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A Novel Adaptive Gain Strategy for Stochastic Learning Control

journal contribution
posted on 2024-11-02, 21:49 authored by Xiang Cheng, Hao Jiang, Dong Shen, Xinghuo YuXinghuo Yu
This article studies the conflicting goals of high-precision tracking and quick convergence speed, which is a longstanding problem in the learning control of stochastic systems. In such systems, a decreasing gain sequence is necessary to ensure the asymptotic convergence of the generated input sequence to a fixed limit. However, the convergence speed is adversely affected by gain sequences of this nature. In this article, we propose a novel multistage learning control strategy to resolve this conflict, where each stage consists of several iterations. The learning gain remains constant in each stage but is reduced at the transition from a given stage to the subsequent stage. The switching iteration between two stages is determined by the tracking performance index of the contracted input error and the accumulated noise drift. Furthermore, an improved mechanism is proposed to optimize the lengths of the different stages. The asymptotic convergence of the input sequence generated by the newly proposed strategy is strictly established by thoroughly analyzing the properties of the proposed gain sequence. Numerical simulations are presented to verify the theoretical results.

Funding

Dynamics and Resilience of Complex Network Systems with Switching Topology

Australian Research Council

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History

Journal

IEEE Transactions on Cybernetics

Volume

53

Issue

8

Start page

5264

End page

5275

Total pages

12

Publisher

IEEE

Place published

United States

Language

English

Copyright

© 2022 IEEE

Former Identifier

2006118699

Esploro creation date

2024-03-10