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A clonal selection algorithm for dynamic multimodal function optimization

机译:一种动态多模函数优化的克隆选择算法

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The objective of dynamic multimodal optimization problems (DMMOPs) is to find all global optima in a dynamic environment. Although dynamic optimization problems (DOPs) have been widely studied in the field of nature-inspired computation, DMMOPs have not yet been paid significant attention yet. It is a challenging task for the classic clonal selection algorithm (CSA) to track all the moving global optima of dynamic multimodal optimization problems. The population of the classic CSA tends to converge to a single optimum, and the shortage of population diversity prevents the classic CSA from adapting to environmental changes. To address these limitations, this paper proposes a so-called dynamic multimodal clonal selection algorithm (DMMCSA). DMMCSA incorporates a niching method called nearest-better clustering, and adapts the scale factor of the hypermutation operator according to the distances among individuals. Experiments on benchmark problems show that DMMCSA significantly outperforms CSA in terms of tracking all the global optima of DMMOPs.
机译:动态多式化优化问题(DMMOPS)的目的是在动态环境中找到所有全局Optima。虽然在自然灵感的计算领域中广泛研究了动态优化问题(DOP),但DMMOP尚未得到重大关注。经典克隆选择算法(CSA)是一种具有挑战性的任务,以跟踪动态多模级优化问题的所有移动全局最佳才能。经典CSA的人口倾向于收敛到一个最佳状态,并且群体多样性的短缺阻止了经典CSA适应环境变化。为了解决这些限制,本文提出了一种所谓的动态多模克隆选择算法(DMMCSA)。 DMMCSA包含一个名为最近的聚类的幂位方法,并根据个人之间的距离来适应高级uture运算符的比例因子。基准问题的实验表明,DMMCSA在跟踪DMMOPS的全局最优方式方面显着优于CSA。

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