Adaptive Load Balancing Between Mobile Robots Through Learning in an Artificial Neural System

D. Yeung, G. Bekey
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引用次数: 6

Abstract

This paper provides a framework for a class of methods to solve the adaptive load balancing problem in flexible manufacturing systems. The control system is composed of a group of associative learning automata which interact with each other in a game-theoretic sense. Each automaton makes use of a global reinforcement signal for learning the control strategy under different state input. The control actions suggested by the automata interact through a constraint satisfaction network to give a globally legal set of control actions. Using existing techniques in neural network research, we propose one particular method of the class by implementing both the associative reinforcement learning and the constraint satisfaction modules by connectionist networks. Comparisons of this method with other related studies will be discussed. We expect our current simulation work to provide empirical support for future analytical study.
基于人工神经系统学习的移动机器人自适应负载平衡
本文为解决柔性制造系统中自适应负载平衡问题的一类方法提供了一个框架。控制系统由一组联想学习自动机组成,这些自动机在博弈论意义上相互作用。每个自动机都使用一个全局强化信号来学习不同状态输入下的控制策略。由自动机建议的控制动作通过约束满足网络相互作用,给出全局合法的控制动作集。利用现有的神经网络研究技术,我们提出了一种特殊的方法,通过连接网络实现联想强化学习和约束满足模块。本文将讨论该方法与其他相关研究的比较。我们期望我们目前的模拟工作能为未来的分析研究提供实证支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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