Enhanced firefly algorithm for constrained numerical optimization

I. Strumberger, N. Bačanin, M. Tuba
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引用次数: 40

Abstract

Firefly algorithm is one of the recent and very promising swarm intelligence metaheuristics for tackling hard optimization problems. While firefly algorithm has been proven on various numerical and engineering optimization problems as a robust metaheuristic, it was not properly tested on a wide set of constrained benchmark functions. We performed testing of the original firefly algorithm on a set of standard 13 benchmark functions for constrained problems and it exhibited certain deficiencies, primarily insufficient exploration during early stage of the search. In this paper we propose enhanced firefly algorithm where main improvements are correlated to the hybridization with the exploration mechanism from another swarm intelligence algorithm, introduction of new exploitation mechanism and parameter-based tuning of the exploration-exploitation balance. We tested our approach on the same standard benchmark functions and showed that it not only overcame weaknesses of the original firefly algorithm, but also outperformed other state-of-the-art swarm intelligence algorithms.
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约束数值优化的改进萤火虫算法
萤火虫算法是一种新兴的、非常有前途的群体智能元启发式算法,用于解决困难的优化问题。虽然萤火虫算法作为一种鲁棒的元启发式算法已经在各种数值和工程优化问题上得到了证明,但它并没有在广泛的约束基准函数集上得到适当的测试。我们在一组针对约束问题的13个标准基准函数上对原始萤火虫算法进行了测试,发现它存在一定的不足,主要是在搜索的早期阶段探索不足。本文提出了一种增强的萤火虫算法,其主要改进在于与另一种群体智能算法的探索机制进行杂交,引入新的探索机制,以及基于参数的探索-利用平衡调整。我们在相同的标准基准函数上测试了我们的方法,结果表明它不仅克服了原始萤火虫算法的弱点,而且优于其他最先进的群体智能算法。
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