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Modelling different types of uncertainty in biofuel supply network design and planning: A robust optimization approach

机译:在生物燃料供应网络设计和规划中对不同类型的不确定性进行建模:一种可靠的优化方法

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This article proposes a mixed-integer programming (MILP) model to determine the strategic and tactical level decisions of lignocellulosic bioethanol supply chain subject to different sources and types of uncertainty. A comprehensive classification, including sources of uncertainty, corresponding parameters and possible reasons which may cause the uncertainty, as well as an up to date and systematic literature review of biofuel supply chain optimal design and planning studies which consider uncertain input data are presented. To handle different types of uncertainty, including randomness, epistemic and deep uncertainties, a hybrid robust optimization model is proposed. Uncertainty in technology is presented as imprecise conversion rates, which are expressed as probabilistic scenarios. Biomass yield is treated as fuzzy numbers while demand is assumed to vary in a known interval. Furthermore, fixed costs of the biorefineries are calculated according to the piecewise linear functions in which segments are capacity level intervals. In order to investigate the performance of the proposed models a case study is developed for bioethanol supply chain located in Iran. Computational results show that the proposed robust model outperforms deterministic model in terms of given performance measures. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文提出了一种混合整数规划(MILP)模型来确定木质纤维素生物乙醇供应链在不同来源和不确定性条件下的战略和战术水平决策。提出了一个全面的分类,包括不确定性的来源,相应的参数和可能导致不确定性的可能原因,以及考虑到不确定输入数据的生物燃料供应链最优设计和规划研究的最新和系统的文献综述。为了处理不同类型的不确定性,包括随机性,认识论和深度不确定性,提出了一种混合鲁棒优化模型。技术的不确定性表示为转换率不精确,表示为概率场景。生物量产量被视为模糊数,而假定需求在已知间隔内变化。此外,根据分段线性函数计算生物精炼厂的固定成本,其中分段是容量级别区间。为了调查建议模型的性能,针对位于伊朗的生物乙醇供应链进行了案例研究。计算结果表明,就给定的性能指标而言,所提出的鲁棒模型优于确定性模型。 (C)2017 Elsevier Ltd.保留所有权利。

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