Zhongguo Jianchuan Yanjiu (Apr 2025)

Fault diagnosis of ship diesel power distribution system based on WOA-RF algorithm

  • Weibo LI,
  • Feng GAO,
  • Peng XIAO,
  • Kangzheng HUANG,
  • Daojie RUAN,
  • Junzhuo GAO

DOI
https://doi.org/10.19693/j.issn.1673-3185.04193
Journal volume & issue
Vol. 20, no. 2
pp. 77 – 88

Abstract

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ObjectiveThe marine diesel generator (DG) power distribution system is crucial for ship navigation. However, due to the harsh marine environment, frequent failures occur. Therefore, a fault diagnosis method based on whale optimization algorithm-optimized random forest (WOA-RF) is proposed for the marine DG power distribution system.MethodsThe marine DG power distribution system model is built using Matlab/Simulink simulation software. First, fault and normal condition data are collected. Then, the collected data is normalized, time-domain features are extracted, and important features are selected using random forest to reduce data dimensionality. Finally, the WOA-optimized random forest model is used for fault identification, diagnosis and classification.ResultsSimulation results show that the WOA-RF method can identify fault and normal states with 100% accuracy. It can classify 12 different fault types with an accuracy of 98.26%. In the original dataset, the accuracy of WOA-RF improved by at least 4.86% and by up to 34.37% compared to nine different algorithms. In the dataset with 10 dB noise, the accuracy of WOA-RF improved by at least 2.43% and by up to 18.40% compared to six different algorithms.ConclusionThe WOA-RF-based fault diagnosis method demonstrates superior accuracy and robustness in complex marine environments, providing a reliable solution for fault identification in marine power systems.

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