基于量子行为的鸡群优化算法及其收敛性分析

Zhang Qiuqiao, Bing Wang, Lingyan Wei, Wang Haishan
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引用次数: 5

摘要

针对鸡群优化算法容易陷入局部最优、过早收敛、收敛速度慢等缺陷,提出了一种基于量子行为的鸡群优化算法。基于鸡群个体信息,建立了量子化势井模型。根据原更新公式得到的现有个体极值和全局极值,采用蒙特卡罗随机抽样完成个体极值的更新,并在个体极值和全局极值附近平行角度进行搜索,提高了算法的局部搜索性能。同时,讨论了量子行为鸡群优化算法的收敛性,证明了量子行为鸡群优化算法是一种全局收敛的优化算法。利用基本测试函数对QCSO的优化能力进行了测试,结果表明,与原算法相比,该算法的优化性能有很大提高。
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Chicken swarm optimization algorithm based on quantum behavior and its convergence analysis
Aiming at the defects of chicken swarm optimization algorithm, such as easy to fall into local optimal, premature convergence and slow convergence, a chicken swarm optimization algorithm based on quantum behavior is proposed in this paper. A quantized potential well model is established based on the individual information of chicken swarm. According to the existing individual extremum and global extremum obtained by the original updating formula, Monte Carlo random sampling is adopted to complete the updating of individual extremum, and the search is conducted at a parallel Angle near individual extremum and global extremum, which improves the local search performance of the algorithm. At the same time, the convergence of quantum-behavior chicken swarm optimization algorithm is discussed in this paper, and QCSO is proved to be a globally convergent optimization algorithm. The optimization capability of QCSO is tested by using basic test function, and the results show that the optimization performance of this algorithm is greatly improved compared with the original algorithm.
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