蝠鲼觅食优化算法在现实世界受限优化问题中的性能评估

Gülnur Yildizdan
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引用次数: 0

摘要

元启发式算法通常是解决受限工程设计优化问题的首选。选择这些算法的最重要原因是它们能保证在合理的时间内做出令人满意的反应。基于蜂群智能的蝠鲼觅食优化算法(MRFO)是一种用于解决工程应用问题的元启发式算法。本研究在 CEC2020 真实世界约束优化问题套件中的 19 个机械工程优化问题上评估了 MRFO 的性能。为了提高 MRFO 的性能,对该算法进行了三处修改,从而提出了增强型蝠鲼觅食优化(EMRFO)算法。对所做修改的效果分别进行了分析和解释。将其性能与文献中的算法进行了比较,结果表明,EMRFO 是一种成功的、适用于该问题套件的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PERFORMANCE EVALUATIONS OF THE MANTA RAY FORAGING OPTIMIZATION ALGORITHM IN REAL-WORLD CONSTRAINED OPTIMIZATION PROBLEMS
Metaheuristic algorithms are often preferred for solving constrained engineering design optimization problems. The most important reason for choosing these algorithms is that they guarantee a satisfactory response within a reasonable time. The swarm intelligence-based manta ray foraging optimization algorithm (MRFO) is a metaheuristic algorithm proposed to solve engineering applications. In this study, the performance of MRFO is evaluated on 19 mechanical engineering optimization problems in the CEC2020 real-world constrained optimization problem suite. In order to increase the MRFO performance, three modifications are made to the algorithm; in this way, the enhanced manta ray foraging optimization (EMRFO) algorithm is proposed. The effects of the modifications made are analyzed and interpreted separately. Its performance has been compared with the algorithms in the literature, and it has been shown that EMRFO is a successful and preferable algorithm for this problem suite.
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