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A surrogate-based particle swarm optimization algorithm for solving optimization problems with expensive black box functions

机译:基于代理的粒子群优化算法,用于解决具有昂贵黑盒函数的优化问题

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摘要

In engineering applications, computer experiments such as finite element analysis and computational fluid dynamics are often used to model and analyse structural behaviours. In this article, a surrogate-based particle swarm optimization algorithm is proposed for solving optimization problems with expensive black box functions. An approximate optimization problem in which the black box functions are replaced by the hybrid surrogate models is efficiently solved to search and adjust the global optimum position during the iterative process. Since the presented method combines the merits of traditional optimization algorithms and particle swarm optimization, only a small number of particles is needed to achieve the optimal position after several iterations. Therefore, the method shows great advantages in solving engineering optimization problems with expensive black box functions. Several examples are presented to demonstrate the feasibility and effectiveness of the proposed method.
机译:在工程应用中,计算机实验(例如有限元分析和计算流体动力学)通常用于建模和分析结构行为。本文提出了一种基于代理的粒子群优化算法来解决具有昂贵黑盒函数的优化问题。有效地解决了用混合代理模型替换黑匣子功能的近似优化问题,以在迭代过程中搜索和调整全局最优位置。由于所提出的方法结合了传统优化算法和粒子群优化算法的优点,因此经过几次迭代后,仅需少量粒子即可获得最佳位置。因此,该方法在解决具有昂贵黑盒功能的工程优化问题方面显示出很大的优势。给出了几个例子来证明所提方法的可行性和有效性。

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