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Robust material handling system design with standard deviation, variance and downside risk as risk measures

机译:可靠的物料搬运系统设计,采用标准偏差,方差和下行风险作为风险度量

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The design and planning of major storage systems belong to the class of systems design problems under uncertainty. The overall structure of the system is determined during the design stage while the values of the future conditions and the future planning decisions are not known with certainty. Typically the future uncertainty is modeled through a number of scenarios and each scenario has an individual time-discounted total system cost. The overall performance of the material handling system (MHS) is characterized by the distribution of these scenario costs. The central tendency of the cost distribution is always computed as the expected value of the distribution. Several alternatives for the dispersion of the distribution can be used. In this study the standard deviation, variance, and the downside risk of the cost distribution are investigated as the risk measures of the system. We propose an algorithm to efficiently identify all configurations of the MHS that are Pareto-optimal with respect to the tradeoff between the expected value of the costs and the risk; such Pareto-optimal configurations are also called efficient. Although the MHS model has non-linear constraints, our proposed algorithm can solve such non-linear models taking into account both the expected costs and the risk. The final selection of the storage system for implementation can then be made based on the Pareto graph and other considerations such as the risk preferences of the system owner. The algorithms developed are illustrated through a case study which helps in developing business insights for the warehouse and MHS design planners and decision makers. (C) 2015 Elsevier B.V. All rights reserved.
机译:主要存储系统的设计和规划属于不确定性下的系统设计问题。系统的整体结构是在设计阶段确定的,而未来条件的价值和未来计划的决策尚不确定。通常,未来不确定性是通过许多方案建模的,并且每种方案都有各自的时间折扣的总系统成本。物料搬运系统(MHS)的总体性能以这些方案成本的分布为特征。成本分配的主要趋势始终被计算为分配的期望值。可以使用几种替代方法来分散分布。在这项研究中,标准偏差,方差和成本分布的下行风险被作为系统的风险度量进行了研究。我们提出了一种算法,可以有效地识别MHS的所有配置,这些配置在成本的预期价值和风险之间进行权衡时是帕累托最优的;这样的帕累托最优配置也被称为有效的。尽管MHS模型具有非线性约束,但我们提出的算法可以同时考虑预期成本和风险来解决此类非线性模型。然后可以基于帕累托图和其他考虑因素(例如系统所有者的风险偏好)对要实施的存储系统进行最终选择。通过案例研究说明了开发的算法,该案例有助于为仓库,MHS设计计划人员和决策者开发业务见解。 (C)2015 Elsevier B.V.保留所有权利。

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