Enhanced Particle Swarm Optimization via Reinforcement Learning

Di Wu, G. Wang
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Abstract

Particle swarm optimization (PSO) method is a well-known optimization algorithm, which shows good performance in solving different optimization problems. However, PSO usually suffers from slow convergence. In this paper, a reinforcement learning method is used to enhance PSO in convergence by replacing the uniformly distributed random number in the updating function by a random number generated from a well-selected normal distribution. The mean and variance of the normal distribution are estimated from the current state of each individual through a policy net. The historic behavior of the swarm group is learned to update the policy net and guide the selection of parameters of the normal distribution. The proposed algorithm is tested with numerical test functions and the results show that the convergence rate of PSO can be improved with the proposed Reinforcement Learning method (RL-PSO).
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基于强化学习的增强粒子群优化
粒子群算法(PSO)是一种著名的优化算法,在解决各种优化问题时表现出良好的性能。然而,粒子群算法通常存在收敛速度慢的问题。本文采用强化学习方法,将更新函数中均匀分布的随机数替换为选择好的正态分布生成的随机数,增强粒子群算法的收敛性。正态分布的均值和方差是通过政策网从每个个体的当前状态估计出来的。学习群群的历史行为来更新策略网并指导正态分布参数的选择。用数值测试函数对所提算法进行了测试,结果表明所提强化学习方法(RL-PSO)可以提高粒子群算法的收敛速度。
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