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Condition Monitor System for Rotation Machine by CNN with Recurrence Plot

Author

Listed:
  • Yumin Hsueh

    (Department of Electrical Engineering, National Taiwan University of Science and Technology, Taipei City 10607, Taiwan)

  • Veeresha Ramesha Ittangihala

    (Department of Electrical Engineering, National Taiwan University of Science and Technology, Taipei City 10607, Taiwan)

  • Wei-Bin Wu

    (Department of Electrical Engineering, National Taiwan University of Science and Technology, Taipei City 10607, Taiwan)

  • Hong-Chan Chang

    (Department of Electrical Engineering, National Taiwan University of Science and Technology, Taipei City 10607, Taiwan)

  • Cheng-Chien Kuo

    (Department of Electrical Engineering, National Taiwan University of Science and Technology, Taipei City 10607, Taiwan)

Abstract

Induction motors face various stresses under operating conditions leading to some failure modes. Hence, health monitoring for motors becomes essential. In this paper, we introduce an effective framework for fault diagnosis of 3-phase induction motors. The proposed framework mainly consists of two parts. The first part explains the preprocessing method, in which the time-series data signals are converted into two-dimensional (2D) images. The preprocessing method generates recurrence plots (RP), which represent the transformation of time-series data such as 3-phase current signals into 2D texture images. The second part of the paper explains how the proposed convolutional neural network (CNN) extracts the robust features to diagnose the induction motor’s fault conditions by classifying the images. The generated RP images are considered as input for the proposed CNN in the texture image recognition task. The proposed framework is tested on the dataset collected from different 3-phase induction motors working with different failure modes. The experimental results of the proposed framework show its competitive performance over traditional methodologies and other machine learning methods.

Suggested Citation

  • Yumin Hsueh & Veeresha Ramesha Ittangihala & Wei-Bin Wu & Hong-Chan Chang & Cheng-Chien Kuo, 2019. "Condition Monitor System for Rotation Machine by CNN with Recurrence Plot," Energies, MDPI, vol. 12(17), pages 1-13, August.
  • Handle: RePEc:gam:jeners:v:12:y:2019:i:17:p:3221-:d:259691
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    References listed on IDEAS

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    1. A. Ngaopitakkul & S. Bunjongjit, 2013. "An application of a discrete wavelet transform and a back-propagation neural network algorithm for fault diagnosis on single-circuit transmission line," International Journal of Systems Science, Taylor & Francis Journals, vol. 44(9), pages 1745-1761.
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    Cited by:

    1. Teen-Hang Meen & Wenbing Zhao & Cheng-Fu Yang, 2020. "Special Issue on Selected Papers from IEEE ICKII 2019," Energies, MDPI, vol. 13(8), pages 1-5, April.
    2. Lien-Kai Chang & Shun-Hong Wang & Mi-Ching Tsai, 2020. "Demagnetization Fault Diagnosis of a PMSM Using Auto-Encoder and K-Means Clustering," Energies, MDPI, vol. 13(17), pages 1-12, August.
    3. Sarahi Aguayo-Tapia & Gerardo Avalos-Almazan & Jose de Jesus Rangel-Magdaleno & Juan Manuel Ramirez-Cortes, 2023. "Physical Variable Measurement Techniques for Fault Detection in Electric Motors," Energies, MDPI, vol. 16(12), pages 1-21, June.

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