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An SDP approach for multiperiod mixed 0-1 linear programming models with stochastic dominance constraints for risk management

机译:具有随机优势约束的多周期混合0-1线性规划模型的SDP方法用于风险管理

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摘要

In this paper we consider multiperiod mixed 0-1 linear programming models under uncertainty. We propose a risk averse strategy using stochastic dominance constraints (SDC) induced by mixed-integer linear recourse as the risk measure. The SDC strategy extends the existing literature to the multistage case and includes both the first-order and second-order constraints. We propose a stochastic dynamic programming (SDP) solution approach, where one has to overcome the negative impact of the cross-scenario constraints on the decomposability of the model. In our computational experience we compare our SDP approach against a commercial optimization package, in terms of solution accuracy and elapsed time. We use supply chain planning instances, where procurement, production, inventory, and distribution decisions need to be made under demand uncertainty. We confirm the hardness of the testbed, where the benchmark cannot find a feasible solution for half of the test instances while we always find one, and show the appealing tradeoff of SDP, in terms of solution accuracy and elapsed time, when solving medium-to-large instances.
机译:在本文中,我们考虑不确定性下的多周期混合0-1线性规划模型。我们提出了一种风险厌恶策略,该策略采用混合整数线性追索权诱发的随机优势约束(SDC)作为风险度量。 SDC策略将现有文献扩展到多阶段情况,并且包括一阶和二阶约束。我们提出了一种随机动态规划(SDP)解决方案方法,其中必须克服跨场景约束对模型可分解性的负面影响。根据我们的计算经验,我们在解决方案准确性和经过时间方面将SDP方法与商业优化软件包进行了比较。我们使用供应链计划实例,其中需要在需求不确定的情况下做出采购,生产,库存和分销决策。我们确定了测试平台的硬度,基准测试无法找到一半的测试实例,而我们总是找到一个可行的解决方案,并且在解决中等精度到中等精度的过程中,在解决方案准确性和经过时间方面展示了SDP的吸引力折衷方案。 -大型实例。

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