Improved Manta Ray Foraging Optimization Using Opposition-based Learning for Optimization Problems

Davut Izci, Serdar Ekinci, Erdal Eker, M. Kayri
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引用次数: 17

Abstract

Manta ray foraging optimization (MRFO) algorithm is a bio-inspired meta-heuristic algorithm. It has been proposed as an alternative optimization approach for real-world engineering problems. However, MRFO is not good at fine-tuning of solutions around optima and suffers from slow convergence speed because of its stochastic nature. It needs to be improved due to latter issues. Therefore, in this study, opposition-based learning (OBL) technique was used together with MRFO in order to obtain an effective structure for optimization problems. The proposed structure has been named as opposition-based Manta ray foraging optimization (OBL-MRFO). In the proposed algorithm, the advantage of OBL in terms of considering the opposite solutions was used to have an algorithm with better performance. The proposed algorithm has been tested on four different benchmark functions such as Sphere, Rosenbrock, Schwefel and Ackley. Statistical analyses were performed through comparing the performance of OBL-MRFO with the other algorithms such as salp swarm algorithm, atom search optimization and original MRFO. The results showed that the proposed algorithm is more effective and has better performance than other algorithms.
基于对立学习的优化问题改进蝠鲼觅食优化
蝠鲼觅食优化算法(MRFO)是一种仿生元启发式算法。它已被提出作为现实世界工程问题的一种替代优化方法。然而,MRFO算法由于其随机性,不擅长对最优解进行微调,收敛速度慢。由于后面的问题,它需要改进。因此,本研究将基于对立的学习(OBL)技术与MRFO技术相结合,以获得优化问题的有效结构。所提出的结构被命名为基于对立的蝠鲼觅食优化(OBL-MRFO)。在本文算法中,利用OBL在考虑相反解方面的优势,使算法具有更好的性能。本文提出的算法已经在Sphere、Rosenbrock、Schwefel和Ackley四个不同的基准函数上进行了测试。通过将OBL-MRFO算法与salp swarm算法、原子搜索优化算法和原始MRFO算法的性能进行统计分析。结果表明,该算法比其他算法更有效,具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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