ] is the functional unit column with

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dimension ( m + n ) ×1 , where all entries are 0 except for final products from the process system

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y.

T

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Using a single direct requirements matrix for Aio is known as the industry-industry approach.

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This approach does not account for sectors that produce more than one commodity. In addition,

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supply and use tables (SUTs) can be used to construct Aio , which is known as the commodity-

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industry approach that provides greater flexibility in dealing with multiproduct processes.34, 42-43

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Furthermore, MRIO model can be used for Aio to represent the global economy. Typically, a

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two-region model is formulated including the region where our processes operate and the other

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region called Rest of the World (ROW).42-43, 48 The negative sign assigned to Cu and Cd indicate

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the direction of cutoff flows across the process system boundary. Detailed procedures for

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constructing Cu and Cd along with techniques to avoid double counting can be found in the

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literature.43-44, 49-51

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For interested readers, we have proposed an illustrative example that compares the results of

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process-based LCA and integrated hybrid LCA. The problem is adapted from the classic toaster

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example by Suh.34 Through the illustrative example, we demonstrate that ignoring the indirect

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impacts from the IO system may cause a considerable underestimation of the true impacts. A

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hybrid LCA model based on complete life cycle information is considered more appropriate for

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decision making.

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2.2

Integrated Hybrid LCO

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Consistent with the structure of integrated hybrid LCA, the proposed integrated hybrid LCO

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model also consists of four parts: process system, IO system, upstream cutoffs, and downstream

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cutoffs. As illustrated in Figure 1, the outer layer represents the IO system, and the inner layer

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represents the process system. The dashed circle represents the incomplete process system

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boundary, across which exchanges between the two systems are depicted. Upstream cutoffs are

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denoted by the thick arrows originating from the IO system on the left. Downstream cutoffs are

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denoted by the thick arrows originating from the process system on the right. Integration of the

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four parts thus provides us with a precise and comprehensive framework for decision making.

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Unlike the static LCI in LCA studies, all four parts of the proposed integrated hybrid LCO model

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are flexible. Different decisions made regarding the deployment of processes can lead to varying

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hybrid LCIs. This relationship is modelled by “activities” in the process system, which is defined

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as a flexible process that involves decision making. For example, a transportation activity can

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involve the selection of transportation modes and choice of shipping routes. Decisions made in

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activities directly influence the process LCI, and indirectly affect exchanges between the process

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and IO systems and exchanges among different industrial sectors in the IO system. Once the

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decisions in all activities have been made the hybrid LCI would be fixed, and the full

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environmental impact could be measured based on this hybrid LCI. The goal of this framework

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is to use mathematical programming methods to help make optimal decisions in terms of

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designated sustainability objectives while satisfying all specified constraints. This is achieved by

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combining integrated hybrid LCA with MOO, which allows simultaneous optimization under

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multiple sustainability objectives. In contrast to single-objective optimization, MOO leads to a

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series of Pareto-optimal solutions rather than a single optimal solution. These solutions possess

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the property that none of their objectives can be unilaterally improved without worsening at least

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one of the other objectives. In this regard, all of these solutions are optimal but emphasize

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different criteria.52-53 A Pareto frontier can be obtained by plotting all Pareto-optimal solutions.

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Solutions on one side of the Pareto frontier are suboptimal, and solutions on the other side are

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unattainable. Therefore, solutions on the frontier indicate the best one can achieve in a

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sustainable design or improvement problem. It is worth noting that we can set the baseline to

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zero for design problems since the system is non-existent before the design is implemented. In

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contrast, the choice of a baseline is critical to the improvement problems, where the alternative

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solutions must be compared with the original system to evaluate the impact of changes.

