A search method of inputs to target outputs on qualitative and quantitative hybrid simulation using neighbor selection by sensitivity analysis

M. Samejima, Goro Shida, M. Akiyoshi, N. Komoda
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Abstract

This paper addresses a search problem of inputs to target outputs on qualitative and quantitative hybrid simulation. The hybrid simulation can simulate qualitative factors in business quantitatively using Monte Carlo simulation that executes simulations repeatedly using random numbers. Because of using not equation but random numbers, it is difficult to search inputs deriving target outputs that a business manager expects. The general approach, an iterative search method of inputs, takes much time in case of large-scale simulation. So, we propose a search method using neighbor selection by sensitivity analysis. Until the target outputs are derived, our method repeats generating neighbors of a certain inputs and selecting a neighbor that tends to derive target outputs. The neighbor is selected by sensitivity analysis, which is based on a distribution distance defined by target outputs and simulated outputs in terms of averages and variances of distributions. By applying our method to a qualitative and quantitative model, it is confirmed that the computational time is decreased by our method.
提出了一种基于灵敏度分析的邻域选择的定性和定量混合仿真目标输出输入搜索方法
本文研究了定性和定量混合仿真中输入到目标输出的搜索问题。混合模拟可以使用蒙特卡罗模拟定量地模拟业务中的定性因素,蒙特卡罗模拟使用随机数重复执行模拟。由于使用的不是方程而是随机数,因此很难搜索输入,从而得到业务经理期望的目标输出。一般的方法是一种迭代搜索输入的方法,在大规模模拟的情况下需要花费大量的时间。为此,我们提出了一种基于灵敏度分析的邻居选择搜索方法。在导出目标输出之前,我们的方法重复生成特定输入的邻居,并选择倾向于派生目标输出的邻居。根据目标输出和模拟输出根据分布的平均值和方差定义的分布距离,通过灵敏度分析选择邻居。将该方法应用于一个定性和定量模型,证实了该方法减少了计算时间。
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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