arXiv Open Access 2023

Natural Language Processing of Aviation Occurrence Reports for Safety Management

Patrick Jonk Vincent de Vries Rombout Wever Georgios Sidiropoulos Evangelos Kanoulas
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Abstrak

Occurrence reporting is a commonly used method in safety management systems to obtain insight in the prevalence of hazards and accident scenarios. In support of safety data analysis, reports are often categorized according to a taxonomy. However, the processing of the reports can require significant effort from safety analysts and a common problem is interrater variability in labeling processes. Also, in some cases, reports are not processed according to a taxonomy, or the taxonomy does not fully cover the contents of the documents. This paper explores various Natural Language Processing (NLP) methods to support the analysis of aviation safety occurrence reports. In particular, the problems studied are the automatic labeling of reports using a classification model, extracting the latent topics in a collection of texts using a topic model and the automatic generation of probable cause texts. Experimental results showed that (i) under the right conditions the labeling of occurrence reports can be effectively automated with a transformer-based classifier, (ii) topic modeling can be useful for finding the topics present in a collection of reports, and (iii) using a summarization model can be a promising direction for generating probable cause texts.

Topik & Kata Kunci

Penulis (5)

P

Patrick Jonk

V

Vincent de Vries

R

Rombout Wever

G

Georgios Sidiropoulos

E

Evangelos Kanoulas

Format Sitasi

Jonk, P., Vries, V.d., Wever, R., Sidiropoulos, G., Kanoulas, E. (2023). Natural Language Processing of Aviation Occurrence Reports for Safety Management. https://arxiv.org/abs/2301.05663

Akses Cepat

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Informasi Jurnal
Tahun Terbit
2023
Bahasa
en
Sumber Database
arXiv
Akses
Open Access ✓