Lion Swarm Optimization Based on Balanced Local and Global Search with Different Distributions

Keqin Jiang, M. Jiang
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引用次数: 1

Abstract

In view of the shortcomings of the basic lion swarm optimization, which is prone to local optimization and low convergence accuracy in partial optimization, this paper proposes a lion swarm optimization based on balanced local and global search with different distributions. The improved algorithm adds chaos search and different distributed perturbation strategies to the positions of lions in the earlier stage, which improves the optimization efficiency of the algorithm in the optimization process. These disturbance strategies include variations based on Cauchy mutation, t probability distribution, and levy flight. The simulation results of the test functions show that the optimization accuracy of the improved algorithm is much higher than that of the basic lion swarm optimization. The improved algorithm effectively prevents the swarm optimization from easily falling into the local optimization value in the extremely difficult optimization functions.
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基于局部与全局平衡搜索的不同分布狮群优化
针对基本狮群优化算法容易出现局部寻优和局部寻优收敛精度低的缺点,提出了一种基于不同分布的均衡局部搜索和全局搜索的狮群优化算法。改进算法在前期将混沌搜索和不同分布摄动策略加入到狮子的位置中,提高了算法在优化过程中的优化效率。这些干扰策略包括基于柯西突变、t概率分布和levy飞行的变异。测试函数的仿真结果表明,改进算法的优化精度远高于基本的狮群优化算法。改进算法有效地防止了群优化算法在极难优化函数中容易陷入局部最优值。
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