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Magnetic equivalent circuit models using global reluctance networks methodology for design of permanent magnet flux switching machine

机译:磁性等效电路模型使用全局磁阻网络设计永磁通量开关机的设计

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Unique features of permanent magnet synchronous machines, conventional DC machines, and switched reluctance machines are combined in the form of Flux-Switching Machine (FSM). Magnetic saturation and complex structure of FSM compels designers to adopt numerical methods of analysis i.e. Finite Element Analysis (FEA). FEA is not preferred for initial design due to its computational complexity. Fourier analysis (FA) and Magnetic Equivalent Circuit (MEC) models are alternate analytical methods to analyze FSM. Results of FA for FSM are less accurate due to magnetic saturation. MEC models with Global Reluctance Network (GRN) methodology is a good compromise between accurate results and computational time, and is recommended for preliminary FSM design. In this paper, MEC models of proposed twelve-stator-slot and ten-rotor-tooth (12/10) with trapezoidal slot structure FSM corresponding to different rotor positions are combined as GRN and are solved utilizing incidence matrix methodology using MATLAB. Moreover, FSM flux simulations and no-load analysis were performed using JMAG software and validated with FEA. Comparison of results obtained from GRN methodology and corresponding FEA results shows errors less than ~2%, hence validating accuracy of GRN methodology.
机译:永磁同步机,传统直流机和开关磁阻机的独特特点采用磁通开关机(FSM)的形式组合。 FSM的磁饱和度和复杂结构迫使设计人员采用数值分析方法I.e.e.e。有限元分析(FEA)。由于其计算复杂性,FEA不是初始设计的优选。傅立叶分析(FA)和磁性等效电路(MEC)模型是分析FSM的替代分析方法。由于磁饱和度,FSM for FAS的结果不太准确。具有全局磁阻网络(GRN)方法的MEC型号是精确的结果和计算时间之间的良好折衷,建议用于初步FSM设计。在本文中,具有对应于不同转子位置的梯形槽结构FSM的提出的12个定子槽和十转子齿(12/10)的MEC模型被组合为GRN,并使用MATLAB求解发生率矩阵方法。此外,使用JMAG软件进行FSM通量模拟和空载分析,并用FEA验证。从GRN方法和相应的FEA结果获得的结果的比较显示了小于〜2 %的误差,因此验证了GRN方法的准确性。

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