多种群策略下的差分进化算法

Ishani Chatterjee, Mengchu Zhou
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引用次数: 7

摘要

差分进化算法是一种求解连续域上优化问题的进化算法。为了解决高维全局优化问题,本文研究了多种群策略下差分进化算法的性能。原始DE算法生成一组初始的合适解。多种群策略将集合分成几个子集。这些子集根据DE算法独立演化并相互连接。这有助于保持初始集合的多样性。在此基础上,比较了不同变异技术组合在几种优化算法上的性能。最后对11个著名的基准优化函数的计算结果,揭示了子种群数量与DE性能之间的一些有趣的关系。
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Differential evolution algorithms under multi-population strategy
A differential evolution (DE) algorithm is an evolutionary algorithm for optimization problems over a continuous domain. To solve high dimensional global optimization problems, this work investigates the performance of differential evolution algorithms under a multi-population strategy. The original DE algorithm generates an initial set of suitable solutions. The multi population strategy divides the set into several subsets. These subsets evolve independently and connect with each other according to the DE algorithm. This helps in preserving the diversity of the initial set. Furthermore, a comparison of combination of different mutation techniques on several optimization algorithms is studied to verify their performance. Finally the computational results on eleven well-know benchmark optimization functions, reveal some interesting relationship between the number of subpopulations and performance of the DE.
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