%0 Journal Article
%A Lazreg, M. H.
%A Bentaallah, A.
%T Sensorless Speed Control of Double Star Induction Machine With Five Level DTC Exploiting Neural Network and Extended Kalman Filter
%J IRANIAN JOURNAL OF ELECTRICAL AND ELECTRONIC ENGINEERING
%V 15
%N 1
%U http://ijeee.iust.ac.ir/article-1-1296-en.html
%R 10.22068/IJEEE.15.1.142
%D 2019
%K Double Star Induction Machine, Direct Torque Control (DTC), Five Level Inverter, Artificial Neural Network (ANN), Sensorless Control, Extended Kalman Filter,
%X This article presents a sensorless five level DTC control based on neural networks using Extended Kalman Filter (EKF) applied to Double Star Induction Machine (DSIM). The application of the DTC control brings a very interesting solution to the problems of robustness and dynamics. However, this control has some drawbacks such as the uncontrolled of the switching frequency and the strong ripple torque. To improve the performance of the system to be controlled, robust techniques have been applied, namely artificial neural networks. In order to reduce the number of sensors used, and thus the cost of installation, Extended Kalman filter is used to estimate the rotor speed. By viewing the simulation results using the MATLAB language for the control. The results of simulations obtained showed a very satisfactory behaviour of the machine.
%> http://ijeee.iust.ac.ir/article-1-1296-en.pdf
%P 142-150
%& 142
%! Five Level DTC Based on Neural Network of Sensorless DSIM Using Extended Kalman Filter
%9 Research Paper
%L A-10-2574-1
%+ Department of Electrical Engineering, Djillali Liabes University, Sidi Bel Abbes, Algeria.
%G eng
%@ 1735-2827
%[ 2019