Abstract:
An induction motor is also called an asynchronous motor – it is an AC electric motor used
extensively in applications. This particular type of motor is utilized in the majority of industrial
and commercial electrical applications because simple, durable and affordable. Induction
motors find application in domestic equipment, automobiles, IT equipment’s, industries, public
life equipment, transports, aerospace, defense equipment, power implements, toys, vision &
sound equipment & health & medical devices. This has become possible by the following
reasons; high efficiency, fast response, light weight, precise and accurate control, high
reliability and maintenance free operation, construction with no brushes, high power density
and small size. Induction motors found its way easily into industrial systems because of its high
speed. And so, when working to achieve stability and productivity of a system it is necessary
to stabilize the actual speed of the AC motor existing in the automation system with reference
to the set speed and maintain a speed which is higher than the load speed. AC motor is used in
a number of industrial applications where large variability in speed and torque is demand. In
the past, traditional feedback controllers like PI controller have been applied extensively in
industrial processes but tends to exhibit certain shortcomings in handling nonlinearity and
parameter fluctuations as well as load disturbances. In response to these challenges, this thesis
proposes a new solution where Proportional Integral control is combined with Artificial Neural
Networks to provide accurate control of the speed of induction motors. The proposed PI-ANN
controller tries to integrate the concept of PI control and ANN to adjust the control parameter
when changing the parameter of motor for optimum performance is needed. The system is
simulated and validated on a squirrel cage induction motor using a voltage source inverter for
voltage regulation. By training the ANN to change its behavioral pattern in terms of motor
speed, load condition and system dynamics the proposed method far out performs the
traditionally used PI controller. Records from the simulation studies, as well as experimental
findings, confirm that the proposed speed control algorithm based on the PI-ANN excels the
basic PI controllers in various aspects such as lesser overshoot, quicker time response, and
better stability when the electrical load is variable. This class of hybrid control strategy
provides a viable solution in high-performance motor control applications and hence forms a
platform for enhancing more control strategies for the induction motors in the area of intelligent
control systems.