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首页> 外文期刊>Annals of Operations Research >Efficient solution of many instances of a simulation-based optimization problem utilizing a partition of the decision space
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Efficient solution of many instances of a simulation-based optimization problem utilizing a partition of the decision space

机译:利用决策空间的分区,有效解决基于模拟的优化问题的许多情况

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摘要

This paper concerns the solution of a class of mathematical optimization problems with simulation-based objective functions. The decision variables are partitioned into two groups, referred to as variables and parameters, respectively, such that the objective function value is influenced more by the variables than by the parameters. We aim to solve this optimization problem for a large number of parameter settings in a computationally efficient way. The algorithm developed uses surrogate models of the objective function for a selection of parameter settings, for each of which it computes an approximately optimal solution over the domain of the variables. Then, approximate optimal solutions for other parameter settings are computed through a weighting of the surrogate models without requiring additional expensive function evaluations. We have tested the algorithm's performance on a set of global optimization problems differing with respect to both mathematical properties and numbers of variables and parameters. Our results show that it outperforms a standard and often applied approach based on a surrogate model of the objective function over the complete space of variables and parameters.
机译:本文涉及使用基于仿真的目标函数解决一类数学优化问题。决策变量分为两组,分别称为变量和参数,因此目标函数值受变量的影响要大于参数的影响。我们旨在以一种计算有效的方式解决大量参数设置的优化问题。所开发的算法使用目标函数的替代模型来选择参数设置,对于每个参数设置,该算法都会在变量的范围内计算出近似最优的解决方案。然后,通过替代模型的加权来计算其他参数设置的近似最佳解,而无需进行其他昂贵的功能评估。我们在一系列全局优化问题上测试了算法的性能,这些问题在数学属性以及变量和参数的数量方面均不同。我们的结果表明,它在变量和参数的完整空间上优于基于目标函数的替代模型的标准且经常采用的方法。

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