Title of article :
Reliability Evaluation of a Disaster Airflow Emergency Control System Based on Bayesian Networks
Author/Authors :
Zhang, J. College of Mining Engineering - North China University of Science and Technology, Tangshan, PR China , Ai, Z. College of Mining Engineering - North China University of Science and Technology, Tangshan, PR China , Guo, L. College of Mining Engineering - North China University of Science and Technology, Tangshan, PR China , Cui, X. College of Mining Engineering - North China University of Science and Technology, Tangshan, PR China
Abstract :
This study proposed a novel method for system failure reasoning based on Bayesian networks to solve
emergency airflow control system reliability problems. A system fault tree model was established to
identify the logical relationship between the units, which was then transformed into a Bayesian network
fault analysis model to determine network node states and the conditional probability table, as well as to
carry out diagnostic reasoning on the system node branches. The reliability analysis of the model based
on Netica Bayesian tool shows that the probability of system failure caused by substation communication
node is the highest under normal conditions, and data monitoring and central station communication
nodes have a greater impact on intelligent control. By predicting and diagnosing system faults, the
optimization of system design is realized on the framework of Bayesian network to improve the
reliability, and there by establishing a theoretical foundation for future disaster prevention research.
Keywords :
Bayesian Network , Conditional Probability , Emergency Airflow Control System , Fault Diagnosis , Reliability
Journal title :
International Journal of Engineering