层次强化粒子群的优先向量研究

Q4 Engineering
K. Wende
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引用次数: 0

摘要

为了解决全局搜索范围和局部搜索精度的平衡问题以及惯性权值的固定调整策略问题,提出了一种分层强化学习的粒子群优先向量算法。首先,在标准粒子群算法中引入交叉操作的粒子优先位置;将单步粒子位置的顺序相加操作划分为寻找中间粒子。将交叉和变异操作相结合,以保持精英粒子群。其次,将惯性权值的调整策略作为动作;在粒子群算法的每一次迭代中进行分层学习,选择具有最大折现收益的策略。实验证明了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of preferential vector of particle swarm with hierarchical reinforcement
A preferential vector algorithm of particle swarm with hierarchical reinforcement learning is proposed to solve the balance problem of global searching range and local searching precision, and the problem of fixedly adjusting strategy of inertia weight. Firstly, the preferential particle position with crossover operation was introduced on the standard particle swarm algorithm. The sequential adding operations on single step of particle position were divided into the seeking of middle particles. The operations of crossover and mutation were combined to keep the elite particle swarm. Secondly, the adjusting strategies of inertia weight were treated as the actions. The hierarchical learning was executed in every iteration of particle swarm and the strategy with maximal discounted profit was selected. The experiment proved the validity of the algorithm.
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来源期刊
International Journal of Wireless and Mobile Computing
International Journal of Wireless and Mobile Computing Computer Science-Computer Science (all)
CiteScore
0.80
自引率
0.00%
发文量
76
期刊介绍: The explosive growth of wide-area cellular systems and local area wireless networks which promise to make integrated networks a reality, and the development of "wearable" computers and the emergence of "pervasive" computing paradigm, are just the beginning of "The Wireless and Mobile Revolution". The realisation of wireless connectivity is bringing fundamental changes to telecommunications and computing and profoundly affects the way we compute, communicate, and interact. It provides fully distributed and ubiquitous mobile computing and communications, thus bringing an end to the tyranny of geography.
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