Torque fault compensation in electric vehicle switched reluctance motor drives: A jellyfish search optimization method

S. Anita, Y. Sukhi, Y. Jeyashree, N. Manoj Kumar
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Abstract

In this paper, an enhanced indirect instantaneous‐torque‐control is proposed based on the torque sharing function approach of switched reluctance motor drives for electric vehicles by employing the jelly fish search. The major goal is to attain vehicle desires that include minimal torque ripple, maximum torque per ampere (MTPA), and huge performance and extend speed limit. First, a simplest analytic design is developed a determine more proficient turn‐on angle for the torque product. Second, an altered torque sharing function (TSF) is used for compensating the faults of torque tracking. The proposed technique is calculated to represent an accurate switched reluctance motor and its magnetized features. They have worked to create the machine model and execute the necessary transmits. The torque fault is evaluated and compensated inside the torque sharing function. The adapting TSF is compensates for the torque fault with receiving the phase because it is the minimal flux rate connecting variation. Finally, the jellyfish search technique is accepted to determine the optimal control parameters. The proposed strategies are done in MATLAB and its performance is contrasted with different existing strategies. According to the simulation result, the proposed strategy‐based accuracy is 94.2% at 50 iteration and 80% at 100th iteration which is higher than the existing methods. From this analyses, it proved that the proposed technique gives superior performance to existing one.
电动汽车开关磁阻电机驱动器中的扭矩故障补偿:水母搜索优化方法
本文基于电动汽车开关磁阻电机驱动器的转矩共享函数方法,采用水母搜索,提出了一种增强型间接瞬时转矩控制。其主要目标是实现车辆的期望,包括最小转矩纹波、最大每安培转矩(MTPA)、巨大性能和扩展速度限制。首先,开发了一种最简单的分析设计,以确定扭矩产品的更佳开启角度。其次,使用改变的扭矩分担函数(TSF)来补偿扭矩跟踪故障。所提出的技术经过计算,可以准确表示开关磁阻电机及其磁化特征。他们努力创建机器模型并执行必要的传输。扭矩故障在扭矩分担函数中进行评估和补偿。自适应 TSF 通过接收相位补偿转矩故障,因为它是最小的磁通率连接变化。最后,采用水母搜索技术确定最佳控制参数。建议的策略在 MATLAB 中完成,其性能与现有的不同策略进行了对比。根据仿真结果,基于所提策略的精度在迭代 50 次时为 94.2%,在迭代 100 次时为 80%,均高于现有方法。分析结果证明,拟议技术的性能优于现有技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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