This paper is devoted to dealing with the dynamic event-triggered $ H_{\infty} $ quantized control for neural networks with sensor saturations and stochastic deception attacks. To save the limited network resources, a dynamic event-triggered scheme is offered, which includes the general one. And a lower trigger frequency can be obtained by appropriately adjusting the triggering error. Then, a new closed-loop quantized control model is established under a dynamic event-triggered scheme, sensor saturations, and stochastic deception attacks, which is described by two independent Bernoulli-distributed variables. Moreover, by Lyapunov-Krasovskii functional theory, a new $ H_{\infty} $ performance criterion is given, and based on the criterion, the controller design approach is derived. Finally, simulations are listed to verify the validity of derived methods.
Nan WangXiao‐Heng ChangPing Xia
Ni YangRuiyi GaoYimeng FengHuan Su
Haiyu SongPeng ShiWen‐An ZhangCheng‐Chew LimLi Yu
Sitong ShangLinchuang ZhangYingnan Pan