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Evolutionary robust optimization in production planning - interactions between number of objectives, sample size and choice of robustness measure

机译:生产计划中的进化稳健优化-目标数量,样本数量和稳健性度量选择之间的相互作用

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We aim to find robust solutions in optimization settings where there is uncertainty associated with the operating/environmental conditions, and the fitness of a solution is hence best described by a distribution of outcomes. In such settings, the nature of the fitness distribution (reflecting the performance of a particular solution across a set of operating scenarios) is of potential interest in deciding solution quality, and previous work has suggested the inclusion of robustness as an additional optimization objective. However, there has been limited investigation of different robustness criteria, and the impact this choice may have on the sample size needed to obtain reliable fitness estimates. Here, we investigate different single and multi-objective formulations for robust optimization, in the context of a real-world problem addressed via simulation-based optimization. For the (limited evaluation) setting considered, our results highlight the value of an explicit robustness criterion in steering an optimizer towards solutions that are not only robust (as may be expected), but also associated with a profit that is, on average, higher than that identified by standard single-objective approaches. We also observe significant interactions between the choice of robustness measure and the sample size employed during fitness evaluation, an effect that is more pronounced for our multi-objective models. (C) 2016 Elsevier Ltd. All rights reserved.
机译:我们的目标是在存在与运行/环境条件相关的不确定性的优化设置中找到可靠的解决方案,因此,根据结果的分布来最好地描述解决方案的适用性。在这种情况下,适应度分布的性质(反映特定解决方案在一组操作方案中的性能)可能会影响解决方案质量的确定,并且先前的工作已建议将健壮性作为附加的优化目标。但是,对不同鲁棒性标准的研究有限,并且此选择可能会对获得可靠的适用性估计所需的样本量产生影响。在这里,我们通过基于仿真的优化解决了一个现实世界的问题,研究了用于健壮优化的不同单目标和多目标公式。对于所考虑的(有限评估)设置,我们的结果凸显了明确的稳健性标准在指导优化器寻求不仅稳健(如预期)而且还与平均更高的利润相关联的解决方案方面的价值。比标准的单目标方法所确定的要高。我们还观察到健壮性评估的选择与适应性评估期间使用的样​​本量之间存在显着的相互作用,这种影响在我们的多目标模型中更为明显。 (C)2016 Elsevier Ltd.保留所有权利。

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