Title :
A global ANN algorithm for induction motor based on optimal preview control theory
Author :
Negm, M.M. ; Mantawy, A.H. ; Shwehdi, M.H.
Author_Institution :
Ain Shams Univ., Cairo, Egypt
Abstract :
A global artificial neural network (ANN), algorithm for on-line speed control of a three-phase induction motor (IM), is proposed. This algorithm is based on the optimal preview controller. It comprises a novel error system and vector control of the IM. The IM model includes three input variables, which are the stator angular frequency and the two components of the stator space voltage vector, and three output variables, which are the rotor angular velocity and the two components of the stator space flux linkage. The objective of the proposed algorithm is to achieve rotor speed control, field orientation control and constant flux control. In order to emulate the characteristic of the optimal preview controller within global and accurate performance system, a neural network-based technique for the on-line purpose of speed control of IM, is implemented. This technique is utilized based on optimizing the speed control problem using the optimal preview control law. The numerical solution is used to train a feed ANN using the radial basis method. Successive trained data is utilized to obtain global stability operation for the IM over the whole control intervals. This data includes, several desired speed trajectories and different load torque operations in addition to the motor parameter variations. Digital computer simulation results have been carried-out to demonstrate the feasibility, reliability and effectiveness of the proposed global ANN algorithm.
Keywords :
angular velocity control; digital simulation; induction motors; machine vector control; neural nets; optimal control; optimisation; predictive control; rotors; stators; torque; ANN; IM; artificial neural network; digital computer simulation; field orientation control; flux control; load torque operation; motor parameter variations; on-line speed control; optimal preview control theory; optimization; radial basis method; rotor angular velocity control; speed trajectorie; stator angular frequency; stator space flux linkage; stator space voltage vector; three-phase induction motor; vector control; Artificial neural networks; Control theory; Error correction; Frequency; Induction motors; Input variables; Machine vector control; Optimal control; Stators; Velocity control;
Conference_Titel :
Power Tech Conference Proceedings, 2003 IEEE Bologna
Print_ISBN :
0-7803-7967-5
DOI :
10.1109/PTC.2003.1304656