TY - GEN
T1 - Application of Bayesian networks for the prediction of gas accidents in semi-mechanized underground operations on the southern coast of Peru
AU - Santisteban-Trujillo, Grace
AU - Zamudio-Mariluz, Sebastian
AU - Pehovaz-Alvarez, Humberto
AU - Raymundo, Carlos
AU - Dominguez, Francisco
N1 - Publisher Copyright:
© 2023 Latin American and Caribbean Consortium of Engineering Institutions. All rights reserved.
PY - 2023
Y1 - 2023
N2 - Occupational health and safety are key factors in the development of underground operations and works. Reducing the risks associated with accidents caused by gases is essential to prevent risk situations and protect the integrity of workers. The present investigation evaluated the use of Bayesian networks as a different tool in accident investigation. The general objective is to propose an accident investigation model as a predictive tool for the control and subsequent reduction of gassing accidents. To establish this model, Bayesian networks and structural models were used that complemented the operation of the first iterations. Bayesian networks were used to identify related risk factors, assess their impact, and understand the interaction between them. The study was based on a comprehensive analysis of gas accidents over a 15-year period. The main finding of the investigation focuses on the identification of 3 critical zones within the Cinco Cruces operation with associated probabilities of 0.712, 0.446 and 0.652. The value of the Bayesian inference obtained is 0.36, which through the analysis of the ROC curve establishes it as a non-false positive of regular prediction. This makes it possible to identify which are the future conditions in which the events can be repeated and to which key safety factors they are linked. Based on them, an action plan was proposed to create a PETS (Written Safe Work Procedure), which includes recommendations, methodologies, equipment, and tools to prevent future gassing accidents. The incorporation of Bayesian networks makes it possible to adhere to predictive approaches to mining accident investigation processes.
AB - Occupational health and safety are key factors in the development of underground operations and works. Reducing the risks associated with accidents caused by gases is essential to prevent risk situations and protect the integrity of workers. The present investigation evaluated the use of Bayesian networks as a different tool in accident investigation. The general objective is to propose an accident investigation model as a predictive tool for the control and subsequent reduction of gassing accidents. To establish this model, Bayesian networks and structural models were used that complemented the operation of the first iterations. Bayesian networks were used to identify related risk factors, assess their impact, and understand the interaction between them. The study was based on a comprehensive analysis of gas accidents over a 15-year period. The main finding of the investigation focuses on the identification of 3 critical zones within the Cinco Cruces operation with associated probabilities of 0.712, 0.446 and 0.652. The value of the Bayesian inference obtained is 0.36, which through the analysis of the ROC curve establishes it as a non-false positive of regular prediction. This makes it possible to identify which are the future conditions in which the events can be repeated and to which key safety factors they are linked. Based on them, an action plan was proposed to create a PETS (Written Safe Work Procedure), which includes recommendations, methodologies, equipment, and tools to prevent future gassing accidents. The incorporation of Bayesian networks makes it possible to adhere to predictive approaches to mining accident investigation processes.
KW - Bayesian networks
KW - accident investigation
KW - gassing (gas accidents)
KW - structural models
KW - underground mining
UR - https://www.scopus.com/pages/publications/85187275028
U2 - 10.18687/LEIRD2023.1.1.528
DO - 10.18687/LEIRD2023.1.1.528
M3 - Contribución a la conferencia
AN - SCOPUS:85187275028
T3 - Proceedings of the LACCEI international Multi-conference for Engineering, Education and Technology
BT - Proceedings of the 3rd LACCEI International Multiconference on Entrepreneurship, Innovation and Regional Development
PB - Latin American and Caribbean Consortium of Engineering Institutions
T2 - 3rd LACCEI International Multiconference on Entrepreneurship, Innovation and Regional Development, LEIRD 2023
Y2 - 4 December 2023 through 6 December 2023
ER -