Title :
Pipe failure prediction
Author :
Tian, Chun Hua ; Xiao, Jing ; Huang, Jin ; Albertao, Felipe
Author_Institution :
IBM Res. - China, Beijing, China
Abstract :
Preventative pipe maintenance is a key activity in pipe asset management. Central to such activity is a precise pipe failure (burst/leakage) prediction. Here a statistical pipe failure prediction approach is proposed based on the massive data including pipe physical property, environmental factor, operational condition, historical failure records, and etc. Considering the biased training cases, survival analysis model is adopted to avoid over-fitting. The effectiveness of such an approach over several machine learning algorithms is proven in an Asia city with 4 pipe physical indicators (material type, age, diameter, and length) considered over a given region in the past 10 years. Compared with a heuristic approach, there is 5~8 times improvement in targeting precision. It also shows that there still a significant improvement opportunity by incorporating more factors.
Keywords :
failure analysis; learning (artificial intelligence); maintenance engineering; mechanical engineering computing; pipes; water supply; biased training cases; environmental factor; machine learning algorithms; pipe asset management; pipe failure prediction; pipe physical property; preventative pipe maintenance; survival analysis model; water supply system; Accuracy; Sensitivity; preventative maintenance; survival analysis; water ditribution network;
Conference_Titel :
Service Operations, Logistics, and Informatics (SOLI), 2011 IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4577-0573-1
DOI :
10.1109/SOLI.2011.5986540