基于模糊逻辑的粒子群优化多优化规划

Lei Wang, Q. Kang, F. Qiao, Qidi Wu
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引用次数: 13

摘要

在粒子群优化算法中,将多最优分布状态的知识引入到粒子群运动的一般规划中,可以有效地避免在初始计算阶段陷入局部最优。但如果在优化过程中不能动态调整多优化规划的比例因子,则会限制算法的性能。本文将模糊逻辑引入到多最优动态规划过程中,提出了一种基于模糊逻辑和多最优规划的粒子群算法,并进行了仿真。仿真结果表明,该算法的一般收敛性优于传统粒子群算法、模糊自适应粒子群算法和静态多最优规划粒子群算法。
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Fuzzy logic based multi-optimum programming in particle swarm optimization
It is effective to avoid falling into local optimums at the original stage of the computation that the knowledge of multi-optimum distribution state is introduced into general programming of the particle swarm movement in particle swarm optimization algorithm. But if the proportion factor of multi-optimum programming can not be dynamic adjusted in the optimization process, the performance of the algorithm is limited. In this paper, fuzzy logic was introduced into the process of multi-optimum dynamic programming, and a kind of particle swarm algorithm based on fuzzy logic and multi-optimum programming was put forward and simulated. Simulation results show that, the general convergence character of the algorithm derived in this paper has better performance than traditional PSO, fuzzy adaptive PSO and static multi-optimum programming PSO algorithm proposed by authors previously.
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