Zhang Xiuyu, Li Bin, Li Zhi, Yang Chenguang, Chen Xinkai, Su Chun-Yi
IEEE Trans Neural Netw Learn Syst. 2022 Feb;33(2):667-680. doi: 10.1109/TNNLS.2020.3028500. Epub 2022 Feb 3.
Hysteresis is a complex nonlinear effect in smart materials-based actuators, which degrades the positioning performance of the actuator, especially when the hysteresis shows asymmetric characteristics. In order to mitigate the asymmetric hysteresis effect, an adaptive neural digital dynamic surface control (DSC) scheme with the implicit inverse compensator is developed in this article. The implicit inverse compensator for the purpose of compensating for the hysteresis effect is applied to find the compensation signal by searching the optimal control laws from the hysteresis output, which avoids the construction of the inverse hysteresis model. The adaptive neural digital controller is achieved by using a discrete-time neural network controller to realize the discretization of time and quantizing the control signal to realize the discretization of the amplitude. The adaptive neural digital controller ensures the semiglobally uniformly ultimately bounded (SUUB) of all signals in the closed-loop control system. The effectiveness of the proposed approach is validated via the magnetostrictive-actuated system.
迟滞是基于智能材料的驱动器中的一种复杂非线性效应,它会降低驱动器的定位性能,尤其是当迟滞表现出不对称特性时。为了减轻不对称迟滞效应,本文提出了一种带有隐式逆补偿器的自适应神经数字动态表面控制(DSC)方案。用于补偿迟滞效应的隐式逆补偿器通过从迟滞输出中搜索最优控制律来找到补偿信号,从而避免了逆迟滞模型的构建。自适应神经数字控制器通过使用离散时间神经网络控制器来实现时间离散化,并对控制信号进行量化以实现幅度离散化。自适应神经数字控制器确保了闭环控制系统中所有信号的半全局一致最终有界(SUUB)。通过磁致伸缩驱动系统验证了所提方法的有效性。