DocumentCode
1611507
Title
Bayesian decision-making for industrial production facilities and processing
Author
Hassini, Noureddine ; Zouairi, Saim
Author_Institution
Fac. of Sci., Es Senia Univ., Oran, Algeria
fYear
2011
Firstpage
1
Lastpage
6
Abstract
Decision on a strategy for effective predictive Reliability, Availability, Maintainability and Safety (RAMS), by the application of Bayesian networks, while ensuring a better preserving of the operators and installation safety in its entirety. A Bayesian network is an acyclic directed graph where nodes represent discrete random variables value (True, False), and the links influences between the variables or conditional dependencies. Relations between variables are deterministic or probabilistic. In a context of risk management, the causal relationships between different events (cause-effect) that can save any installation dysfunction should be taken into account, integrating the conditional probabilities, based on the opinions of experts´ field and on the data mining. Bayesian Networks have become a tool for uncertain reasoning, monitoring tasks such as diagnosis, prediction, and decision making. This makes Bayesian networks a subject of research of artificial intelligence. The processing of data through inference allows us to analyze up-and-down and enrich the basis of feedback through the acquisition of observations (evidence). In this study we present the contribution of Bayesian networks to production and processing of natural gas and an application example will be given for a component (boiler) of the liquefied natural gas complex GL4z industrial facility located in Arzew, western Algeria.
Keywords
belief networks; data mining; decision support systems; directed graphs; inference mechanisms; maintenance engineering; natural gas technology; production engineering computing; production facilities; reliability; risk management; safety; uncertainty handling; Bayesian decision making; Bayesian networks; RAMS; Reliability Availability Maintainability and Safety; acyclic directed graph; artificial intelligence; causal relationships; conditional probabilities; data mining; decision making; discrete random variables value; industrial processing; industrial production facility; installation dysfunction; liquefied natural gas complex; natural gas processing production; risk management; safety installation; uncertain reasoning; Analysis of variance; Bayesian methods; Boilers; Joints; Knowledge engineering; Probability distribution; Valves; Availability; Bayesian networks; Liquefied Natural Gas; Maintainability; Reliability; Safety;
fLanguage
English
Publisher
ieee
Conference_Titel
Electronics, Communications and Photonics Conference (SIECPC), 2011 Saudi International
Conference_Location
Riyadh
Print_ISBN
978-1-4577-0068-2
Electronic_ISBN
978-1-4577-0067-5
Type
conf
DOI
10.1109/SIECPC.2011.5876973
Filename
5876973
Link To Document