A Hybrid Intelligent-Based Speed Tracking Controller of Cement Rotary Kiln Motor Drive System (Case Study: Mugher Cement Factory)
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Abstract
The cement rotary kiln is the core equipment in the manufacturing of the cement industry, which
is a large cylindrical furnace used for the production of clinker, it is a key ingredient in the
cement production process. It has been driven by a high performance of an asynchronous motor
and it plays a crucial role for efficient operation of the cement kiln. In this thesis, a case study
has been taken from Mugher cement factory, the existing control technique of the kiln motor
drive system has a conventional vector control or field orientated control technique using
proportional, integral and proportional, integral and derivative controllers. In MCF the existing
major problems in the factory such as challenging to handle the uncertain, nonlinear and
complex dynamic of the system, leading to suboptimal control performance and in addition it
has a speed sensor directly measures the motor speed using a physical sensor. Those all the
above mentioned characteristics are degrade the performance of controllers. As a result many
controllers fail to smoothly track the speed trajectory. Therefore, appropriate and real time
speed controllers are required to attain the required level of control performance. In this thesis,
the Model reference adaptive system control and artificial neural network control technique is
used for the speed control of the kiln motor drive system. To overcome these challenges, the
proposed control technique is designed and its performance evaluated against the model
reference adaptive and artificial neural network controller individually. In this thesis, the
simulation works have been carried out by using MATLAB/Simulink software setup (Ra2018).
Hence, the results showed that the Model reference adaptive system control a tracking control
of speed and torque is good, adaptability is good, response time is good, but disturbance
handling capability is moderate and rise time is 0.170sec, settling time is 0.134sec and
overshoot is 2.24%. On the other hand, artificial neural network controller outperforms speed
and torque tracking control accuracy is excellent, response time is excellent, disturbance
rejection capability is good, adaptability is excellent and rise time is 0.123sec, settling time is
0.016sec and overshoot is 1.64%. Finally, a hybrid Model reference adaptive system control
and Artificial neural network control has a superior performance of an accurate speed tracking
control, adaptability is excellent and response time is excellent and rise time is 0.106sec, settling
time is 0.014sec and overshoot is 1.25%. In this study, the finding results have been proven that
a combined control techniques are effectively regulated and improved that both the required
speed control performance for kiln motor drive system.
