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An improved partheno-genetic algorithm for the multi-constrained problem of curling match arrangement

机译:一种改进的卷曲匹配布置的多约束问题的单位遗传算法

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Curling-match arrangement is a multi-constrained optimization problem in the real world. An improved partheno-genetic algorithm is used for solving the problem in this paper. In order to handle the complicated relationships among the particular constraints in curling-match, an eliminate-selection strategy is proposed to increase population diversity. Two genetic operators, targeted self-crossover operator and fixed-random self-crossover operator, are designed to ensure that the algorithm can convergence rapidly. With bi-level optimization, the improved partheno-genetic algorithm enhances its search ability. An orthogonal method is used to obtain the algorithm parameters. Simulation results demonstrate that the improved algorithm can solve the curling-match multi-constrained optimization problem efficiently.
机译:卷曲匹配安排是现实世界中的多约束优化问题。改进的帕尼族遗传算法用于解决本文的问题。为了处理卷曲匹配中特定约束之间的复杂关系,提出了消除选择策略来增加人口多样性。两个遗传操作员,有针对性的自交流操作员和固定随机自交流操作员,旨在确保算法可以快速收敛。通过双级优化,改进的Partheno-engetic算法增强了其搜索能力。正交方法用于获得算法参数。仿真结果表明,改进的算法可以有效地解决卷曲匹配的多约束优化问题。

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