Title :
Implementation of ANN-based sensorless induction motor drives
Author :
Vas, P. ; Stronach, A.F. ; Rashed, M. ; Neuroth, M.
Author_Institution :
Aberdeen Univ., UK
Abstract :
The paper discusses the DSP implementation of various speed-sensorless induction motor drives which incorporate artificial intelligence (AI). The first drive is a medium performance induction motor drive and contains a minimal configuration neural-network-based speed estimator. Although the neural network was trained by using simulation results only, it was successfully implemented in a drive employing a 3 kW cage induction motor. However, the same speed estimator ANN was also successfully used in a drive with a 2.2 kW motor. Speed estimators using feedforward multilayer and recursive artificial neural networks (ANNs) are also compared. In addition to an ANN-based speed estimator, the second drive contains a simple fuzzy-logic-based system with a minimal rule-base, which improves the low-speed performance. The third drive is an improved speed-sensorless DTC drive employing a simple predictive torque error minimization technique. The experimental results show that the implemented AI-based drives give satisfactory performance in a wide speed range. The drive schemes are simple to implement and the memory requirements are modest. The DSP used is the TMS320C30
Keywords :
induction motor drives; 2.2 kW; 3 kW; DSP implementation; TMS320C30; artificial intelligence; cage induction motor; control design; control performance; control simulation; feedforward multilayer neural networks; fuzzy-logic-based system; induction motor drives; predictive torque error minimization; recursive neural networks; sensorless neurocontrol scheme; speed control; speed estimation;
Conference_Titel :
Electrical Machines and Drives, 1999. Ninth International Conference on (Conf. Publ. No. 468)
Conference_Location :
Canterbury
Print_ISBN :
0-85296-720-9
DOI :
10.1049/cp:19991045