Sabahi Kamel, Ghaemi Sehraneh, Liu Jianxing, Badamchizadeh Mohammad Ali
Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz, Iran.
Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz, Iran.
ISA Trans. 2017 Nov;71(Pt 2):185-195. doi: 10.1016/j.isatra.2017.09.009. Epub 2017 Sep 28.
In this paper a new indirect type-2 fuzzy neural network predictive (T2FNNP) controller has been proposed for a class of nonlinear systems with input-delay in presence of unknown disturbance and uncertainties. In this method, the predictor has been utilized to estimate the future state variables of the controlled system to compensate for the time-varying delay. The T2FNN is used to estimate some unknown nonlinear functions to construct the controller. By introducing a new adaptive compensator for the predictor and controller, the effects of the external disturbance, estimation errors of the unknown nonlinear functions, and future sate estimation errors have been eliminated. In the proposed method, using an appropriate Lyapunov function, the stability analysis as well as the adaptation laws is carried out for the T2FNN parameters in a way that all the signals in the closed-loop system remain bounded and the tracking error converges to zero asymptotically. Moreover, compared to the related existence predictive controllers, as the number of T2FNN estimators are reduced, the computation time in the online applications decreases. In the proposed method, T2FNN is used due to its ability to effectively model uncertainties, which may exist in the rules and data measured by the sensors. The proposed T2FNNP controller is applied to a nonlinear inverted pendulum and single link robot manipulator systems with input time-varying delay and compared with a type-1 fuzzy sliding predictive (T1FSP) controller. Simulation results indicate the efficiency of the proposed T2FNNP controller.
本文针对一类存在未知干扰和不确定性且具有输入延迟的非线性系统,提出了一种新型的间接二型模糊神经网络预测(T2FNNP)控制器。在该方法中,利用预测器来估计受控系统的未来状态变量,以补偿时变延迟。使用二型模糊神经网络(T2FNN)来估计一些未知非线性函数,以构建控制器。通过为预测器和控制器引入一种新的自适应补偿器,消除了外部干扰、未知非线性函数的估计误差以及未来状态估计误差的影响。在所提出的方法中,通过使用适当的李雅普诺夫函数,对T2FNN参数进行稳定性分析以及自适应律推导,使得闭环系统中的所有信号保持有界,并且跟踪误差渐近收敛到零。此外,与相关的现有预测控制器相比,由于减少了T2FNN估计器的数量,在线应用中的计算时间减少。在所提出的方法中,使用T2FNN是因为它能够有效地对传感器测量的规则和数据中可能存在的不确定性进行建模。将所提出的T2FNNP控制器应用于具有输入时变延迟的非线性倒立摆和单连杆机器人机械臂系统,并与一型模糊滑模预测(T1FSP)控制器进行比较。仿真结果表明了所提出的T2FNNP控制器的有效性。