Sensorless Direct Power Control Of Induction Motor Drive Using Artificial Neural Network

AuthorsAbolfazl Halvaei Niasar, Hassan Moghbeli, Hossein Rahimi Khoei
Conference TitleQatar Foundation Annual Research Conference
Holding Date of ConferenceFebruary 2014
Event PlaceDoha, Qatar
Presented byدانشگاه کاشان
PresentationPOSTER
Conference LevelInternational Conferences

Abstract

This paper proposes the design of sensorless induction motor drive based on direct power control (DPC) technique. It is shown that DPC technique enjoys all advantages of pervious methods including fast dynamic, and ease of implementation, without having the previous problems. To reduce the cost of drive and enhancing the reliability, an effective sensorless strategy based on artificial neural network (ANN) is developed to estimate of rotor’s position and speed of induction motor. Developed sensorless scheme is a new model reference adaptive system (MRAS) speed observer for direct power control induction motor drives. The proposed MRAS speed observer uses the current model as an adaptive model. The neural network has been then designed and trained online by employing back propagation network (BPN) algorithm. The estimator was designed and simulated in Matlab/Simulink. Some simulations are carried out for the closed-loop speed control systems under various load conditions to verify the proposed methods. Simulation results confirm the performance of ANN-based sensorless DPC induction motor drive in various conditions.

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tags: sensorless control,direct power control (DPC),Induction motor (IM),Artificial Neural Network (ANN),Model Reference Adaptive System (MRAS)