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同顺序Flow shop问题的一种遗传强化学习算法
引用本文:潘燕春,周泓,冯允成,魏佳呈.同顺序Flow shop问题的一种遗传强化学习算法[J].系统工程理论与实践,2007,27(9):115-122.
作者姓名:潘燕春  周泓  冯允成  魏佳呈
作者单位:1. 深圳大学,管理学院,深圳,518060
2. 北京航空航天大学,经济管理学院,北京,100083
基金项目:国家自然科学基金;教育部高等学校博士学科点专项科研基金;教育部跨世纪优秀人才培养计划
摘    要:针对Flow-shop排序问题的固有复杂性,设计了一种遗传强化学习算法.首先,引入状态变量和行动变量,把组合优化的排序问题转换成序贯决策问题加以解决;其次,设计了一个Q-学习算法和基于组合算子的遗传算法相集成,遗传算法利用染色体的优良模式及其适应值信息来指导智能体的学习过程,提高学习效率和效果,强化学习则对染色体进行局部优化进而改良遗传群体,二者有机结合共同解决Flow-shop排序问题;再次,提出了多种适应性策略,使算法关键参数能够周期性递变,以更好地在深度搜索和广度搜索之间均衡;最后,仿真优化实验结果验证了该算法的有效性.

关 键 词:遗传算法  强化学习  自适应
文章编号:1000-6788(2007)09-0115-08
修稿时间:2003年6月30日

A Genetic Reinforcement Learning Algorithm for Permutation Flow-shop Scheduling Problem
PAN Yan-chun,ZHOU Hong,FENG Yun-cheng,WEI Jia-cheng.A Genetic Reinforcement Learning Algorithm for Permutation Flow-shop Scheduling Problem[J].Systems Engineering —Theory & Practice,2007,27(9):115-122.
Authors:PAN Yan-chun  ZHOU Hong  FENG Yun-cheng  WEI Jia-cheng
Abstract:Considering the inherent complexity of Flow-shop scheduling problem,an algorithm named Genetic Reinforcement Learning,GRL,is designed to solve it.First,state variable and action variable are employed to transform the combinational-optimization scheduling problem into sequential-decision problem.Secondly,a QLearning algorithm is proposed to integrate with a Genetic Algorithm based on combined operators.The agent is supervised by chromosomes' good modes and their fitness information.As a result,the agent's learning performance is improved.The genetic population is also meliorated by the local optimization of Reinforcement Learning to each chromosome.So GA and RL are integrated in GRL to solve the Flow-shop scheduling problem.Thirdly,several self-adaptive policies are introduced into GRL algorithm to make it balance in exploitation and exploration.Finally,the algorithm is validated by simulation experiments.
Keywords:Flow-shop
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