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A comparison of latin hypercube sampling techniques for a supply chain network design problem

机译:拉丁美洲超立方体抽样技术在供应链网络设计问题中的比较

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Currently, supply chain network design becomes more complex. In designing a supply chain network to withstand changing events, it is necessary to consider the uncertainties and risks that cause network disruptions from unexpected events. The current research related to the designing problem considers network disruptions using Monte Carlo Sampling (MCS) or Latin Hypercube Sampling (LHS) techniques. Both have a disadvantage that sample points or disruption locations are not scattered entirely sample space leading to high variation in objective function values. The purpose of this study is to apply a modified LHS or Improved Distributed Hypercube Sampling (IHS) techniques to reduce the variation. The results show that IHS techniques provide smaller standard deviation than that of the LHS technique. In addition, IHS can reduce not only the number of sample size but also and the computational time.
机译:当前,供应链网络设计变得更加复杂。在设计供应链网络以承受变化的事件时,必须考虑导致意外事件导致网络中断的不确定性和风险。与设计问题有关的当前研究考虑了使用蒙特卡洛采样(MCS)或拉丁超立方体采样(LHS)技术的网络中断。两者都有一个缺点,即采样点或中断位置不会完全分散在整个样本空间中,从而导致目标函数值发生较大变化。这项研究的目的是应用改进的LHS或改进的分布式超立方体采样(IHS)技术来减少变化。结果表明,IHS技术提供的标准偏差小于LHS技术。此外,IHS不仅可以减少样本数量,而且可以减少计算时间。

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