- Turkish Journal of Electrical Engineering and Computer Science
- Vol: 25 Issue: 4
- MOPSO-based predictive control strategy for efficient operation of sensorless vector-controlled fuel...
MOPSO-based predictive control strategy for efficient operation of sensorless vector-controlled fuel cell electric vehicle induction motor drives
Authors : Adel Abdelaziz Abdelghany Elgammal, Mohammed Fathy El_naggar
Pages : 2968-2985
View : 7 | Download : 5
Publication Date : 9999-12-31
Article Type : Makaleler
Abstract :This paper introduces an optimal control strategy of model-based predictive control (MPC) based on multiobjective particle swarm optimization (MOPSO) for a sensorless vector control induction motor, which is used in a fuel cell electric vehicle drive system. The proposed MPC-MOPSO algorithm is implemented to tune the weighting parameters of the MPC controller to tackle all the conflicting objective functions. The paper handles the following fitness functions: minimizing the speed error, minimizing the torque ripple, minimizing the DC-link voltage ripple, and minimizing machine flux ripple. Computer simulations studies have been completed utilizing MATLAB/Simulink with a specific end goal of assessing the dynamic performance of the proposed MPC-MOPSO optimal controller and comparing it with single-objective particle swarm optimization and traditional PI controllers. The simulation results demonstrate the good dynamic response of the proposed MPC-MOPSO optimal tuning strategy over the traditional PI controllers for more accurate tracking performance through the whole speed range, especially at starting conditions and load change disturbances.Keywords : Electric vehicle, fuel cell, sensorless vector control, multiobjective particle swarm optimization, model-based predictive control