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Multi-objective optimization to improve energy, economic and, environmental life cycle assessment in waste-to-energy plant

机译:多目标优化改善垃圾到能量植物中的能源,经济,环境生命周期评估

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摘要

This paper presents a multi-objective optimization (MOO) of waste-to-energy (WtE) to investigate optimized solutions for thermal, economic, and environmental objectives. These objectives are represented by net efficiency, total cost in treating waste, and environmental impact. Integration of the environmental objective is conducted using life cycle assessment (LCA) with endpoint single score method covering direct combustion, reagent production and infrastructure, ash management, and energy recovery. Initial net efficiency of the plant was 16.27% whereas the cost and environmental impacts were 75.63 €/ton-waste and -1.21 × 10~8 Pt/ton-waste, respectively. A non-dominated sorting genetic algorithm (NSGA-Ⅱ) is applied to maximize efficiency, minimize cost, and minimize environmental impact. Highest improvement for single objective is about 13.4%, 10.3%, and 14.8% for thermal, economic, and environmental, respectively. These improvements cannot be made at once since the objectives are conflicting. These findings highlight the significance role of decision makers in assigning weight to each objective function to obtain the optimal solution. The study also reveals different influence among decision variable, waste input, and marginal energy sources. Finally, this paper underlines the versatility of using MOO to improve WtE performance regarding the thermal, economic, and environmental aspects without requiring additional investment.
机译:本文介绍了垃圾到能源(WTE)的多目标优化(MOO),以调查热,经济和环境目标的优化解决方案。这些目标由净效率,治疗废物的总成本和环境影响表示。使用生命周期评估(LCA)进行环境目标的整合单一分数方法,涵盖直接燃烧,试剂生产和基础设施,灰分管理和能量恢复。植物的初始净效率为16.27%,而成本和环境影响分别为-1.21×10〜8吨/吨/吨余量。应用非统治分类遗传算法(NSGA-Ⅱ)以最大限度地提高效率,最小化成本,并最大限度地减少对环境的影响。单身目标的最高改善约为热,经济和环境的约13.4%,10.3%和14.8%。由于目标是冲突的,因此不能立即提出这些改进。这些发现突出了决策者在为每个目标函数分配权重的重要作用以获得最佳解决方案。该研究还揭示了决策变量,废物输入和边际能源之间的不同影响。最后,本文强调了MOO的多功能性,以提高关于热,经济和环境方面的WTE性能,而无需额外投资。

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