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Reinforcement learning in a distributed market-based production control system

机译:基于分布式市场的生产控制系统中的强化学习

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The paper presents an adaptive iterative distributed scheduling algorithm that operates in a market-based production control system. The manufacturing system is agentified, thus, every machine and job is associated with its own software agent. Each agent learns how to select presumably good schedules, by this way the size of the search space can be reduced. In order to get adaptive behavior and search space reduction, a triple-level learning mechanism is proposed. The top level of learning incorporates a simulated annealing algorithm, the middle (and the most important) level contains a reinforcement learning system, while the bottom level is done by a numerical function approximator, such as an artificial neural network. The paper suggests a cooperation technique for the agents, as well. It also analyzes the time and space complexity of the solution and presents some experimental results. (C) 2006 Elsevier Ltd. All rights reserved.
机译:本文提出了一种在基于市场的生产控制系统中运行的自适应迭代分布式调度算法。制造系统经过代理化,因此,每台机器和作业都与自己的软件代理相关联。每个代理都学习如何选择大概的时间表,通过这种方式可以减小搜索空间的大小。为了获得自适应行为并减少搜索空间,提出了一种三层学习机制。最高级别的学习包含模拟退火算法,中级(也是最重要的)包含增强学习系统,而底层则由数值函数逼近器(例如人工神经网络)完成。本文还为代理商提出了一种合作技术。它还分析了解决方案的时间和空间复杂性,并提供了一些实验结果。 (C)2006 Elsevier Ltd.保留所有权利。

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