Applied Sciences (Jul 2020)

An Ontological Metro Accident Case Retrieval Using CBR and NLP

  • Haitao Wu,
  • Botao Zhong,
  • Benachir Medjdoub,
  • Xuejiao Xing,
  • Li Jiao

DOI
https://doi.org/10.3390/app10155298
Journal volume & issue
Vol. 10, no. 15
p. 5298

Abstract

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Metro accidents are apt to cause serious consequences, such as casualties or heavy economic loss. Once accidents occur, quick and accurate decision-making is essential to prevent emergent accidents from getting worse, which remains a challenge due to the lack of efficient knowledge representation and retrieval. In this research, an ontological method that integrates case-based reasoning (CBR) and natural language processing (NLP) techniques was proposed for metro accident case retrieval. An ontological model was developed to formalize the representation of metro accident knowledge, and then, the CBR aimed to retrieve similar past cases for supporting decision-making after the accident cases were annotated by the NLP technique. Rule-based reasoning (RBR), as a complementary of CBR, was used to decide the appropriate measures based on those that are recorded in regulations, such as emergency plans. A total of 120 metro accident cases were extracted from the safety monthly reports during metro operations and then built into the case library. The proposed method was tested in MyCBR and evaluated by expert reviews, which had an average precision of 91%.

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