ARTÍCULO
Adaptive neural security control for networked singular systems under deception attacks
Fecha
2022Registro en:
2169-3536
10.1109/ACCESS.2022.3161672
Autor
Zhao, Ning
Ao, Wengang
Zhang, Huiyan
Minchala Avila, Luis Ismael
Institución
Resumen
This paper studies the issue of the adaptive neural security controller design for uncertain networked singular systems in the presence of deception attacks. Considering that the attack signal is unknown, the neural networks technique is exploited to approximate the attack signal, which eliminates the assumption that the attack signal has a known upper bound. By combining the state feedback with the estimated information of the attack, the impact of the attack is effectively compensated. Furthermore, a novel Lyapunov function, including the decomposed state vector and the weight matrix estimation error, is established to evaluate the bounded area of the system state. Finally, a numerical example substantiates the validity of the theoretical results