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Differential evolution for dynamic environments with unknown numbers of optima

机译:未知最优数量的动态环境的差分演化

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This paper investigates optimization in dynamic environments where the numbers of optima are unknown or fluctuating. The authors present a novel algorithm, Dynamic Population Differential Evolution (DynPopDE), which is specifically designed for these problems. DynPopDE is a Differential Evolution based multi-population algorithm that dynamically spawns and removes populations as required. The new algorithm is evaluated on an extension of the Moving Peaks Benchmark. Comparisons with other state-of-the-art algorithms indicate that DynPopDE is an effective approach to use when the number of optima in a dynamic problem space is unknown or changing over time.
机译:本文研究了动态环境中的最佳数量未知或波动的优化。作者提出了一种新颖的算法,即动态种群差异演化(DynPopDE),该算法专门针对这些问题而设计。 DynPopDE是一种基于差异进化的多种群算法,可根据需要动态生成和删除种群。在“移动峰基准”的扩展上评估了新算法。与其他最新算法的比较表明,当动态问题空间中的最佳数量未知或随时间变化时,DynPopDE是一种有效的方法。

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