Scientific Reports (Sep 2024)

Enhancing power equipment defect identification through multi-label classification methods

  • Wenjie Zheng,
  • Yi Yang,
  • Fengda Zhang,
  • Wenxiu Lv,
  • Yong Li,
  • Sun Li

DOI
https://doi.org/10.1038/s41598-024-71996-x
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 10

Abstract

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Abstract Accurate identification and classification of equipment defects are essential for assessing the health of power equipment and making informed maintenance decisions. Traditional defect classification methods, which rely on subjective manual records and intricate defect descriptions, have proven to be inefficient. Existing approaches often evaluate equipment status solely based on defect grade. To enhance the precision of power equipment defect identification, we developed a multi-label classification dataset by compiling historical defect records. Furthermore, we assessed the performance of 11 established multi-label classification methods on this dataset, encompassing both traditional machine learning and deep learning methods. Experimental results reveal that methods considering label correlations exhibit significant performance advantages. By employing balanced loss functions, we effectively address the challenge of sample imbalance across various categories, thereby enhancing classification accuracy. Additionally, segmenting the power equipment defect classification task, which involves numerous labels, into label recall and ranking stages can substantially improve classification performance. The dataset we have created is available for further research by other scholars in the field.

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