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Chaotic League Championship Algorithms

机译:混沌联盟锦标赛算法

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Classical optimization algorithms are insufficient in large-scale combinatorial problems and in nonlinear problems. Hence, heuristic optimization algorithms have been proposed. General purposed metaheuristic methods are evaluated in nine different groups: biology-based, physics-based, social-based, music-based, chemical-based, sports-based, mathematics-based, and hybrid methods which are combinations of these. Recently, a sports-based search and optimization algorithm entitled as league championship algorithm (LCA) has been proposed. LCA is a population-based, metaheuristic optimization algorithm that simulates a championship for general optimization with artificial teams and artificial league for several weeks. In this algorithm, according to the league program, a number is given to the couple of teams that will match and the result of match is determined as loser or winner. Winning or losing the game is closely related to power of teams. Teams are intended to improve the formation of the current team throughout the season to win the game in the coming weeks. Chaotic maps seem to improve the convergence speed and accuracy of optimization algorithms. Increasing global convergence speed and prevention of getting stuck on local solutions of LCA with chaos have been proposed for the first time in this study. In this paper, six different chaotic LCAs have been proposed and explained in detail. Comparative performance results have been examined in complex benchmark functions. Promis- ing results have been obtained from the experimental results. Combining results appeared in different fields like LCA and complex dynamics can increase quality in some optimization problems and the chaos can be the wanted process.
机译:古典优化算法在大规模的组合问题和非线性问题中不足。因此,已经提出了启发式优化算法。一般紫色的成群质方法在九个不同组中评估:基于生物学,基于物理,基于音乐,基于音乐的,基于体育的,基于数学的,以及它们的混合方法。最近,已经提出了一种基于体育的搜索和优化算法,被列为联赛冠军算法(LCA)。 LCA是一种基于人口的群体优化算法,模拟了与人工团队和人工联盟一般优化的锦标赛数周。在该算法中,根据联盟计划,将多个数字给出将匹配的团队,并且匹配结果被确定为失败者或获胜者。赢得或失去游戏与团队的权力密切相关。团队旨在改善全球当前团队的形成,在未来几周赢得比赛。混沌映射似乎提高了优化算法的收敛速度和准确性。在本研究中首次提出了增加全球收敛速度和预防陷入LCA局部解决方案的LCA解决方案。在本文中,已经提出并详细解释了六种不同的混沌LCA。在复杂的基准函数中检测了比较绩效结果。销售结果已从实验结果中获得。结合结果出现在LCA和复杂动态等不同领域,可以在一些优化问题中提高质量,并且混乱可以是所需的过程。

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