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Dynamic particle swarm optimization using a wavelet mutation strategy for composite function optimization

机译:基于小波突变策略的动态粒子群优化复合函数优化

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In this paper, a novel dynamic particle swarm optimization is considered for composite function optimization. Because the complex computation problem exists commonly in practice, solving this problem is significant. The dynamic neighborhood topology and wavelet mutation could assist the PSO algorithm cooperate with neighbor particles and overcome the premature problem. The results offer insight into how the proposed algorithm has the better effectiveness in solving composite functions.
机译:在本文中,考虑了一种新颖的动态粒子群优化算法来进行复合函数优化。由于在实践中通常存在复杂的计算问题,因此解决该问题意义重大。动态邻域拓扑和小波变异可以帮助PSO算法与相邻粒子协同工作,克服早熟问题。结果提供了对所提出的算法如何在解决复合函数方面具有更好的有效性的见解。

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