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Neural network based iterative learning predictive control design for mechatronic systems with isolated nonlinearity
Authors:Ridong Zhang  Anke Xue  Jianzhong Wang  Shuqing Wang  Zhengyun Ren
Affiliation:1. Information and Control Institute, Hangzhou Dianzi University, Hangzhou 310018, PR China;2. National Key Laboratory of Industrial Control Technology, Institute of Advanced Process Control, Zhejiang University, Hangzhou 310027, PR China;3. Department of Automation, Donghua University, Shanghai 200051, PR China
Abstract:The paper presents a new nonlinear predictive control design for a kind of nonlinear mechatronic drive systems, which leads to the improvement of regulatory capacity for both reference input tracking and load disturbance rejection. The nonlinear system is first treated into an equal linear time-variant system plus a nonlinear part using a neural network, then an iterative learning linear predictive controller is developed with a similar structure of PI optimal regulator and with setpoint feed forward control. Because the overall control law is a linear one, this design gives a direct and also effective multi-step prediction method and avoids the complicated nonlinear optimization. The control law is also an accurate one compared with traditional linearized method. Besides, changes of the system state variables are considered in the objective function with control performance superior to conventional state space predictive control designs which only consider the predicted output errors. The proposed method is compared with conventional state space predictive control method and classical PI optimal control method. Tracking performance, robustness and disturbance rejection are enlightened.
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