Electronics Letters (Oct 2021)

Neural network compensation method for improving detection accuracy of rotor position from magnetic encoder

  • Zhipeng Yin,
  • Jiaqun Xu

DOI
https://doi.org/10.1049/ell2.12282
Journal volume & issue
Vol. 57, no. 22
pp. 845 – 847

Abstract

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Abstract With the advantages of low cost, small size and high resolution, the magnetic encoder is suitable for permanent magnet synchronous motor. However, due to the installation accuracy and the motor vibration, the rotor position error from magnetic encoder can seriously impact the performance of the motor. Therefore, it is necessary to reduce the detection error of the rotor position from the encoder. In this letter, a new rotor position detection method is proposed based on neural network. The characteristic of the position error from magnetic encoder is analysed, and the backpropagation neural network is presented to obtain the error compensation function. On the basis of the compensation function, the rotor position error can be corrected and thus the precise rotor position can be detected. The experimental results show that not only the rotor position error but also the related total harmonic distortion of the phase current and the torque ripple can be reduced effectively.

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