1. Improved Stability Criteria for Delayed Neural Networks Using a Quadratic Function Negative-Definiteness Approach.
- Author
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Chen, Jun, Zhang, Xian-Ming, Park, Ju H., and Xu, Shengyuan
- Subjects
- *
STABILITY criterion , *TIME-varying networks , *LINEAR matrix inequalities , *DEEP learning , *SYMMETRIC matrices - Abstract
This brief is concerned with the stability of a neural network with a time-varying delay using the quadratic function negative-definiteness approach reported recently. A more general reciprocally convex combination inequality is taken to introduce some quadratic terms into the time derivative of a Lyapunov–Krasovskii (L–K) functional. As a result, the time derivative of the L–K functional is estimated by a novel quadratic function on the time-varying delay. Moreover, a simple way is introduced to calculate the coefficients of a quadratic function, which avoids tedious works by hand as done in some studies. The L–K functional approach is applied to derive a hierarchical type stability criterion for the delayed neural networks, which is of less conservatism in comparison with some existing results through two well-studied numerical examples. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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