TY - JOUR
T1 - Analysis of chemical production accidents in China
T2 - data mining, network modeling, and predictive trends
AU - Shi, Yang
AU - Bian, Haitao
AU - Wang, Qingguo
AU - Pan, Yong
AU - Jiang, Juncheng
N1 - Publisher Copyright:
© 2024 by the author(s).
PY - 2024
Y1 - 2024
N2 - In recent years, China has experienced frequent chemical production accidents. This study collates 1900 briefings of such accidents from 2012 to 2023, sourced from a variety of repositories. By employing association rule mining, we analyzed the connections between causative factors and patterns of these accidents. The analysis revealed significant association rules characterized by high lift values, severe consequences, and patterns not previously recognized. A network model was constructed utilizing Gephi® software to represent the causative factors of these accidents. Through a centrality analysis of the network nodes, key factors contributing to these incidents were identified. Moreover, a SARIMAX model was developed and validated using time series data to predict future accident trends in chemical production. The forecasts generated by this model provide valuable insights for chemical production sectors, highlighting periods with an increased likelihood of accidents. Conclusively, this integration of data mining and predictive modeling could provide a critical method for improving safety protocols and enhancing risk management in chemical industry.
AB - In recent years, China has experienced frequent chemical production accidents. This study collates 1900 briefings of such accidents from 2012 to 2023, sourced from a variety of repositories. By employing association rule mining, we analyzed the connections between causative factors and patterns of these accidents. The analysis revealed significant association rules characterized by high lift values, severe consequences, and patterns not previously recognized. A network model was constructed utilizing Gephi® software to represent the causative factors of these accidents. Through a centrality analysis of the network nodes, key factors contributing to these incidents were identified. Moreover, a SARIMAX model was developed and validated using time series data to predict future accident trends in chemical production. The forecasts generated by this model provide valuable insights for chemical production sectors, highlighting periods with an increased likelihood of accidents. Conclusively, this integration of data mining and predictive modeling could provide a critical method for improving safety protocols and enhancing risk management in chemical industry.
UR - http://www.scopus.com/inward/record.url?scp=85196872214&partnerID=8YFLogxK
U2 - 10.48130/emst-0024-0009
DO - 10.48130/emst-0024-0009
M3 - 文章
AN - SCOPUS:85196872214
SN - 2832-448X
VL - 4
JO - Emergency Management Science and Technology
JF - Emergency Management Science and Technology
M1 - e006
ER -