萤火虫算法在调度中的应用

Arcely P. Napalit, Melvin A. Ballera
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引用次数: 0

摘要

元启发式在短时间内为现实情况提供了高质量的解决方案;它们是一个引人入胜的研究领域,在解决问题方面取得了重大进展。仿生群智能(SI)算法在不同的研究中都有体现,生物进化的启发和原理为计算提供了新的途径和稳健的技术。本文的主要目的是将萤火虫算法应用于调度过程。实验验证了基于RLMH调度策略的目标函数的有效性。实验集中在五种不同的迭代和两种吸引力值上。在此基础上发现,不同的吸引力值和迭代值会产生不同的FA结果。比较吸引力表明,在生成最佳解决方案方面,β =2有显著提高,但在萤火虫的运动和时间执行方面没有显著提高。实验实现了66.37%的目标函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Firefly Algorithm in Scheduling
Metaheuristics offer a high-quality solution in a short period of time for real-world situations; they are a fascinating field of research that has made significant advances in solving problems. Bio-inspired Swarm Intelligent (SI) algorithm is represented in different studies' umbrellas, where inspiration and principles of biological evolution develop a new way and robust techniques in computing. The paper's primary purpose is to apply the Firefly Algorithm process in scheduling. The study experimented and tested the efficiency of the developed objective function based on the scheduling policy of RLMH. The experiment focused on the five different iterations and two values for attractiveness. Based on the findings that FA generates different results with different values of attractiveness and iterations. Comparing attractiveness shows a significant improvement in β =2 in generating best solutions, but not the fireflies' movements and time execution. The experiment achieved 66.37% of the objective function.
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