Selective decentralization to improve reinforcement learning in unknown linear noisy systems

Thanh Nguyen, S. Mukhopadhyay
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引用次数: 1

Abstract

In this paper, we answer the question of to what extend selective decentralization could enhance the learning and control performance when the system is noisy and unknown. Compared to the previous works in selective decentralization, in this paper, we add the system noise as another complexity in the learning and control problem. Thus, we only perform analysis for some simple toy examples of noisy linear system. In linear system, the Halminton-Jaccobi-Bellman (HJB) equation becomes Riccati equation with closed-form solution. Our previous framework in learning and control unknown system is based on the following principle: approximating the system using identification in order to apply model-based solution. Therefore, this paper would explore the learning and control performance on two aspects: system identification error and system stabilization. Our results show that selective decentralization show better learning performance than the centralization when the noise level is low.
选择性去中心化改进未知线性噪声系统的强化学习
在本文中,我们回答了当系统有噪声和未知时,选择性去中心化能在多大程度上提高学习和控制性能的问题。与以往的选择性去中心化工作相比,本文在学习和控制问题中加入了系统噪声作为另一个复杂性。因此,我们仅对噪声线性系统的一些简单示例进行分析。在线性系统中,halminton - jacobbi - bellman (HJB)方程变成具有闭解的Riccati方程。我们以前的学习和控制未知系统的框架是基于以下原则的:使用识别来近似系统,以便应用基于模型的解决方案。因此,本文将从系统辨识误差和系统稳定化两个方面来探讨系统的学习和控制性能。研究结果表明,当噪声水平较低时,选择性去中心化比集中化具有更好的学习性能。
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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