Speed Control of BLDC Motor Using Neural Network Based Model Reference Adaptive Control (MRAC) For Electric Vehicle Drive (In the Case of Yaris Car)
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ASTU
Abstract
Electric vehicles are widely considered a viable solution to reduce fossil oil dependence and
environmental footprints in the ground transportation sector. Electric vehicle reduce oil
consumption and air pollutant emission where concerns about oil security and availability
and the negative environmental impact of petroleum-based transportation systems. Different
Motors are being used in Electric Vehicles. Brushless DC motors showed best performance
as compared to other motors like(brushed DC motor, Induction motor, Brushless AC motor
and other motor), because of its great efficiency, high energy density, Less maintenance,
Long operating life, Low electric noise, Better speed versus torque characteristics and etc.
Different researchers have proposed different controller model in order to control speed of
Brushless DC Motors. Among these controllers, Model reference adaptive controller is the
one which is a component controller that emulates the reference model behavior efficiently.
Conventional MRAC scheme is used for linear systems. However, since BLDC is nonlinear
system by nature using conventional MRAC is very difficult. Hence in this thesis it proposed
Neural Network based MRAC to control the speed of BLDC motors to compensate its
nonlinearity which is not considered in conventional MRAC. The proposed neural network based model reference adaptive controller can significantly improve the system behavior
and force the system to follow the reference model and minimize the error between the model
and the plant output. Adaptive law using Lyapunov stability criteria for updating the
controller parameters online have been formulated. The simulation results show that the
proposed neural network-based MRAC has 0.0236 sec rise time, 0.0450 sec settling time
and overshoot 0.0736 percent .This performance is closely the same with model reference
performance which has 0.0257sec rise time, 0.0438sec settling time and overshoot 0.0363
percent The performance of the neural network based MRAC have been compared with
conventional MRAC and MRAC-PID. The neural network based MRAC was selected for
speed control of BLDC motor drive system. Because of in the case of NN based MRAC the
output speed is closely the same with model reference output and the difference between
them is very small when it compared with other controller which is listed in this thesis. The
result have been using MATLAB/ SIMULINK