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Figure 1. Illustration of Hybrid LCO framework

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Instead of building our modelling framework using matrix formulation from an LCA

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perspective, we devise a general optimization model that seamlessly integrates the process

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system, IO system, and upstream and downstream cutoffs. This model allows us to describe

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complex systems with mathematical equations and parameters and to represent important

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decisions with different types of variables. As shown below, the environmental and economic

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objectives are given by (2) and (3); the process system is modelled by (4); the upstream cutoffs

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are calculated by (5); the IO system is modelled by (6); and the downstream cutoffs are

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calculated by (7). For clarification, all variables are denoted by upper-case letters and all indices

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and parameters with fixed values are denoted by lower-case letters.

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min

Objenv = ∑ emp Qm + ∑ enio Pn

(2)

Objecon = ∑ g l ( X l , Yl )

(3)

m

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min

n

l

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s.t.

Qm = ∑ f l , m ( X l , Yl ), ∀m

(4)

U n = ∑ cn , m pm Qm , ∀n, m ∈ In

(5)

Pn − ∑ an , n ' Pn ' ≥ U n , ∀n

(6)

Qm ≥ rm + ∑ d m , n Pn , ∀m ∈ Out

(7)

l

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m

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n'

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n

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In the above integrated hybrid LCO model, we index the goods/processes in the process

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system by m and the industrial sectors in the IO system by n. The various activities within the

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process system are indexed by l. The environmental objective (2) minimizes the sum of direct

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and indirect environmental impacts from the process and IO systems, where emp and enio are the

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environmental impact factors of process m and industrial sector n, respectively. Qm is the total

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net input/output of good/process m from all activities in the process system. Pn is the total output

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of sector n. The economic objective (3) minimizes the total project cost, including the costs from

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all activities. gl ( ⋅) is the cost evaluation function for activity l, which depends on the value of

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continuous variables X l and integer variables Yl . Continuous variables X l can be used to

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model decisions on quantities of raw material acquisition and product sales, transportation flows,

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capacity of manufacturing processes, level of inventory, etc. Integer variables Yl can be used to

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model decisions on the selection of facility location, manufacturing technology, capacity level,

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transportation mode, etc. Constraint (4) indicates that the process LCIs are dependent on the

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decisions in all activities, where fl ,m ( ⋅) stands for the mapping between process m and the

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decisions in activity l. Constraint (5) quantifies the upstream cutoffs originating from the IO

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system to the process system. We use m ∈ In to denote the subset of goods m that are inputs to

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the process system. U n is the total exchange of commodity from sector n to the process system.

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cn , m is the upstream technical coefficient, of which detailed derivation procedures are

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documented by Wiedmann et al.43 and Acquaye et al.44 pm is the unit price of good m used to

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convert physical unit flows into equivalent expenditures. Constraint (6) indicates that the total

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output of each sector minus the direct requirements within the economy should satisfy the

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requirements by the process system, where an,n ' is the IO technical coefficients. It is worth

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noting that Leontief inverse45 is not required because the sectoral output is explicitly denoted by

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Pn , and optimization algorithms can directly handle the linear equation (6). Constraint (7)

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indicates that outputs produced from the process system must satisfy the external demand plus

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the consumption by various industrial sectors in the IO system. We use m ∈ Out to denote the

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subset of products that are outputs from the process system. rm is the external demand for

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product m. dm,n is the downstream technical coefficient, of which a detailed derivation can be

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found in the works by Suh.34, 50

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The nature of the resulting optimization problems depends on a number of factors. First, if any

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of the functions in fl ,m ( ⋅) or gl ( ⋅) is nonlinear, the resulting optimization problem is a nonlinear

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program. Second, if any integer variables Yl is involved, the resulting optimization problem is a

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mixed-integer program. Third, different applications typically lead to different optimization

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problems. For example, supply chain optimization often leads to mixed-integer programs while

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process design usually leads to nonlinear programs.13 Solution of different types of mathematical

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programs requires corresponding optimization algorithms and solvers. A number of MOO

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techniques can be used to simultaneously optimize multiple objectives.54 In this work, we choose

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the ɛ-constraint method for MOO, which is efficient in implementation.55

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2.3

Uncertainty Analysis

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LCA studies are conducted by an LCA analyst to support the decision maker in making sound

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choices. Therefore, it is critical to improve how uncertainty and variability is communicated in

