Electronics Optics & Control, Volume. 29, Issue 9, 84(2022)
Research on Wavelet Neural Network PID Control in Ball and Plate System
Aiming at the shortcomings of ball and plate systemsuch as severe PID control oscillationtedious manual PID tuning and poor dynamic qualitya scheme combining Wavelet Neural Network (WNN) identification with WNN-PID self-tuning parameters is studied.Firstlyaccording to the strong coupling characteristics of ball and platea ball and plate system model consisting of two parts is established by Lagrange equation.SecondlyWNN-PID controller is constructed to overcome the problems of tedious manual tuning and poor stability of PID.Considering that gradient descent method and fixed learning rate are easy to fall into extreme valuethe momentum gradient and AdaDec algorithm are used to accelerate the training speed of the network.Thenthe convergence of the system is verified by Lyapunov stability theory.Finally the Matlab simulation shows that the stability and robustness of the proposed stragegy in ball and plate system are better than those of conventional PID and BP-PID strategies.
Get Citation
Copy Citation Text
XIA Guofeng, XIANG Fenghong, YANG Liwei. Research on Wavelet Neural Network PID Control in Ball and Plate System[J]. Electronics Optics & Control, 2022, 29(9): 84
Category:
Received: Aug. 29, 2021
Accepted: --
Published Online: Oct. 16, 2022
The Author Email: