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JayaL: A Novel Jaya Algorithm Based on Elite Local Search for Optimization Problems

机译:Jayal:基于Elite本地搜索优化问题的新型Jaya算法

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Many metaheuristic methods have been proposed to solve engineering problems in literature studies. One of these is the Jaya algorithm, a new population-based optimization algorithm that has been suggested in recent years to solve complex and continuous optimization problems. Jaya basically adopts the best solution by avoiding the worst ones. Although this process accelerates the convergence for the solution, it causes concessions in the population and results in inadequate local search capacity. To increase the search capability and exploitation performance of the Jaya algorithm, a new local search procedure—Elite Local Search—has been added to the Jaya algorithm in this study without making any changes in its basic search capability. Thus, an efficient and robust strategy that can overcome continuous optimization problems is presented. This new algorithm created with the elite local search procedure is called JayaL. To demonstrate the performance and accuracy of JayaL, 20 different well-known benchmark functions in the literature were used. In addition to JayaL algorithm, these functions were solved with differential evolution (DE), particle swarm optimization (PSO), artificial bee colony (ABC), dragonfly algorithm (DA), grasshopper optimization algorithm (GOA), atom search optimization (ASO) and Jaya algorithms. The performances of JayaL, DE, PSO, ABC DA, GOA, ASO and Jaya algorithms were compared with each other, and experimental results were supported by convergence graphs. At the same time, JayaL has been applied to constrained realworld engineering problems. According to the analyses, it has been concluded that JayaL algorithm is a robust and efficient method for continuous optimization problems.
机译:已经提出了许多成形方法来解决文学研究中的工程问题。其中一个是Jaya算法,这是一种新的基于人群的优化算法,近年来旨在解决复杂和连续优化问题。 Jaya基本上通过避免最坏的情况来采用最佳解决方案。虽然此过程加速了解决方案的收敛性,但它导致人口的优势,并导致本地搜索容量不足。为了提高Jaya算法的搜索能力和开发性能,在本研究中,已添加到Jaya算法中的新本地搜索程序精英本地搜索,而不会在其基本搜索能力中进行任何变化。因此,介绍了可以克服连续优化问题的有效和强大的策略。使用ELITE本地搜索过程创建的新算法称为Jayal。为了展示Jayal的性能和准确性,使用了20个不同的众所周知的基准功能。除了Jayal算法之外,这些功能是用差分演进(DE),粒子群优化(PSO),人造群菌落(ABC),蜻蜓算法(DA),蚱蜢优化算法(GOA),Atom搜索优化(ASO)解决了这些功能和Jaya算法。彼此比较了Jayal,DE,PSO,ABC DA,GOA,ASO和JAYA算法的性能,并通过收敛图支持实验结果。与此同时,Jayal已被应用于受约束的RealWorld工程问题。根据分析,已经得出结论,Jayal算法是一种稳健而有效的方法,用于连续优化问题。

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