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an LCA. As suggested by Herrmann et al.,56 the expected uncertainty of an LCA statement (i.e.,

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the answer to an LCA question or inquiry) is dependent on 1) the budget constraints for the LCA

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analyst, which is decided by the decision maker; 2) the size of the LCA space; and 3) the

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capability of the analyst. Assuming that the budget constraints and the capability of the analyst

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are constant, Hermann et al.56 proposed a taxonomy to scale the expected level of uncertainty in

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LCAs. This taxonomy operates in six dimensions, and each dimension is read as a switch with

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two possible settings – either left or right. Specifically, the six dimensions and available settings

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are: 1) tangibility – tangible (T) vs. intangible (I); 2) repetitivity – single period (S) vs. multiple

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periods (M); 3) scale – micro (i) vs. macro (a); 4) time – retrospective (R) vs. prospective (P); 5)

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change – baseline (B) vs. change (C); and 6) value – physical (Y) vs. value (V). By definition,

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the left settings corresponds to a lower uncertainty. As more dimensions are set to the right

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position of the switch, the expected inherent uncertainty increases. In contrast to most ex-post

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approaches that occurs after the LCA,57-61 this taxonomy can be applied ex ante to an LCA study.

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We adopt this approach of uncertainty analysis in our hybrid LCO framework. Once the goal and

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scope of a hybrid LCO study is determined, we can classify the study using the taxonomy by

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Hermann et al.56 to help better understand, rank and hence confront uncertainty for LCO.

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3.1

RESULTS AND DISCUSSIONS Problem statement

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We demonstrate the proposed integrated hybrid LCO framework with an application on

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sustainable design of a UK advanced biofuel supply chain in this section. Faced with increasing

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concerns on GHG emissions and energy security, the UK and the wider EU community have

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been setting out long-term strategies to promote biofuel production to substitute traditional fossil

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fuels.62-63 To the best of our knowledge, existing hybrid LCA studies do not consider practical

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factors such as biomass availability, biorefinery capacity, and geographical variations, whereas

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existing sustainable biofuel supply chain optimization models that do consider these factors are

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built exclusively on process-based LCA.8, 64-65 We develop a first-of-its-kind hybrid LCO model

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for biofuel supply chain applications.

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The techno-economic supply chain model is adopted from that by Akgul et al.,66 of which the

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superstructure is given in Figure 2. The biofuel supply chain consists of three stages, namely

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biomass cultivation sites, biorefineries, and demand centers. Biomass feedstocks are acquired

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from biomass cultivation sites, where four types of biomass feedstocks are considered, namely

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wheat, wheat straw, miscanthus, and woody biomass (short rotation coppice). We assume that

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the annual biomass availability is stable and the soil has been in production throughout the

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planning horizon. Note that if the land has been fallow for a long time, tilling to prepare it for

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cultivation may release a pulse of CO2.67 Biomass feedstocks are converted into bio-ethanol

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using a biochemical route in biorefineries, where a pre-treatment process (ammonia fiber

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explosion) is employed, after which lignocellulose can be hydrolyzed and then fermented. We

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consider four plant capacity levels with different capital costs. Depending on the biomass

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feedstock used in biorefineries, the conversion rate and operational cost vary. For the

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convenience of our data integration procedure, all monetary values are adjusted to the year of

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2011 for inflation and other relevant financial corrections. Conversion to monetary values

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representing other years can be performed by using appropriate inflation indices (e.g., consumer

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price index). Credits of co-products are implicitly accounted for in the parameters on operational

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cost. Bio-ethanol produced in biorefineries are sold to demand centers. We adopt one of the

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demand scenarios in the paper by Akgul et al.,66 in which a total consumption rate of 2,802 ton

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bio-ethanol/day are distributed to six demand centers in the UK. Three transportation modes are

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considered for shipping biomass feedstocks and bio-ethanol, namely road, rail, and ship.

