Title :
A novel approach of an adaptive neuro-PI vector controller fed induction-motor servo drives
Author :
Ebrahim, Essamudin A.
Author_Institution :
Power Electron. & Energy Conversion Dept., Electron. Res. Inst., Cairo, Egypt
Abstract :
This paper presents a novel approach for a very simple architecture of an induction-motor (IM) servo drive using only one single neuron (SN) as an online self-tuning artificial neural network (ANN). The action of this controller is similar to an adaptive PI-controller. The adaptation of the proposed controller is achieved by self-tuning for both weight and bias of the SN. Also, using an adaptive learning rate insures adaptation to overcome uncertainty and nonlinearity of the plant. Based on an indirect field-oriented vector control algorithm, the ANN speed tracking controller is developed and integrated with the adaptive hysteresis current-controlled pulse-width modulation (PWM) inverter to offer a high performance IM-drive. The complete drive system is implemented in a real time using a digital signal processor (DSP) controller board DS1102 on a laboratory 1-hp IM. Using the experimental rig, the performance of the proposed drive is evaluated under various speed trajectories. The test results validate the efficacy of the proposed simple controller for precise speed and position tracking of IM drive. Furthermore, the use of SN makes the drive system robust, accurate, and insensitive to parameter variations. Also, the controller contributes towards time consumption reduction through the real-time DSP control algorithm.
Keywords :
PWM invertors; adaptive control; digital signal processing chips; induction motor drives; machine control; neurocontrollers; nonlinear control systems; robust control; servomotors; two-term control; uncertain systems; ANN; DS1102; DSP controller board; IM servo drive; PWM inverter; SN; adaptive hysteresis current-controlled pulse-width modulation inverter; adaptive learning rate; adaptive neuro-PI vector controller fed induction-motor servo drives; digital signalprocessor controller board; indirect field-oriented vector control algorithm; online self-tuning artificial neural network; parameter variation insensitivity; plant nonlinearity; plant uncertainty; robust control; single neuron; time consumption reduction; Adaptive control; Artificial neural networks; Digital signal processing; Neurons; Programmable control; Pulse width modulation inverters; Servomechanisms; Signal processing algorithms; Tin; Uncertainty;
Conference_Titel :
Intelligent Robots and Systems, 2002. IEEE/RSJ International Conference on
Print_ISBN :
0-7803-7398-7
DOI :
10.1109/IRDS.2002.1041591