Exponential stabilization of non-autonomous delayed neural networks via Riccati equations
Version 2 2024-05-30, 09:20Version 2 2024-05-30, 09:20
Version 1 2016-10-13, 10:57Version 1 2016-10-13, 10:57
journal contribution
posted on 2024-05-30, 09:20authored byMV Thuan, LV Hien, VN Phat
This paper concerns with the problem of exponential stabilization for a class of non-autonomous neural networks with mixed discrete and distributed time-varying delays. Two cases of discrete time-varying delay, namely (i) slowly time-varying; and (ii) fast time-varying, are considered. By constructing an appropriate Lyapunov-Krasovskii functional in case (i) and utilizing the Razumikhin technique in case (ii), we establish some new delay-dependent conditions for designing a memoryless state feedback controller which stabilizes the system with an exponential convergence of the resulting closed-loop system. The proposed conditions are derived through solutions of some types of Riccati differential equations. Applications to control a class of autonomous neural networks with mixed time-varying delays are also discussed in this paper. Some numerical examples are provided to illustrate the effectiveness of the obtained results.