摘要
In this paper, we propose an adaptive neural-network-based asymptotic control algorithm for a class of non-linear systems subject to unknown actuator quantization. To this end, we exploit the sector property of the quantization non-linearity and transform actuator quantization control problem into analyzing its upper bounds, which are then handled by a dynamic loop gain function-based approach. In our adaptive control scheme, there is only one parameter required to be estimated online for updating weights of neural networks. Within the framework of Lyapunov theory, it is shown that the proposed algorithm ensures that all the signals in the closed-loop system are ultimately bounded. Moreover, an asymptotic tracking error is obtained by means of introducing Barbalat's lemma to the proposed adaptive law.
- 出版日期2018-12
- 单位广东工业大学