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A Stable Distributed Neural Controller for Physically Coupled Networked Discrete-Time System via Online Reinforcement Learning

机译:一种稳定的分布式神经控制器,用于通过在线强化学习进行物理耦合网络离散时间系统

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摘要

The large scale, time varying, and diversification of physically coupled networked infrastructures such as power grid and transportation system lead to the complexity of their controller design, implementation, and expansion. For tackling these challenges, we suggest an online distributed reinforcement learning control algorithm with the one-layer neural network for each subsystem or called agents to adapt the variation of the networked infrastructures. Each controller includes a critic network and action network for approximating strategy utility function and desired control law, respectively. For avoiding a large number of trials and improving the stability, the training of action network introduces supervised learning mechanisms into reduction of long-term cost. The stability of the control system with learning algorithm is analyzed; the upper bound of the tracking error and neural network weights are also estimated. The effectiveness of our proposed controller is illustrated in the simulation; the results indicate the stability under communication delay and disturbances as well.
机译:物理耦合网络基础设施的大规模,时间变化和多样化,如电网和运输系统,导致控制器设计,实现和扩展的复杂性。为了解决这些挑战,我们建议使用单层神经网络的在线分布式强化学习控制算法,用于每个子系统或称为代理,以适应网络化基础设施的变化。每个控制器包括分别估计批评网络和动作网络,用于近似策略效用功能和期望的控制法。为了避免大量的试验和提高稳定性,行动网络的培训将监督的学习机制引入减少长期成本。分析了具有学习算法的控制系统的稳定性;还估计跟踪误差和神经网络权重的上限。我们提出的控制器的有效性在模拟中说明了;结果表明了通信延迟和干扰下的稳定性。

著录项

  • 来源
    《Complexity 》 |2018年第2期| 共15页
  • 作者

    Sun Jian; Li Jie;

  • 作者单位

    Southwest Univ Sch Elect &

    Informat Engn Chongqing Peoples R China;

    State Grid Chongqing Elect Power Co Elect Power Res Inst Chongqing Peoples R China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 大系统理论 ;
  • 关键词

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