多目标仿真模型的最优计算预算分配

L. Lee, E. P. Chew, S. Teng, D. Goldsman
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引用次数: 70

摘要

仿真在从一组竞争设计中识别最佳系统设计方面起着至关重要的作用。为了提高模拟效率,通常使用排序和选择技术来确定所需的模拟复制数量,以便以适度的计算费用保证预先指定的正确选择水平。由于大多数现实生活中的系统本质上是多目标的,在本文中,我们考虑了一个多目标排名和选择问题,其中系统设计根据多个性能指标进行评估。我们将帕累托最优的概念融入到排序和选择方案中,并试图找到所有非主导设计,而不是单一的“最佳”设计。提出了一种简单的顺序求解方法来分配仿真副本。计算结果表明,就寻找帕累托集所需的重复次数而言,该算法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Optimal computing budget allocation for multi-objective simulation models
Simulation plays a vital role in identifying the best system design from among a set of competing designs. To improve simulation efficiency, ranking and selection techniques are often used to determine the number of simulation replications required so that a pre-specified level of correct selection is guaranteed at a modest possible computational expense. As most real-life systems are multi-objective in nature, in this paper, we consider a multi-objective ranking and selection problem, where the system designs are evaluated in terms of more than one performance measure. We incorporate the concept of Pareto optimality into the ranking and selection scheme, and try to find all of the non-dominated designs rather than a single "best" one. A simple sequential solution method is proposed to allocate the simulation replications. Computational results show that the proposed algorithm is efficient in terms of the total number of replications needed to find the Pareto set.
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