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Optimization of synchronous reluctance motor based on radial basis network

机译:基于径向基础网络的同步磁阻电动机优化

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This paper presents surrogate-model based optimization for synchronous reluctance motor (SynRm) with transversally laminated rotor. A radial basis function (RBF) model with 12 input variables and three outputs is first trained. A dataset is obtained using finite element method to estimate parameters of RBF model. By building RBF model, the RBF network can predicts the outputs of the SynRm with good accuracy Using non-dominated sorting genetic algorithm (NSGA II), pareto front is obtained. The SynRm is designed to maximize the maximum developed torque and power factor of the motor with constrained torque ripple.
机译:本文介绍了横向层压转子的同步磁阻电机(Synrm)的基于代理模型优化。首先培训具有12个输入变量和三个输出的径向基函数(RBF)模型。使用有限元方法获得数据集来估计RBF模型的参数。通过建立RBF模型,RBF网络可以使用非主导的分类遗传算法(NSGA II),获得帕累托前面,以良好的精度预测SYNRM的输出。 SYNRM旨在最大化电动机的最大显影扭矩和功率因数,具有受约束的扭矩纹波。

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