Text Mining in Unstructured Defect Records of Electrical Equipment Based on Deep Learning
编号:265 访问权限:仅限参会人 更新:2020-11-11 12:10:18 浏览:88次 口头报告

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摘要
During the operation of electrical equipment, a wealth of defect description texts are recorded by inspectors. They contain abundant defect information that greatly contributes to the fault diagnosis of electrical equipment. But this valuable information is still untapped because record texts are unstructured, professional, and mixed with numbers and unit. This paper has two contributions. Firstly, a text preprocessing stage is established. Secondly, a proposed attention-based deep learning network constructs the mapping relationship between defect texts and defect severity. Particularly, the word embeddings representing texts are fine-tuned, while the word embeddings representing numbers and units are fixed. The experiment result shows the proposed learning model has a superior classification ability compared to shallow learning models This research not only provides a new technology for processing grid text data, but also helps to build the smart grid integrating multi-source heterogeneous data.
关键词
Electrical equipment,deep learning,semantic analysis,text mining,fault diagnosis
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重要日期
  • 会议日期

    10月21日

    2019

    10月24日

    2019

  • 10月13日 2019

    摘要录用通知日期

  • 10月13日 2019

    初稿截稿日期

  • 10月14日 2019

    初稿录用通知日期

  • 10月24日 2019

    注册截止日期

  • 10月29日 2019

    终稿截稿日期

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