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首页> 外文期刊>Cybernetics, IEEE Transactions on >Combining Crowding Estimation in Objective and Decision Space With Multiple Selection and Search Strategies for Multi-Objective Evolutionary Optimization
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Combining Crowding Estimation in Objective and Decision Space With Multiple Selection and Search Strategies for Multi-Objective Evolutionary Optimization

机译:将目标和决策空间中的拥挤估计与多目标进化优化的多种选择和搜索策略相结合

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摘要

Many multi-objective evolutionary algorithms (MOEAs) have been successful in approximating the Pareto Front. However, well-distributed solutions in the objective and decision spaces are still required in many real-life applications. In this paper, a novel MOEA is proposed to this problem. Distinct from other MOEAs, the proposed algorithm suggests a framework, which includes two crowding estimation methods, multiple selection methods for mating and search strategies for variation, to improve the MOEA' s searching ability, and the diversity of its solutions. The algorithm emphasizes the importance of using the decision space and the objective space diversities. The objective space crowding and decision space crowding distances are designed using different ideas. To produce new individuals, three different types of mating selections and their respective search strategies are constructed for the main population and the two sparse populations, with the help of the two crowding measurements. Finally, based on the experimental tests on 17 unconstrained multi-objective optimization problems, the proposed algorithm is demonstrated to have better results compared to several state-of-the-art MOEAs. A detailed analysis on the effectiveness and robustness of the framework is also presented.
机译:许多多目标进化算法(MOEA)已成功地逼近帕累托阵线。但是,在许多实际应用中,仍然需要在目标和决策空间中分布良好的解决方案。本文针对这一问题提出了一种新颖的MOEA。与其他MOEA不同,该算法提出了一个框架,该框架包括两种拥挤估计方法,用于配对的多种选择方法和用于变异的搜索策略,以提高MOEA的搜索能力以及其解决方案的多样性。该算法强调了使用决策空间和目标空间多样性的重要性。目标空间拥挤距离和决策空间拥挤距离是使用不同的想法设计的。为了产生新的个体,在两个拥挤测量的帮助下,针对主要种群和两个稀疏种群构建了三种不同类型的交配选择及其各自的搜索策略。最后,基于对17个无约束的多目标优化问题的实验测试,与几种最新的MOEA相比,该算法具有更好的结果。还对框架的有效性和健壮性进行了详细分析。

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