TY - GEN
T1 - Improving degradation prediction models for failure analysis in topside piping
T2 - 18th IEEE International Conference on Intelligent Engineering Systems, INES 2014
AU - Seneviratne, A. M.N.D.B.
AU - Ratnayake, R. M.Chandima
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2014/9/24
Y1 - 2014/9/24
N2 - 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.
AB - 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.
UR - https://www.scopus.com/pages/publications/84908622836
U2 - 10.1109/INES.2014.6909376
DO - 10.1109/INES.2014.6909376
M3 - Conference contribution
AN - SCOPUS:84908622836
T3 - INES 2014 - IEEE 18th International Conference on Intelligent Engineering Systems, Proceedings
SP - 239
EP - 244
BT - INES 2014 - IEEE 18th International Conference on Intelligent Engineering Systems, Proceedings
A2 - Szakal, Aniko
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 3 July 2014 through 5 July 2014
ER -