Switched Reluctance Machine Modeling through Multilayer Neural Networks

Authors

  • A. C. F. Mamede Author
  • J. R. Camacho Author
  • R. E. Araújo Author

DOI:

https://doi.org/10.24084/repqj16.430

Keywords:

Switched reluctance machine, artificial neural networks, multilayer, modeling, predictive model, SRM performance

Abstract

The work deals with the application of artificial neural networks (ANNs) in the modeling of switched reluctance machines (SRMs). The performance of a SRM is determined by its geometry, materials used and levels of excitation. In this way, this work investigates the influence of the stator and rotor back iron thickness in the performance of SRM. A multilayer neural network is proposed to learn the nonlinear characteristics of the motor. Data of flux linkages and torque are obtained through simulations of finite elements and used for ANN training. The algorithm developed in Octave allows the user to adjust the network parameters. The results presented confirm the feasibility of using ANN to establish a predictive model of SRM performance, thus enabling further investigation in the future.

Author Biographies

  • A. C. F. Mamede

    Department of Electrical Engineering 
    Universidade Federal de Uberlândia (UFU) 
    Campus Santa Mônica – Av. João Naves de Ávila, 2121. Postcode: 38400-902 – Uberlândia (Brazil) 

  • J. R. Camacho

    Department of Electrical Engineering 
    Universidade Federal de Uberlândia (UFU) 
    Campus Santa Mônica – Av. João Naves de Ávila, 2121. Postcode: 38400-902 – Uberlândia (Brazil) 

  • R. E. Araújo

    INESC TEC and Faculty of Engineering 
    University of Porto 
    Porto (Portugal) 

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Published

2024-01-24

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Section

Articles