基于状态的潜在博弈分布式优化中通信和记忆的影响

Steve Yuwono, Andreas Schwung, Dorothea Schwung
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引用次数: 4

摘要

本文讨论了基于通信和记忆的学习器对智能柔性制造单元分布式自优化的影响。具体来说,我们采用了最近提出的基于状态的潜在博弈框架,该框架已被证明在多智能体系统中允许分布式优化是成功的。我们首先为个体参与者增加了额外的通信能力,并分析了不同参与者之间状态和行动通信的有效性。其次,我们将记忆状态纳入到玩家的学习动态中,并分析它们对学习表现的影响。该方法受到基于记忆的强化学习的启发。然而,以往的研究很少涉及分布式制造控制。我们认为,在多智能体设置的制造控制中,探索基于通信和记忆的方法的潜在用途将是重要的。因此,所提出的方法被应用于散装良好的实验室工厂,提供了各种改进效果的彻底实验分析,并取得了非常令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Communication and Memory in State-Based Potential Game-based Distributed Optimization
In this paper, we discuss the impact of communication and memory-based learners on distributed self-optimization of smart and flexible manufacturing units. Specifically, we employ the recently proposed framework of state-based potential games, which has proven to be successful in allowing distributed optimization in multi-agent systems. We first augment the framework with additional communication capabilities for the individual players and analyze the efficacy of state and action communications within the different players. Second, we incorporate memory states within the learning dynamics of the players and analyze their impact on the learning performance. The proposed method is inspired by the promising results of memory-based reinforcement learning. However, previous studies have rarely dealt with distributed manufacturing control. We believe that it will be important to explore the potential use of the communication and memory-based approaches in manufacturing control with multi-agent settings. Hence, the proposed method is applied to a bulk good laboratory plant providing a thorough experimental analysis of the effect of the various improvements with very encouraging results.
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