@article{Benzaoui_Benyoussef_Kouache_2024, title={Stator Flux and Speed Sensorless Control for DTC-ANN of Two Parallel-Connected Five-Phase Induction Machines Based on Sliding Mode Observer}, url={https://oiccpress.com/Majlesi-Journal-of-Electrical-Engineering/article/stator-flux-and-speed-sensorless-control-for-dtc-ann-of-two-parallel-connected-five-phase-induction-machines-based-on-sliding-mode-observer/}, abstractNote={Conventional direct torque control (DTC) improves the dynamic performance of the five-phase induction machine (FPIM). Nevertheless, it suffers from significant drawbacks of high stator flux and electromagnetic torque ripples. Moreover, the DTC technique relies on an open-loop estimator for accurate stator flux module and position knowledge. However, this method is subjected to substandard performance, mainly during the low-speed operation range. Therefore, a sliding mode sensorless stator flux and rotor speed DTC based on an artificial neural network (DTC-ANN) for two parallel-connected FPIMs is discussed to tackle the problems above. This approach optimizes the DTC performance by replacing the two hysteresis controllers (HC) and the look-up table. As for the poor estimation drawback, the sliding mode observer (SMO) offers a robust estimation and reconstruction of the FPIM variables and eliminates the need for additional sensors, increasing the system’s reliability. The present results verify and compare the performance of the control scheme.}, journal={Majlesi Journal of Electrical Engineering}, publisher={OICC Press}, author={Benzaoui, Khaled Mohammed Said and Benyoussef, Elakhdar and Kouache, Ahmed Zouhir}, year={2024}, month={Jun.}, keywords={Sliding mode observer (SMO)., Sensorless control., Artificial Neural Network (ANN), Five-phase induction motor (FPIM), Direct torque control (DTC), Parallel-connected two-motor drive} }