基于代理的仿真优化

L. Hong, Xiaowei Zhang
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引用次数: 8

摘要

仿真模型在实践中广泛应用于复杂、动态和随机环境下的决策。但由于缺乏分析可追溯性,它们的执行和优化在计算上是昂贵的。模拟优化涉及开发有效的抽样方案——受制于计算预算——来解决此类优化问题。为了减轻计算负担,通常使用仿真输出来构造代理来近似仿真模型的响应面。在本教程中,我们提供了基于代理的方法的最新概述,用于具有连续决策变量的仿真优化。介绍了典型的替代方法,包括线性基函数模型和高斯过程。代理可以用作局部近似值或全局近似值。根据选择的不同,可以开发收敛于局部最优或全局最优的算法。每个类别都有代表性的例子。讨论了高斯过程大规模计算的最新进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Surrogate-Based Simulation Optimization
Simulation models are widely used in practice to facilitate decision-making in a complex, dynamic and stochastic environment. But they are computationally expensive to execute and optimize, due to lack of analytical tractability. Simulation optimization is concerned with developing efficient sampling schemes -- subject to a computational budget -- to solve such optimization problems. To mitigate the computational burden, surrogates are often constructed using simulation outputs to approximate the response surface of the simulation model. In this tutorial, we provide an up-to-date overview of surrogate-based methods for simulation optimization with continuous decision variables. Typical surrogates, including linear basis function models and Gaussian processes, are introduced. Surrogates can be used either as a local approximation or a global approximation. Depending on the choice, one may develop algorithms that converge to either a local optimum or a global optimum. Representative examples are presented for each category. Recent advances in large-scale computation for Gaussian processes are also discussed.
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