4.7 Article

Gradient-based neural networks for solving periodic Sylvester matrix equations

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.jfranklin.2022.05.023

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资金

  1. Excellent Youth Fund of Henan Natural Science Foundation [212300410058]
  2. Team Project Funding of Scientic Research Innovation for Colleges and Universities in Henan Province [22IRTSTHN011]
  3. Foundation of University Young Key Teacher of Henan Province [2020GGJS027]
  4. Key scientific research projects of colleges and universities in Henan Province [21A110005]
  5. science and technology research project in Henan Province [222102210135]

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This paper discusses neural network solutions for the periodic Sylvester matrix equation (PSME) and constructs a linear gradient-based neural network model. By intervening appropriate activation functions, the linear model is extended to a nonlinear form and its convergence is proved. Furthermore, the convergence effects of the model with different activation functions are explored, and the effectiveness of the proposed model is verified through numerical examples.
This paper considers neural network solutions of a category of matrix equation called periodic Sylvester matrix equation (PSME), which appear in the process of periodic system analysis and design. A linear gradient-based neural network (GNN) model aimed at solving the PSME is constructed, whose state is able to converge to the unknown matrix of the equation. In order to obtain a better convergence effect, the linear GNN model is extended to a nonlinear form through the intervention of appropriate activation functions, and its convergence is proved through theoretical derivation. Furthermore, the different convergence effects presented by the model with various activation functions are also explored and analyzed, for instance, the global exponential convergence and the global finite time convergence can be realized. Finally, the numerical examples are used to confirm the validity of the proposed GNN model for solving the PSME considered in this paper as well as the superiority in terms of the convergence effect presented by the model with different activation functions. (c) 2022 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.

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