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Specifically, the road and rail modes are for inter-cell transportation within the UK, the road

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mode is for local transportation within a cell, and the ship mode is for transoceanic transportation

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of imported biomass from foreign suppliers. As shown in Figure 2, we follow the approach by

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Akgul et al.66 to discretize the UK map into 34 square cells, each with dimensions of 108 km ×

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108 km. These cells are the potential locations of biomass cultivation sites, biorefineries, and

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demand centers. One dummy cell is considered to represent a foreign wheat supplier. All input

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data on biomass cultivation, bio-ethanol production, and transportation are given in the

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Supporting Information, which are taken from Akgul et al.66

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Figure 2. Superstructure of the UK advanced biofuel supply chain with the UK map discretized

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into 34 square cells.

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A process system and an IO system constitute a complete life cycle boundary of this problem.

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The flexible hybrid LCI in this model is derived based on Ecoinvent v2.268 and the MRIO model

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in Wiedmann et al.43 A total of 40 relevant processes are considered in the process system, each

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corresponding to an entry in the Ecoinvent database. The list of these 40 processes is presented

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in the Supporting Information, including chemicals, biomass, transport services, etc. Note that

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the CO2 sequestration effect during biomass cultivation may vary depending on whether the soil

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had been in production previously or fallow.

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Following the MRIO approach by Wiedmann and his coworkers, the IO system is built based

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on four tables, namely supply and use tables for the UK, and supply and use tables for the ROW.

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Each table contains 224 sectors/commodities, including mining, grain farming, power generation

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etc. Consequently, the resulting compound IO matrix has a dimension of 896×896 (896 = 4×

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224). The structure of the compound matrix was provided in the Supporting Information of the

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work by Wiedmann et al.43 Following the approach by Wiedmann et al.,43 upstream technical

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coefficients in the model are derived by modifying the corresponding IO technical coefficients.

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Sectoral inputs already considered in the process system are nullified to avoid double counting.

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All unit prices for converting physical unit inputs to equivalent expenditures are taken from the

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original MRIO model.43 The downstream cut-offs are neglected as suggested by a number of

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researchers.44, 49-51 Six groups of GHGs in the Kyoto Protocol are considered, namely CO2, CH4,

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N2O, HFCs, PFCs, and SF6.43 The GWP damage model5 is used to generate an aggregated

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indicator in the unit of kg CO2 equivalent. GHG emissions factors for all processes in the process

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system are obtained from Ecoinvent v2.2,68 and GWP factors for all industrial sectors in the IO

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system are obtained from the original MRIO model.43 Note that indirect changes or intangible

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effects, such as indirect land use changes (ILUC), are not considered in this problem for the

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simplicity of demonstration. However, the proposed hybrid LCO framework is general that such

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impacts can be easily incorporated by considering additional parameters, variables, and

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equations in the optimization model.

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We consider an environmental objective and an economic objective in this integrated hybrid

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LCO model. The environmental objective is to minimize the full life cycle GHG emissions

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resulting from all supply chain activities, including emissions from both process and IO systems.

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Note that there are other important environmental- and policy-relevant impact indicators than

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GHG emissions, including acidification, nitrification, resource depletion, respiratory inorganics,

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land use, human toxicity, etc. We consider one environmental objective for the simplicity of

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demonstration, whereas additional impact indicators can be easily incorporated in the hybrid

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LCO framework via MOO. The economic objective is to minimize the total project cost,

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including the investment cost, production cost, transportation cost, and import cost. This cost is

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assumed to be borne by the biofuel manufacturer and does not include externalities. The aim is to

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simultaneously minimize the economic and environmental objectives by optimizing the

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following decisions:

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Biomass acquisition rate of each type of biomass feedstocks from biomass cultivation sites and foreign suppliers;

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Selection of locations and capacity levels for biorefineries;

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Production rate of bio-ethanol and consumption rate of biomass at biorefineries;

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Selection of transportation modes and shipping routes for biomass and bio-ethanol;

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Transportation flows of biomass feedstocks and bio-ethanol between all facilities.

