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首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >MULTI-FIDELITY MODELS FOR DECOMPOSED SIMULATION OPTIMIZATION PROBLEMS
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MULTI-FIDELITY MODELS FOR DECOMPOSED SIMULATION OPTIMIZATION PROBLEMS

机译:用于分解仿真优化问题的多保真型号

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摘要

Hierarchical problem decomposition methods are widely used in optimization when the scale of the problem is large. The master problem is hierarchically decomposed to several sub-problems and the detail level of the sub-problems increases during the optimization from bottom to top. When simulation is used to estimate unknown functions, models with different detail are used at each level. However, the simulation outputs used to solve the sub-problems of a hierarchy level are not used anymore at higher levels. An approach is proposed in this paper to reuse these experiment data to improve the efficiency of the simulation-optimization algorithm. A multi-fidelity surrogate model is built in each sub-problem to guide the search of the optimum. The performance of the approach is numerically assessed with the goal of understanding its potentialities and the effect of algorithm parameters over optimization results.
机译:当问题的规模大时,分层问题分解方法广泛用于优化。 主问题在分层上分解为几个子问题,并且在从底部到顶部的优化期间,子问题的细节级别增加。 当模拟用于估计未知功能时,每个级别使用具有不同细节的模型。 但是,用于解决层次结构级别的子问题的模拟输出不再使用更高的级别使用。 本文提出了一种方法,以重用这些实验数据以提高仿真优化算法的效率。 在每个子问题中建立了多保真代理模型,以指导搜索最佳。 该方法的性能是以理解其潜力和算法参数在优化结果的效果的目标中进行了数值评估。

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