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Efficient Generalized Surrogate-Assisted Evolutionary Algorithm for High-Dimensional Expensive Problems

机译:高效普通代理辅助进化算法,用于高维昂贵问题

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摘要

Engineering optimization problems usually involve computationally expensive simulations and many design variables. Solving such problems in an efficient manner is still a major challenge. In this paper, a generalized surrogate-assisted evolutionary algorithm is proposed to solve such high-dimensional expensive problems. The proposed algorithm is based on the optimization framework of the genetic algorithm (GA). This algorithm proposes to use a surrogate-based trust region local search method, a surrogate-guided GA (SGA) updating mechanism with a neighbor region partition strategy and a prescreening strategy based on the expected improvement infilling criterion of a simplified Kriging in the optimization process. The SGA updating mechanism is a special characteristic of the proposed algorithm. This mechanism makes a fusion between surrogates and the evolutionary algorithm. The neighbor region partition strategy effectively retains the diversity of the population. Moreover, multiple surrogates used in the SGA updating mechanism make the proposed algorithm optimize robustly. The proposed algorithm is validated by testing several high-dimensional numerical benchmark problems with dimensions varying from 30 to 100, and an overall comparison is made between the proposed algorithm and other optimization algorithms. The results show that the proposed algorithm is very efficient and promising for optimizing high-dimensional expensive problems.
机译:工程优化问题通常涉及计算昂贵的模拟和许多设计变量。以有效的方式解决这些问题仍然是一个重大挑战。本文提出了一种广义替代辅助进化算法来解决这种高维昂贵的问题。该算法基于遗传算法(GA)的优化框架。该算法提出使用基于代理的信任区域本地搜索方法,基于优化过程中简化克里格的预期改进infize infifining标准,具有邻居区域分区策略的代理引导的GA(SGA)更新机制,以及预先改进的缺陷标准。 SGA更新机制是所提出的算法的特征。这种机制在代理者和进化算法之间进行了融合。邻居区域分区策略有效地保留了人口的多样性。此外,SGA更新机制中使用的多个代理使得所提出的算法鲁棒地优化。通过测试尺寸从30到100的尺寸测试尺寸的若干高维数值基准问题来验证所提出的算法,并且在所提出的算法和其他优化算法之间进行总体比较。结果表明,该算法非常有效,很有希望优化高维昂贵的问题。

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