Title :
Learning Bayesian Networks for Systems Diagnosis
Author :
Ramirez, V.J.C. ; Piqueras, Antonio Sala
Author_Institution :
Inst. Tecnologico de Nogales
Abstract :
This paper proposes the construction of a Bayesian network for failure diagnosis in industrial systems. We built this network considering the plant mathematical model and it includes parameters and structure learning through the Beta Dirichlet distributions. We experience the previous methodology by means of a case study, where we simulate some failures that can occurs in the valves used to interconnect a deposits system. With those failures information, we train the network and this way we learn the structure and parameters of the Bayesian network. Once obtained the network, we design the diagnosis probabilistic inference through the poly-trees algorithm. It will give us the valves failure probabilities according to the evidences that show up in our entrance sensors. In this work, we try the existent uncertainty in the diagnosis variables through the probabilistic and fuzzy approach. Since the information provided by our sensors (diagnosis variables) is represented in a fuzzy logic form, for then to be converted to probability intervals, generalizing the Dempster-Shafer theory to fuzzy sets. After that, we spread this information in interval form throughout the diagnosis Bayesian network to get our diagnosis results. The probability interval is more advisable in the taking decisions that a singular value
Keywords :
belief networks; fault diagnosis; fuzzy logic; fuzzy set theory; industrial plants; inference mechanisms; learning (artificial intelligence); statistical distributions; trees (mathematics); uncertainty handling; Bayesian network learning; Beta Dirichlet distributions; Dempster-Shafer theory; fuzzy logic; fuzzy sets; industrial system failure diagnosis; plant mathematical model; poly-trees algorithm; probabilistic inference; probability intervals; Application software; Bayesian methods; Construction industry; Failure analysis; Fuzzy logic; Mathematical model; Medical diagnosis; Sensor phenomena and characterization; Uncertainty; Valves; Bayesian networks; Dempster-Shafer theory; failure diagnosis; fuzzy; logic;
Conference_Titel :
Electronics, Robotics and Automotive Mechanics Conference, 2006
Conference_Location :
Cuernavaca
Print_ISBN :
0-7695-2569-5
DOI :
10.1109/CERMA.2006.55