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http://dx.doi.org/10.7842/kigas.2020.24.1.56

Improved Classification of Fire Accidents and Analysis of Periodicity for Prediction of Critical Fire Accidents  

Kim, Chang Won (Department of Chemical Engineering, Myongji University)
Shin, Dongil (Department of Chemical Engineering, Myongji University)
Publication Information
Journal of the Korean Institute of Gas / v.24, no.1, 2020 , pp. 56-65 More about this Journal
Abstract
Forecasting of coming fire accidents is quite a challenging problem cause normally fire accidents occur for a variety of reasons and seem randomness. However, if fire accidents that cause critical losses can be forecasted, it can expect to minimize losses through preemptive action. Classifications using machine learning were determined as appropriate classification criteria for the forecasting cause it classified as a constant damage scale and proportion. In addition, the analysis of the periodicity of a critical fire accident showed a certain pattern, but showed a high deviation. So it seems possible to forecast critical fire accidents using advanced prediction techniques rather than simple prediction techniques.
Keywords
Incident classification; Machine learning; Heinrich's law; k-means clustering;
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