Automatic surrogate model type selection during the optimization of expensive black-box problems

I. Couckuyt, F. Turck, T. Dhaene, D. Gorissen
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引用次数: 21

Abstract

The use of Surrogate Based Optimization (SBO) has become commonplace for optimizing expensive black-box simulation codes. A popular SBO method is the Efficient Global Optimization (EGO) approach. However, the performance of SBO methods critically depends on the quality of the guiding surrogate. In EGO the surrogate type is usually fixed to Kriging even though this may not be optimal for all problems. In this paper the authors propose to extend the well-known EGO method with an automatic surrogate model type selection framework that is able to dynamically select the best model type (including hybrid ensembles) depending on the data available so far. Hence, the expected improvement criterion will always be based on the best approximation available at each step of the optimization process. The approach is demonstrated on a structural optimization problem, i.e., reducing the stress on a truss-like structure. Results show that the proposed algorithm consequently finds better optimums than traditional kriging-based infill optimization.
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在昂贵的黑盒问题优化过程中自动选择代理模型类型
使用基于代理的优化(SBO)已经成为优化昂贵的黑盒仿真代码的常见方法。一种流行的SBO方法是高效全局优化(EGO)方法。然而,SBO方法的性能主要取决于引导代理的质量。在EGO中,代理类型通常固定为Kriging,尽管这可能不是所有问题的最佳选择。在本文中,作者提出用一个自动代理模型类型选择框架来扩展众所周知的EGO方法,该框架能够根据迄今为止可用的数据动态选择最佳模型类型(包括混合集成)。因此,期望的改进准则将始终基于优化过程中每一步可用的最佳逼近。该方法在一个结构优化问题上得到了验证,即降低桁架结构上的应力。结果表明,该算法比传统的基于克里格的填充优化算法更优。
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