Title :
Improving degradation prediction models for failure analysis in topside piping: A neuro-fuzzy approach
Author :
Seneviratne, A.M.N.D.B. ; Chandima Ratnayake, R.M.
Author_Institution :
Dept. of Mech. & Struct. Eng. & Mater. Sci., Univ. of Stavanger, Stavanger, Norway
Abstract :
This manuscript focuses on integrating online condition monitoring data directly into the degradation prediction models. This will aid in-service inspection planning in the identification of possible failures in the topside piping equipment of offshore oil and gas (O&G) production and process facilities (P&PFs). The capability of data clustering and data filtration as well as the interpretation of expert knowledge in artificial intelligent (AI) techniques, such as k-means clustering, artificial neural networks and fuzzy inference systems, has been exploited to meet the aforementioned. The k-means clustering is used in the identification of linguistic parameters from condition monitoring data. Moreover, a neural network approach is used to identify the membership function patterns using online condition monitoring data. The proposed neuro-fuzzy system will help inspection planners to recommend accurate thickness measurement locations (TMLs) for reliable inspection planning programs.
Keywords :
condition monitoring; failure analysis; fuzzy neural nets; fuzzy reasoning; inspection; mechanical engineering computing; offshore installations; pattern clustering; pipelines; process planning; production engineering computing; production facilities; thickness measurement; AI techniques; O&G P&PF; TML; artificial intelligent techniques; artificial neural network approach; data clustering; data filtration; degradation prediction models; expert knowledge interpretation; failure analysis; failure identification; fuzzy inference systems; in-service inspection planning; inspection planning programs; k-means clustering; linguistic parameter identification; membership function patterns; neuro-fuzzy approach; neuro-fuzzy system; offshore oil and gas production and process facilities; online condition monitoring data; thickness measurement locations; topside piping; topside piping equipment; Artificial neural networks; Clustering algorithms; Data models; Degradation; Inspection; Planning; Predictive models;
Conference_Titel :
Intelligent Engineering Systems (INES), 2014 18th International Conference on
Conference_Location :
Tihany
DOI :
10.1109/INES.2014.6909376