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Hybrid differential evolution harmony search algorithm for numerical optimization problems

机译:求解数值优化问题的混合差分进化和声搜索算法

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To improve the optimization performance of harmony search algorithm, a hybrid differential evolution harmony search (HDEHS) algorithm is presented in this paper. In this algorithm, mutation and crossover operation are adopted instead of harmony memory consideration and pitch adjustment operation, which greatly improves the convergence rate. Moreover, the key parameters such as mutagenic factor and crossover rate are adjusted dynamically to balance the local and global search. Through several benchmark experiment simulations, the proposed algorithm has demonstrated stronger convergence and stability than the original harmony search algorithm and its typical improved algorithms reported in recent literatures.
机译:为了提高和声搜索算法的优化性能,提出了一种混合差分进化和声搜索(HDEHS)算法。该算法采用变异和交叉运算代替和声记忆和音调调整运算,大大提高了收敛速度。此外,关键参数(例如诱变因子和交叉率)会动态调整,以平衡本地搜索和全局搜索。通过几次基准实验仿真,与最近的文献报道的原始和声搜索算法及其典型的改进算法相比,所提出的算法具有更强的收敛性和稳定性。

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