利用具有连续参数的知识梯度标定仿真模型

Warren R. Scott, Warrren B Powell, H. Simão
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引用次数: 11

摘要

我们描述了最初为离散排序和选择问题开发的知识梯度对校准连续参数以调整模拟器的问题的适应。连续参数的知识梯度使用单个测量期望值的连续近似值来指导下一步收集信息的选择。我们展示了如何通过优化连续但非凹的表面来找到最大化测量期望值的参数设置。我们将该方法与序列克里格法进行了一系列测试表面的比较,然后在一个昂贵的工业模拟器的校准中证明了它的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Calibrating simulation models using the knowledge gradient with continuous parameters
We describe an adaptation of the knowledge gradient, originally developed for discrete ranking and selection problems, to the problem of calibrating continuous parameters for the purpose of tuning a simulator. The knowledge gradient for continuous parameters uses a continuous approximation of the expected value of a single measurement to guide the choice of where to collect information next. We show how to find the parameter setting that maximizes the expected value of a measurement by optimizing a continuous but nonconcave surface. We compare the method to sequential kriging for a series of test surfaces, and then demonstrate its performance in the calibration of an expensive industrial simulator.
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