Abstract:
A position sensorless Permanent Magnet Synchronous Motor (PMSM) drive based on
single layer Recurrent Neural Network (RNN) is presented in this research work. In the
proposed control methodology, instead of a usual 6-Switch 3-Phase (6S3P) inverter a 4-
Switch 3-Phase (453P) inverter is used. This reduces the cost of the inverter, the switching
losses, and the complexity of the control board for generating six Pulse Width Modulated
(PWM) signals. A simulation model of the drive system is developed and used in this
study. The motor equations are written in rotor fixed d-q reference frame. A Proportional
plus Integral (Pt) controller is used to process the speed error to generate the reference
torque current. The RNN estimator is used to estimate stator flux components along the
stator fixed stationary axes (a-fl). In this study, the Correlated Real Time Recurrent
Learning (CRTRL) algorithm is used for training the neural network. The rotor angle is
used in vector rotator to generate the reference phase currents. Hysteresis current controller
block controls the switching of the three phase inverter to apply voltage to the motor stator.
Numerical simulation is carried out in order to verify the effectiveness of the proposed
control system. Simulation studies show that the proposed RNN estimator can be used to
accurately measure the motor fluxes and rotor angle over a wide speed range. The
robustness of the drive system is tested for different operating conditions, i.e., sudden load
torque change, parameter deviation, speed reversal, ramp change of speed, load
disturbance, presence of computational error, etc. The control system is found to work
acceptably under these conditions. It is also simple and low cost to implement in a practical
environment.
Description:
This thesis is submitted to the Department of Electrical and Electronic Engineering, Khulna University of Engineering & Technology in partial fulfillment of the requirements for the degree of Master of Science in Electrical and Electronic Engineering, May 2012.
Cataloged from PDF Version of Thesis.
Includes bibliographical references (pages 62-65).