Article ID Journal Published Year Pages File Type
1063079 Resources, Conservation and Recycling 2014 12 Pages PDF
Abstract

•A multi-objective mixed-integer linear programming optimization model is described.•Model scope includes both provision of waste treatment and industrial production.•Waste characteristics, capacity limitations, and other constraints explicitly addressed.•Optimal solutions and efficient trade-offs derived from all feasible combinations.•A simplified case study on glass packaging disposal highlights key model features.

This article presents a general multi-objective mixed-integer linear programming (MILP) optimization model aimed at providing decision support for waste and resources management in industrial networks. The MILP model combines material flow analysis, process models of waste treatments and other industrial processes, life cycle assessment, and mathematical optimization techniques within a unified framework. The optimization is based on a simplified representation of industrial networks that makes use of linear process models to describe the flows of mass and energy. Waste-specific characteristics, e.g. heating value or heavy metal contamination, are considered explicitly along with potential technologies or process configurations. The systems perspective, including both provision of waste treatment and industrial production, enables constraints imposed upon the systems, e.g. available treatment capacities, to be explicitly considered in the model. The model output is a set of alternative system configurations in terms of distribution of waste and resources that optimize environmental and economic performance. The MILP also enables quantification of the improvement potential compared to a given reference state. Trade-offs between conflicting objectives are identified through the generation of a set of Pareto-efficient solutions. This information supports the decision making process by revealing the quantified performance of the efficient trade-offs without relying on weighting being expressed prior to the analysis. Key features of the modeling approach are illustrated in a hypothetical case. The optimization model described in this article is applied in a subsequent paper (Part II) to assess and optimize the thermal treatment of sewage sludge in a region in Switzerland.

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Related Topics
Physical Sciences and Engineering Energy Renewable Energy, Sustainability and the Environment
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