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Using Covariance Matrix Adaptation Evolutionary Strategy to boost the search accuracy in hierarchic memetic computations

机译:使用协方差矩阵适应进化策略来提高层次映射计算中的搜索准确性

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Many global optimization problems arising naturally in science and engineering exhibit some form of intrinsic ill-posedness, such as multimodality and insensitivity. Severe ill-posedness precludes the use of standard regularization techniques and necessitates more specialized approaches, usually comprised of two separate stages-global phase, that determines the problem's modality and provides rough approximations of the solutions, and a local phase, which refines these approximations.In this work, we attempt to improve one of the most efficient currently known approaches-Hierarchic Memetic Strategy (HMS)-by incorporating the Covariance Matrix Adaptation Evolutionary Strategy (CMA-ES) into its local phase. CMA-ES is a stochastic optimization algorithm that in some sense mimics the behavior of population-based evolutionary algorithms without explicitly evolving the population. This way, it avoids, to an extent, the associated cost of multiple evaluations of the objective function.We compare the performance of the HMS on relatively simple multimodal benchmark problems and on an engineering problem. To do so, we consider two configurations: the CMA-ES and the standard SEA (Simple Evolutionary Algorithm). The results demonstrate that the HMS with CMA-ES in the local phase requires less objective function evaluations to provide the same accuracy, making this approach more efficient than the standard SEA. (C) 2019 Elsevier B.V. All rights reserved.
机译:在科学和工程中自然产生的许多全球优化问题表现出某种形式的内在病症,例如多层性和不敏感性。严重的不良呈现阻止了使用标准正则化技术,并且需要更专业的方法,通常由两个单独的阶段 - 全局阶段组成,该阶段决定了问题的模态并提供了解决方案的粗糙近似,以及局部阶段,它改进了这些近似的解决方案。在这项工作中,我们试图改善最有效的当前已知的方法 - 等级难题(HMS)之一 - 将协方差矩阵适应进化策略(CMA-ES)纳入其本地阶段。 CMA-ES是一种随机优化算法,在某种意义上模仿了基于人口的进化算法的行为,而无明确地发展人口。这样,它避免了一定程度的相关成本,对客观函数的多种评估。我们比较HMS对相对简单的多模式基准问题和工程问题的性能。为此,我们考虑两种配置:CMA-ES和标准海(简单的进化算法)。结果表明,局部阶段中具有CMA-es的HMS需要较少的客观函数评估以提供相同的准确性,使得这种方法比标准海更多更有效。 (c)2019 Elsevier B.v.保留所有权利。

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