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Multiobjective Electromagnetic Optimization Based on a Non-Dominated Sorting Genetic Approach with a Chaotic Crossover Operator

机译:基于带混沌交叉算子的非支配排序遗传方法的多目标电磁优化

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The Non-dominated Sorting Genetic Algorithm H (NSGA-II) algorithm is an effective methodology to solve multiobjective optimization problems. A modified NSGA-H to seek the Pareto front of electromagnetic multiobjective design problems is proposed in this paper. We propose the use of chaotic sequences based on Zaslavskii map in NSGA-II crossover operator. The proposed method is tested on TEAM 22 benchmark optimization problem with promising results.
机译:非支配排序遗传算法H(NSGA-II)算法是解决多目标优化问题的有效方法。提出了一种改进的NSGA-H,以寻求电磁多目标设计问题的帕累托前沿。我们建议在NSGA-II交叉算子中使用基于Zaslavskii映射的混沌序列。该方法在TEAM 22基准优化问题上得到了验证。

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