Novel Asymptotic Synchronization Criteria on Riemann-Liouville Derivative Type Nonidentical Delayed Neural Networks
Novel Asymptotic Synchronization Criteria on Riemann-Liouville Derivative Type Nonidentical Delayed Neural Networks
Hongmei Zhang(Anqing Normal University); Hai Zhang(Anqing Normal University); Weiwei Zhang(Anqing Normal University); Chen Wang(Anqing Normal University)
21권 4호, 1373~1381쪽
초록
This article focuses on investigating the asymptotic synchronization of two nonidentical RiemannLiouville (R-L) fractional-order delayed neural networks (FDNNs). Compared with the existing literature, the considered model is concerned with the nonidentical FDNNs rather than identical NNs. Under a novel feedback controller, two asymptotic synchronization criteria on FDNNs are established by utilizing the Lyapunov direct method. The derived criteria are concise and easy to test in actual applications. A numerical example is given to verify the availability of the presented results for nonidentical FDNNs.
Abstract
This article focuses on investigating the asymptotic synchronization of two nonidentical RiemannLiouville (R-L) fractional-order delayed neural networks (FDNNs). Compared with the existing literature, the considered model is concerned with the nonidentical FDNNs rather than identical NNs. Under a novel feedback controller, two asymptotic synchronization criteria on FDNNs are established by utilizing the Lyapunov direct method. The derived criteria are concise and easy to test in actual applications. A numerical example is given to verify the availability of the presented results for nonidentical FDNNs.
- 발행기관:
- 제어·로봇·시스템학회
- 분류:
- 제어계측공학