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http://dx.doi.org/10.7842/kigas.2020.24.5.47

Fire Accident Analysis of Hazardous Materials Using Data Analytics  

Shin, Eun-Ji (Dept. of Disaster and Safety, Myongji University)
Koh, Moon-Soo (Anseong Fire Station)
Shin, Dongil (Dept. of Chemical Engineering, Myongji University)
Publication Information
Journal of the Korean Institute of Gas / v.24, no.5, 2020 , pp. 47-55 More about this Journal
Abstract
Hazardous materials accidents are not limited to the leakage of the material, but if the early response is not appropriate, it can lead to a fire or an explosion, which increases the scale of the damage. However, as the 4th industrial revolution and the rise of the big data era are being discussed, systematic analysis of hazardous materials accidents based on new techniques has not been attempted, but simple statistics are being collected. In this study, we perform the systematic analysis, using machine learning, on the fire accident data for the past 11 years (2008 ~ 2018), accumulated by the National Fire Service. The analysis results are visualized and presented through text mining analysis, and the possibility of developing a damage-scale prediction model is explored by applying the regression analysis method, using the main factors present in the hazardous materials fire accident data.
Keywords
hazardous materials; fire accident; machine learning; text mining; regression;
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  • Reference
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