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Identifying low-quality patterns in accident reports from textual data

July Bias Macêdo, Plìnio M. S. Ramos, Caio Bezerra Souto Maior, Márcio J. C. Moura, Isis Didier Lins, Romulo Fernando Vilela

2022International Journal of Occupational Safety and Ergonomics11 citationsDOI

Abstract

Accident investigation reports provide useful knowledge to support companies to propose preventive and mitigative measures. However, the information presented in accident report databases is normally large, complex, filled with errors and has missing and/or redundant data. In this article, we propose text mining and natural language processing techniques to investigate low-quality accident reports. We adopted machine learning (ML) to detect and investigate inconsistencies on accident reports. The methodology was applied to 626 documents collected from an actual hydroelectric power company. The initial ML performances indicated data divergences and concerns related to the report structure. Then, the accident database was restructured to a more proper form confirming the supposition about the quality of the reports investigated. The proposed approach can be used as a diagnostic tool to improve the design of accident investigation reports to provide a more useful source of knowledge to support decisions in the safety context.

Topics & Concepts

Accident (philosophy)Context (archaeology)Computer scienceAccident analysisQuality (philosophy)Data qualityHydroelectricityData miningDatabaseEngineeringForensic engineeringOperations managementElectrical engineeringPaleontologyMetric (unit)PhilosophyEpistemologyBiologyOccupational Health and Safety ResearchRisk and Safety AnalysisInformation and Cyber Security
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