Improving Initial Transients of Online Learning Echo State Network Control System via Feedback Adjustment

Junyi Shen
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Abstract

Echo state networks (ESNs) have gained popularity in online learning control systems due to their easy training. However, online learning ESN controllers often undergo slow convergence and produce unexpected outputs during the initial transient phase. Existing solutions, such as prior training or control mode switching, can be complex and have drawbacks. This work offers a simple yet effective method to address these initial transients by integrating a feedback proportional-differential (P-D) controller. Simulation results show that the proposed control system exhibits fast convergence and strong robustness against plant dynamics and hyperparameter changes. This work is expected to offer practical benefits for engineers seeking to implement online learning ESN control systems.
通过反馈调整改进在线学习回声状态网络控制系统的初始瞬态
回声状态网络(ESN)由于易于训练,在在线学习控制系统中颇受欢迎。然而,在线学习 ESN 控制器往往收敛缓慢,并在初始瞬态阶段产生意外输出。现有的解决方案,如事先训练或控制模式切换,可能会很复杂,而且存在缺点。本研究提供了一种简单而有效的方法,通过集成反馈比例-微分 (P-D) 控制器来解决这些初始瞬态问题。仿真结果表明,所提出的控制系统收敛速度快,对工厂动态和超参数变化具有很强的稳健性。这项工作有望为寻求实施在线学习 ESN 控制系统的工程师带来实际好处。
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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