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The resulting optimization problem is formulated as a bi-criterion mixed-integer linear

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programming (MILP) problem. A detailed model formulation is provided in the Supporting

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Information. The MILP problems were solved by the solver CPLEX.

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According to the taxonomy by Herrmann et al.,56 this hybrid LCO study is classified as ISa-

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PCY. The study is classified as 1) “intangible (I)” because the actual correlations among supply,

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production and demand can be very complicated (e.g., competition with petrochemical fuels,

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legal reasons, CO2 emission taxes) and might not be accurately captured in the model; 2) “single

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period (S)” because the annual planning model considers only a single period; 3) “macro (a)”

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because the supply chain under study is at a national scale; 4) “prospective (P)” because the

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construction and operation of this supply chain will take place in the future; 5) “change (C)”

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because the development of this supply chain will change the renewable energy supply; and 6)

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“physical (Y)” because the facility locations as well as the quantities of materials, energy and

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GHG emissions are specified in the model.

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Figure 3. Pareto profile with the total project cost and life cycle GHG emissions for ten

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instances.

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3.2

Optimization Results

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Following the ɛ-constraint method for MOO, we have solved 10 cost-minimization instances

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with the cap on total life cycle GHG emissions set at 10 different values evenly distributed

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between its minimum and maximum values. Since this is a design problem, we consider a

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baseline with zero life cycle GHG emissions and zero total project cost. As shown by Figure 3,

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the LCO results indicate significant trade-offs between the economic and environmental

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objectives. The stacked column chart shows the breakdowns of process and IO life cycle GHG

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emissions of all instances. The line chart shows the total project costs of all instances and

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represents the Pareto frontier. As the cap on the total life cycle GHG emissions reduces from

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5,488 to 2,128 ton CO2-equivalent/day, the total project cost climbs from £ 1.87 to £ 2.50

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MM/day. We observe that the total project cost increases rapidly as the cap on full life cycle

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GHG emissions goes below approximately 2,500 ton CO2-equivalent/day. All solutions above

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the Pareto frontier are suboptimal, and all solutions below this frontier are unattainable. While all

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solutions on the Pareto frontier are optimal, solutions on the left emphasize more on GHG

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mitigation, and solutions on the right tend to achieve a more cost-effective supply chain design.

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Specifically, the point at the upper left corner (Instance 1) has the lowest full life cycle GHG

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emissions, so it is considered as the most preferable solution from a climate perspective; the

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point at the lower right corner (Instance 10) has the lowest total project cost, so it is considered

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as the most cost-effective solution. One can choose any preferred optimal solution on the Pareto

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frontier. It is also worth noting that the ratio of process GHG emissions over IO GHG emissions

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varies over the 10 instances, as shown by the stacked columns. At Instance 1, the process GHG

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emissions contribute 41.6% of the full life cycle GHG emissions, and the IO GHG emissions

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contribute 58.4%. In contrast, at Instance 10, the process GHG emissions contribute 87.2% of the

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full life cycle emissions, and the IO GHG emissions contribute 12.8%. This difference is due to

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the different decisions made in the supply chain system, and we will provide detailed discussions

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on these two extreme solutions in the following paragraphs.

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Results of Instance 1 are obtained by minimizing the full life cycle GHG emissions without

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setting any budget on the project cost. The corresponding supply chain configuration is given in

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Figure 4a. A total of six biorefineries are built in the same cells as the locations of demand

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centers. Two biorefineries are at capacity level 1, three at capacity level 3, and one at capacity

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level 4. The daily demand of 2,802 tons of bio-ethanol is exclusively produced from 11,924 tons

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of woody biomass. This result indicates that producing bio-ethanol from woody biomass is the

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option that leads to the fewest life cycle GHG emissions. All woody biomass is acquired locally

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in the same cells as the locations of biorefineries in order to avoid long-distance biomass

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transportation. Rail is the preferred mode of transportation for shipping bio-ethanol from

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biorefineries to demand centers because of the lower unit transportation GHG footprint

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compared to road transport. The total project cost of this solution levelized on a daily basis is £

