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Generalized immigration schemes for dynamic evolutionary multiobjective optimization

机译:动态进化多目标优化的广义移民方案

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The insertion of atypical solutions (immigrants) in Evolutionary Algorithms populations is a well studied and successful strategy to cope with the difficulties of tracking optima in dynamic environments in single-objective optimization. This paper studies a probabilistic model, suggesting that centroid-based diversity measures can mislead the search towards optima, and presents an extended taxonomy of immigration schemes, from which three immigrants strategies are generalized and integrated into NSGA2 for Dynamic Multiobjective Optimization (DMO). The correlation between two diversity indicators and hypervolume is analyzed in order to assess the influence of the diversity generated by the immigration schemes in the evolution of non-dominated solutions sets on distinct continuous DMO problems under different levels of severity and periodicity of change. Furthermore, the proposed immigration schemes are ranked in terms of the observed offline hypervolume indicator.
机译:在进化算法种群中插入非典型解(移民)是一种经过充分研究和成功的策略,可以解决在单目标优化中动态环境中跟踪最优的困难。本文研究了一种概率模型,表明基于质心的多样性测度可能会误导最佳搜索,并提出了扩展的移民方案分类法,从中可以归纳出三种移民策略,并将其整合到NSGA2中进行动态多目标优化(DMO)。分析了两个多样性指标与超量之间的相关性,以评估在不同的严重程度和变化周期下,移民计划所产生的多样性对非主导解决方案集的演化对不同的连续DMO问题的影响。此外,根据观察到的离线超量指标对拟议的移民计划进行排名。

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