Title :
Neural-network-based self-tuning PI controller for precise motion control of PMAC motors
Author :
Wang, Gou-Jen ; Fong, Chuan-Tzueng ; Chang, Kang J.
Author_Institution :
Dept. of Mech. Eng., Nat. Chung-Hsing Univ., Taichung, Taiwan
fDate :
4/1/2001 12:00:00 AM
Abstract :
In general, proportional plus integral (PI) controllers used in computer numerically controlled machines possess fixed gain. They may perform well under some operating conditions, but not all. To increase the robustness of fixed-gain PI controllers, we propose a new neural-network-based self-tuning PI control system. In this new approach, a well-trained neural network supplies the PI controller with suitable gain according to each operating condition pair (torque, angular velocity, and position error) detected. To demonstrate the advantages of our proposed neural-network-based self-tuning PI control technique, both computer simulations and experiments were executed in this research. During the computer simulation, the direct experiment method was adopted to better model the problem of hysteresis in the AC servo motor. In real experiments, a PC-based controller was used to carry out the control tasks. Results of both computer simulations and experiments show that the newly developed dynamic PI approach outperforms the fixed PI scheme in rise time, precise positioning, and robustness
Keywords :
AC motors; machine control; motion control; neurocontrollers; permanent magnet motors; robust control; servomotors; two-term control; AC servo motor; PC-based controller; PMAC motors; angular velocity; computer simulations; hysteresis; neural-network-based self-tuning PI controller; position error; precise motion control; proportional plus integral controllers; robustness; torque; well-trained neural network; Angular velocity; Angular velocity control; Computer simulation; Control systems; Motion control; Neural networks; Pi control; Proportional control; Robust control; Torque control;
Journal_Title :
Industrial Electronics, IEEE Transactions on