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首页> 外文期刊>Asia-Pacific Journal of Operational Research >(MOTOS)-T-2: Multi-Fidelity Optimization with Ordinal Transformation and Optimal Sampling
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(MOTOS)-T-2: Multi-Fidelity Optimization with Ordinal Transformation and Optimal Sampling

机译:(MOTOS)-T-2:具有序转换和最佳采样的多保真度优化

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摘要

Simulation optimization can be used to solve many complex optimization problems in automation applications such as job scheduling and inventory control. We propose a new framework to perform efficient simulation optimization when simulation models with different fidelity levels are available. The framework consists of two novel methodologies: ordinal transformation (OT) and optimal sampling (OS). The OT methodology uses the low-fidelity simulations to transform the original solution space into an ordinal space that encapsulates useful information from the low-fidelity model. The OS methodology efficiently uses high-fidelity simulations to sample the transformed space in search of the optimal solution. Through theoretical analysis and numerical experiments, we demonstrate the promising performance of the multi-fidelity optimization with ordinal transformation and optimal sampling ((MOTOS)-T-2) framework.
机译:仿真优化可用于解决自动化应用程序中的许多复杂优化问题,例如作业计划和库存控制。当提供具有不同保真度级别的仿真模型时,我们提出了一个新的框架来执行有效的仿真优化。该框架包含两种新颖的方法:序数转换(OT)和最佳采样(OS)。 OT方法使用低保真度模拟将原始解决方案空间转换为序数空间,以封装来自低保真度模型的有用信息。 OS方法论有效地使用高保真模拟来采样转换后的空间,以寻找最佳解决方案。通过理论分析和数值实验,我们证明了具有序数变换和最佳采样((MOTOS)-T-2)框架的多保真度优化的有希望的性能。

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