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Adaptive Neural Quantized Control for a Class of MIMO Switched Nonlinear Systems With Asymmetric Actuator Dead-Zone

Xie, Kan; Lyu, Ziliang; Liu, Zhi*; Zhang, Yun; Chen, C. L. Philip
Science Citation Index Expanded
广东工业大学

摘要

This paper concentrates on the adaptive state-feedback quantized control problem for a class of multiple-input-multiple-output (MIMO) switched nonlinear systems with unknown asymmetric actuator dead-zone. In this study, we employ different quantizers for different subsystem inputs. The main challenge of this study is to deal with the coupling between the quantizers and the dead-zone nonlinearities. To solve this problem, a novel approximation model for the coupling between quantizer and dead-zone is proposed. Then, the corresponding robust adaptive law is designed to eliminate this nonlinear term asymptotically. A direct neural control scheme is employed to reduce the number of adaptive laws significantly. The backstepping-based adaptive control scheme is also presented to guarantee the system performance. Finally, two simulation examples are presented to show the effectiveness of our control scheme.

关键词

Switches MIMO communication Nonlinear systems Adaptive systems Switched systems Backstepping Adaptive quantized control asymmetric actuator dead-zone backstepping multiple-input-multiple-output (MIMO) switched nonlinear systems