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Modified Differential Evolution for Dynamic Optimization Problems

机译:动态优化问题的修正差分进化

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摘要

Modified differential evolution algorithm (MDE) is proposed for dynamic optimization problems. The new algorithm divides the population into two, a main subpopulation and an assistant one. The main subpopulation keeps invariant and searches locally. The assistant subpopulatioin is re-initialized at random and searches globally. The results show that MDE can track the changing extreme promptly and accurately and is capable of efficiently solving dynamic optmization problems.
机译:针对动态优化问题,提出了改进的差分进化算法(MDE)。新算法将总体分为两个,一个主要的子群体和一个辅助子群体。主要子种群保持不变并在本地搜索。辅助子种群会随机重新初始化并进行全局搜索。结果表明,MDE可以迅速,准确地跟踪变化,并能够有效解决动态优化问题。

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