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Rotor position estimation of 6/4 Switched Reluctance Motor using a novel neural network algorithm

机译:一种新型神经网络算法的6/4开关磁阻电机转子位置估计

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This paper presents a novel approach for estimating the rotor position of a Switched Reluctance Motor (SRM) drive system using the Cascade Correlation Artificial Neural Network Algorithm (CCNNA). This technique estimates rotor position by measuring the three-phase voltages and currents and using magnetic characteristics of the SRM, with the aid of an ANN. The rotor position estimating technique is used in a high-performance sensor less variable speed SRM drive. The results are compared with the measured values, and the error analyses are given to determine the performance of the developed method. The error analyses have shown great accuracy and successful rotor position estimation technique for a 6/4 pole SRM using the cascade correlation algorithm-based ANN.
机译:本文提出了一种使用级联相关人工神经网络算法(CCNNA)估算开关磁阻电机(SRM)驱动系统的转子位置的新颖方法。该技术借助ANN,通过测量三相电压和电流并利用SRM的磁特性来估计转子位置。转子位置估算技术用于高性能传感器的无变速SRM驱动器中。将结果与测量值进行比较,并进行误差分析以确定所开发方法的性能。误差分析显示出了极佳的精度,并且使用基于级联相关算法的ANN对6/4极SRM的转子位置估计技术取得了成功。

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