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Hybrid Neural Adaptive Control for Practical Tracking of Markovian Switching Networks

journal contribution
posted on 2024-11-02, 14:00 authored by Bin Hu, Xinghuo YuXinghuo Yu, Zhi-Hong Guan, Juergen Kurths, Guanrong Chen
While neural adaptive control is widely used for dealing with continuous- or discrete-time dynamical systems, less is known about its mechanism and performance in hybrid dynamical systems. This article develops analytical tools to investigate the neural adaptive tracking control of the hybrid Markovian switching networks with heterogeneous nonlinear dynamics and randomly switched topologies. A gradient-descent adaptation law built on neural networks (NNs) is presented for efficient distributed adaptive control. It is shown that the proposed control scheme can guarantee a stable closed-loop error system for any positive control gain and tuning gain. The tracking error is demonstrated to be practically uniformly exponentially stable with a threshold in the mean-square sense. This study further reveals how the topological structure affects the NN function, by measuring the influence of the switched topologies on the learning performance.

Funding

Engineering evolving complex network systems through structure intervention

Australian Research Council

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History

Journal

IEEE Transactions on Neural Networks and Learning Systems

Volume

32

Issue

5

Start page

2157

End page

2168

Total pages

12

Publisher

Institute of Electrical and Electronics Engineers

Place published

United States

Language

English

Copyright

© IEEE 2020

Former Identifier

2006102906

Esploro creation date

2021-04-21

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