Solving a class of discrete event simulation-based optimization problems using “optimality in probability”

Jianfeng Mao, C. Cassandras
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Abstract

We approach a class of discrete event simulation-based optimization problems using optimality in probability, an approach which yields what is termed a “champion solution”. Compared to the traditional optimality in expectation, this approach favors the solution whose actual performance is more likely better than that of any other solution; this is an effective alternative to the traditional optimality sense, especially when facing a dynamic and nonstationary environment. Moreover, using optimality in probability is computationally promising for a class of discrete event simulation-based optimization problems, since it can reduce computational complexity by orders of magnitude compared to general simulation-based optimization methods using optimality in expectation. Accordingly, we have developed an “Omega Median Algorithm” in order to effectively obtain the champion solution and to fully utilize the efficiency of well-developed off-line algorithms to further facilitate timely decision making. An inventory control problem with nonstationary demand is included to illustrate and interpret the use of the Omega Median Algorithm, whose performance is tested using simulations.
用“概率最优性”求解一类基于离散事件模拟的优化问题
我们使用概率最优性来处理一类基于离散事件模拟的优化问题,这种方法产生了所谓的“冠军解决方案”。与传统的期望最优性相比,这种方法更倾向于实际性能可能比任何其他解决方案更好的解决方案;这是传统最优性意义的有效替代,特别是在面对动态和非平稳环境时。此外,对于一类基于离散事件模拟的优化问题,使用概率最优性在计算上是有希望的,因为与使用期望最优性的一般基于模拟的优化方法相比,它可以将计算复杂度降低几个数量级。因此,我们开发了“Omega中值算法”,以有效地获得冠军解,并充分利用已开发好的离线算法的效率,进一步促进及时决策。包含非平稳需求的库存控制问题,以说明和解释Omega中值算法的使用,其性能通过模拟测试。
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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