Grey wolf optimizer algorithm based real time implementation of PIDDTC and FDTC of PMSM

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Abstract

Meta-heuristic optimization techniques are important tools to define the optimal solutions for many problems. In this paper, a new advanced artificial intelligence (AI) based direct torque control (DTC) speed drives are optimally designed and implemented in real time to achieve a high performance permanent-magnet synchronous-motor (PMSM) drive. Grey wolf (GW) algorithms are used with the standard PID-based DTC (PIDDTC) and with the DTC with fuzzy logic (FDTC) based speed controllers. DSPACE DS1202 is utilized in the real-time implementation. MATLAB SIMULINK is used to simulate the steady-state (S.S.) and dynamic responses. The overall system is tested at different operating conditions for both simulation and practical work and all results are presented. A comparison between experimental and simulation results is performed and also a comparison between different applied intelligent techniques is introduced.

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Arafa, O. M., Wahsh, S. A., Badr, M., & Yassin, A. (2020). Grey wolf optimizer algorithm based real time implementation of PIDDTC and FDTC of PMSM. International Journal of Power Electronics and Drive Systems, 11(3), 1640–1652. https://doi.org/10.11591/ijpeds.v11.i3.pp1640-1652

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