Teamwork optimization based DTC for enhanced performance of IM based electric vehicle

A. Sahoo, R. Jena
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引用次数: 1

Abstract

: The tailpipe emissions caused by vehicles using internal combustion engines are a significant source of air pollution. To reduce the health hazards caused by air pollution, advanced countries are now adopting the use of electric vehicles (EVs). Due to the advancement of electric vehicles, research and development efforts are being made to improve the performance of EV motors. With a nominal reference stator flux, the classical induction motor drive generates significant flux, torque ripple, and current harmonics. In this work, a teamwork optimization algorithm (TOA)-based optimal stator flux strategy is suggested for torque ripple reduction applied in a classical direct torque-controlled induction motor drive. The suggested algorithm’s responsiveness is investigated under various steady-state and dynamic operating conditions. The proposed DTC-IM drive’s simulation results are compared to those of the classical and fuzzy DTC-IM drives. The proposed system has been evaluated and found to reduce torque ripple, flux ripple, current harmonics, and total energy consumption by the motor. Further, a comparative simulation study of the above methods at different standard drive cycles is presented. Experimental verification of the proposed algorithm using OPAL-RT is presented. The results represent the superiority of the proposed algorithm compared to the classical DTC and fuzzy DTC IM drives. The torque ripple reduction approach described in this study can also be applied to all induction motors, not only those for electric vehicles or hybrid electric vehicles (HEVs).
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基于团队优化的DTC提高基于IM的电动汽车性能
使用内燃机的车辆所排放的废气是空气污染的重要来源。为了减少空气污染对健康的危害,发达国家正在采用电动汽车(ev)。由于电动汽车的进步,人们正在努力研究和开发提高电动汽车的性能。在定子磁链的标称参考下,经典感应电机驱动产生显著的磁链、转矩脉动和电流谐波。本文提出了一种基于团队优化算法(TOA)的最优定子磁链策略,用于经典的直接转矩控制感应电机驱动的转矩脉动减小。研究了该算法在各种稳态和动态工况下的响应性。将所提出的DTC-IM驱动器的仿真结果与经典DTC-IM驱动器和模糊DTC-IM驱动器进行了比较。对该系统进行了评估,发现该系统可以减少电机的转矩脉动、磁链脉动、电流谐波和总能耗。并对上述方法在不同标准驱动工况下进行了仿真对比研究。利用OPAL-RT对该算法进行了实验验证。结果表明,与传统的直接转矩控制和模糊直接转矩控制相比,该算法具有明显的优越性。本研究中描述的转矩脉动减小方法也适用于所有感应电机,而不仅仅是电动汽车或混合动力汽车(hev)的感应电机。
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