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Modeling of a 6/4 Switched Reluctance Motor Using Adaptive Neural Fuzzy Inference System

机译:基于自适应神经模糊推理系统的6/4开关磁阻电机建模

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The magnetic saturation and strong nonlinearity of switched reluctance machines (SRMs) makes it very difficult to derive a comprehensive mathematical model for the behavior of the machine. We propose a new method of modeling SRMs based on an adaptive neural fuzzy inference system (ANFIS). First, we use an indirect method to measure the static flux linkage and then use the co-energy method (via the principle of virtual displacement) to calculate the torque characteristics from data on flux linkage versus current and rotor position. A hybrid learning algorithm, which combines the back propagation algorithm and the linear least-squares estimation algorithm, identifies the parameters of the ANFIS. After training, the ANFIS flux linkage model and ANFIS torque model are in excellent agreement with experimental flux linkage measurements and the calculated torque data. Finally, we use an ANFIS current model and an ANFIS torque model to study SRM dynamic performance. The accuracy of the model was evaluated by comparison to laboratory measurements of the machine''s current-speed and torque-speed characteristics. The model is quite accurate.
机译:开关磁阻电机(SRM)的磁饱和和强非线性特性使得很难为电机的性能导出一个综合的数学模型。我们提出了一种基于自适应神经模糊推理系统(ANFIS)的SRM建模的新方法。首先,我们使用间接方法来测量静态磁链,然后使用协能方法(通过虚拟位移原理)根据磁链对电流和转子位置的数据来计算转矩特性。结合反向传播算法和线性最小二乘估计算法的混合学习算法可识别ANFIS的参数。训练后,ANFIS磁链模型和ANFIS扭矩模型与实验磁链测量和计算出的扭矩数据非常吻合。最后,我们使用ANFIS当前模型和ANFIS扭矩模型来研究SRM动态性能。通过与机器当前电流速度和转矩速度特性的实验室测量结果进行比较,评估了模型的准确性。该模型非常准确。

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