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Monte Carlo integration with adaptive variance selection for improved stochastic efficient global optimization

机译:Monte Carlo与适应方差选择的集成,以改善随机高效的全球优化

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摘要

In this paper, the minimization of computational cost on evaluating multidimensional integrals is explored. More specifically, a method based on an adaptive scheme for error variance selection in Monte Carlo integration (MCI) is presented. It uses a stochastic efficient global optimization (sEGO) framework to guide the optimization search. The MCI is employed to approximate the integrals, because it provides the variance of the error in the integration. In the proposed approach, the variance of the integration error is included into a stochastic kriging framework by setting a target variance in the MCI. We show that the variance of the error of the MCI may be controlled by the designer and that its value strongly influences the computational cost and the exploration ability of the optimization process. Hence, we propose an adaptive scheme for automatic selection of the target variance during the sEGO search. The robustness and efficiency of the proposed adaptive approach were evaluated on global optimization stochastic benchmark functions as well as on a tuned mass damper design problem. The results showed that the proposed adaptive approach consistently outperformed the constant approach and a multi-start optimization method. Moreover, the use of MCI enabled the method application in problems with high number of stochastic dimensions. On the other hand, the main limitation of the method is inherited from sEGO coupled with the kriging metamodel: the efficiency of the approach is reduced when the number of design variables increases.
机译:在本文中,探讨了评估多维积分的计算成本的最小化。更具体地,提出了一种基于蒙特卡罗集成(MCI)的误差方差选择的自适应方案的方法。它使用随机高效的全局优化(SEGO)框架来指导优化搜索。 MCI用于近似于积分,因为它提供了集成中误差的方差。在所提出的方法中,通过在MCI中设置目标方差,将集成误差的方差包含在随机Kriging框架中。我们表明MCI误差的方差可以由设计者控制,并且其价值强烈影响计算成本和优化过程的勘探能力。因此,我们提出了一种自适应方案,用于在SEGO搜索期间自动选择目标方差。在全球优化随机基准功能以及调谐质量阻尼器设计问题上评估了所提出的自适应方法的鲁棒性和效率。结果表明,所提出的自适应方法始终如一地优于恒定方法和多开始优化方法。此外,使用MCI的使用使方法应用于大量随机尺寸的问题。另一方面,该方法的主要限制由与Kriging Metomodel耦合的SEGO继承:当设计变量的数量增加时,该方法的效率降低。

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