基于人工神经网络的开关磁阻电机转矩脉动最小化

KALAGOTLA CHENCHIREDDY, V. Kumar, Eswaraiah G, Khammampati R Sreejyothi, Shabbier Ahmed Sydu, Lukka Bhanu Ganesh
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引用次数: 6

摘要

本文提出了一种基于人工神经网络的开关磁阻电动机。SRM电机是一种电子控制电机,类似于无刷直流电机。电动机需要一个电力电子变换器来控制定子极点。SRM电机的主要优点是成本低,转子上无绕组,具有低温效应,易于制造设计,运行速度快,效率高。SRM电机的主要缺点是转矩脉动和噪声,本文采用基于人工神经网络的SRM实现转矩脉动最小化。仿真结果在MATLAB/Simulink软件中得到验证。验证的结果是电机速度,转矩,电流和磁通。与滞后电流控制器(HCC)和人工神经网络控制器(ANN)的性能进行了比较。基于人工神经网络的SRM结果在电机启动和运行状态下表现最佳。本文的主要成果是减小起动转矩和减小转矩脉动,减小起动电流和运行电流。
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Torque Ripple Minimization in Switched Reluctance Motor by Using Artificial Neural Network
This article presents switched reluctance motor (SRM) with an artificial neural network (ANN). The SRM motor is an electronically controlled motor like a BLDC motor. The motor required a power electronic converter for controlling stator poles. The main advantages of SRM motor are low cost, a low-temperature effect due to no winding on the rotor, easy manufacturing design, it operates at high speed, and high efficiency. The main disadvantage of the SRM motor is torque ripple and noiseThis paper ANN-based SRM implemented for torque ripple minimization. The simulation results are verified in MATLAB/Simulink software. The verified results are motor speed, torque, current, and flux. The performance of SRM compared with Hysteresis Current Controller (HCC) and ANN controller. ANN-based SRM results are the best performance during motor starting and running conditions. The main outcomes of this paper are reducing starting torque and torque ripple minimization and reducing starting current and running current.
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