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Fault Diagnosis Method for Hydropower Units Based on Dynamic Mode Decomposition and the Hiking Optimization Algorithm–Extreme Learning Machine

Author

Listed:
  • Dan Lin

    (Department of Electrical Engineering, Xi’an Electric Power College, Xi’an 710032, China)

  • Yan Wang

    (Department of Electrical Engineering, Xi’an Electric Power College, Xi’an 710032, China)

  • Hua Xin

    (Department of Electrical Engineering, Xi’an Electric Power College, Xi’an 710032, China)

  • Xiaoyan Li

    (Department of Electrical Engineering, Xi’an Electric Power College, Xi’an 710032, China)

  • Shaofei Xu

    (Department of Electrical Engineering, Xi’an Electric Power College, Xi’an 710032, China)

  • Wei Zhou

    (School of Electrical Engineering, Xi’an University of Technology, Xi’an 710048, China)

  • Hui Li

    (School of Electrical Engineering, Xi’an University of Technology, Xi’an 710048, China)

Abstract

The diagnosis of vibration faults in hydropower units is essential for ensuring the safe and stable operation of these systems. This paper proposes a fault diagnosis method for hydropower units that combines Dynamic Mode Decomposition (DMD) with an optimized Extreme Learning Machine (ELM) utilizing the Hiking Optimization Algorithm (HOA). To address the issue of noise interference in the vibration signals of hydropower units, this study employs DMD technology alongside a thresholding technique for noise reduction, demonstrating its effectiveness through comparative trials. Furthermore, to facilitate a thorough analysis of the operational status of hydropower units, this paper extracts multidimensional features from denoised signals. To improve the efficiency of model training, Principal Component Analysis (PCA) is applied to streamline the data. Given that the weights and biases of the ELM are generated randomly, which may impact the model’s stability and generalization capabilities, the HOA is introduced for optimization. The HOA-ELM model achieved a classification accuracy of 95.83%. A comparative analysis with alternative models substantiates the superior performance of the HOA-ELM model in the fault diagnosis of hydropower units.

Suggested Citation

  • Dan Lin & Yan Wang & Hua Xin & Xiaoyan Li & Shaofei Xu & Wei Zhou & Hui Li, 2024. "Fault Diagnosis Method for Hydropower Units Based on Dynamic Mode Decomposition and the Hiking Optimization Algorithm–Extreme Learning Machine," Energies, MDPI, vol. 17(20), pages 1-21, October.
  • Handle: RePEc:gam:jeners:v:17:y:2024:i:20:p:5159-:d:1500212
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