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2.50 MM/day. The major cost comes from production, which accounts for 77% of the total

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project cost; the investment cost levelized on a daily basis accounts for 16%; and the sum of

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local and inter-region transportation costs collectively accounts for 7%. The sum of direct and

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indirect GHG emissions of this solution is 2,128 ton CO2-equivalent/day. Life cycle GHG

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emissions profiles are given in the Supporting Information, where we summarize the GHG

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emissions from each process in the process system, and each industrial sector in the UK IO

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system and ROW IO system. In the process system, the major contributor is the production of

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ammonia, which results in 387 ton CO2-equivalent/day. The conversion of woody biomass to

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bio-ethanol requires significant use of ammonia during biomass pretreatment, and the ammonia

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manufacturing process is energy-intensive. The second largest contributor in the process system

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is from acquisition of the biomass feedstock – woody biomass, which results in 133 ton CO2-

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equivalent/day. These GHG emissions are primarily due to chemical and energy use in the

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cultivation, collection and preparation phases of the woody biomass feedstock. In the IO system,

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the major contributor is the sector of natural gas and services in the ROW, which results in 205

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ton CO2-equivalent/day, reflecting the fact that imported natural gas plays a significant role in

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the UK’s energy supply. The second largest contributor in the IO system is the sector of

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electricity production from coal in the UK, which results in 147 ton CO2-equivalent/day,

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reflecting the fact that majority of the power supply in the UK comes from coal-fired power

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plants.

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On the opposite side of the solution above, results of Instance 10 are obtained by minimizing

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the total project cost without setting any cap on the life cycle GHG emissions. The corresponding

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supply chain design is shown in Figure 4b. A total of four biorefineries are built, and all

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biorefineries are at capacity level 4 in order to take advantage of economies of scale. The daily

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demand of 2,802 tons of bio-ethanol is produced from 5,701 tons of wheat and 3,589 tons of

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wheat straw. In this solution, wheat is chosen as the major biomass feedstock as it has the lowest

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unit production cost compared to other types of biomass feedstocks. Since the availability of

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domestic wheat does not suffice the total requirement for bio-ethanol production, wheat straw is

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chosen as the secondary biomass feedstock. Wheat straw is a co-product of wheat acquisition,

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thus having a lower acquisition cost than miscanthus and woody biomass. As shown in Figure

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4b, three of the biorefineries source their biomass feedstocks from local biomass cultivation

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sites. The only exception is the biorefinery in cell 7, which obtains most biomass feedstocks

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from biomass cultivation sites in the surrounding cells. Rail is the preferred transportation mode

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for shipping both biomass and bio-ethanol, because it has a lower unit transportation cost

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compared to road transport. The total project cost of this solution levelized on a daily basis is £

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1.87 MM/day. The production cost accounts for 70% of the total project cost; the investment cost

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accounts for 18%; and the transportation cost accounts for 12%. The ratio of investment cost

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over production cost is increased compared to Instance 1, because of the deployment of larger-

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size biorefineries that benefit from economies of scale. The transportation cost is 5% higher than

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that at Instance 1 due to the long-distance transportation of wheat and wheat straw at Instance 10.

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The full life cycle GHG emissions of this solution is 5,488 ton CO2-equivalent/day, which is

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more than twice of that of Instance 1. Life cycle GHG emissions profiles are given in the

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Supporting Information. In the process system, the major contributor is acquisition of wheat,

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which results in 2,929 ton CO2-equivalent/day. The second largest contributor is acquisition of

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wheat straw, which results in 728 ton CO2-equivalent/day. Both biomass feedstocks require

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significant use of energy, water, and fertilizers during the cultivation and acquisition phase. In

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the IO system, the major contributor is the sector of electricity production from coal in the UK,

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which results in 145 ton CO2-equivalent/day, and the second largest contributor is the sector of

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natural gas and services in the ROW, which results in 94 ton CO2-equivalent/day. This

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distribution of emissions is similar to that of the previous solution, reflecting that natural gas and

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power are the major sources of GHG emissions.

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Figure 4. Optimal supply chain configuration and material flows between the facilities for (a)

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the solution with minimum full life cycle GHG emissions, and (b) the solution with minimum

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total project cost.

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3.3

Comparison with Other Studies

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We briefly review the hybrid LCA results on bio-ethanol production from other studies in this

455

section. To facilitate the comparison, we convert all life cycle GHG emissions data to a unit of

456

energy, i.e., GJ bio-ethanol. The specific energy of bio-ethanol is assumed to be 23.4 MJ/kg and

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the energy density is 18.4 MJ/L.69 According to these assumptions, the lowest life cycle GHG

458

emissions in our LCO results is 32.45 kg CO2 equivalent/GJ at Instance 1, and the highest life

459

cycle GHG emissions is 83.69 kg CO2 equivalent/GJ at Instance 10.

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Bright et al.70 undertook an environmental assessment of wood-based biofuel production to

461

evaluate the GHG mitigation potentials under different consumption scenarios in Norway using a

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hybrid bi-region LCA method. The reported full life cycle GHG emissions are 21 and 27 kg CO2

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equivalent/GJ for bio-ethanol production via thermochemical conversion and biochemical

464

conversion, respectively.

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Acquaye et al.42 calculated the life cycle GHG emissions of biodiesel and bio-ethanol produced

466

from various biomass feedstocks in UK using a hybrid MRIO LCA framework. The reported

467

sum of process and IO GHG emissions are 25.1, 29.1, and 72.9 kg CO2 equivalent/GJ for bio-

468

ethanol produced from sugarcane, sugar beet, and corn, respectively. Specifically, the IO GHG

469

emissions account for 36.7%, 8.6%, and 3.6% of the full life cycle GHG emissions for bio-

470

ethanol produced sugarcane, sugar beet, and corn, respectively.

471

Palma-Rojas et al.71 evaluated the energy use, life cycle GHG emissions, and employment

472

impact of bio-ethanol production from bagasse in Brazil using the integrated hybrid LCA

473

method. The reported sum of process and IO GHG emissions is 60.0 kg CO2 equivalent/GJ,

474

where the IO GHG emissions account for 49.3% of the full life cycle GHG emissions.

475

In summary, the full life cycle GHG emissions values obtained from our hybrid LCO study are

476

on the same order of magnitude as the literature values reviewed above. Differences in values are

477

due to the choice of dataset and biomass feedstocks. Consistent with our hybrid LCO results,

478

these literature values also suggest that the unit life cycle emissions as well as the ratio of

479

process emissions over IO emissions vary significantly by the biomass feedstocks used for bio-

480

ethanol production.

481

3.4

Limitations

482

A limitation of the proposed hybrid LCO framework is that it has been tested on only a limited

483

number of case studies. More examples are needed to demonstrate the applicability of the

484

proposed framework. Another limitation lies in that hybrid LCO study requires much more

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efforts in data collection and data processing compared to traditional process-based LCO. The

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policy relevance of the optimization results is dependent on the quality of the data used.

487

ASSOCIATED CONTENT

488

Supporting Information. Detailed mathematical model formulation, notations and input/output

489

data for the case study. This material is available free of charge via the Internet at

490

http://pubs.acs.org.

491

AUTHOR INFORMATION

492

Corresponding Author

493

*Phone: (847) 467-2943. Fax: (847) 491-3728. Email: [email protected].

494

Notes

495

The authors declare no competing financial interest.

496

ACKNOWLEDGMENT

497

We greatly thank Dr. Thomas O. Wiedmann at the University of New South Wales in Australia

498

and Dr. Lazaros Papageorgiou at University College London in the United Kingdom for use of

499

their data and models and for their guidance and helpful discussion. The paper has been greatly

500

improved by the insightful and constructive feedback from the associate editor and three

501

anonymous reviewers. The authors acknowledge partial financial support from the National

502

Science Foundation (NSF) CAREER Award (CBET-1554424).

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