KO Afebu
Integrated leak detection in gas pipelines using OLGA simulator and artificial neural networks
Afebu, KO; Abbas, AJ; Nasr, GG; Kadir, A
Authors
AJ Abbas
Prof Ghasem Nasr G.G.Nasr@salford.ac.uk
Professor
Dr Ali Kadir A.Kadir@salford.ac.uk
Associate Professor/Reader
Abstract
Gas pipeline leakages do not only represent loss of valuable non-renewable resources but also a potential source of environmental pollution and fire disaster, thus making it very important to have a quick and accurate leak awareness scheme in pipeline systems. In a novel approach of providing industry with more reliable, friendly and cost effective technique in handling pipeline leakage especially in countries were pipeline vandalism has been widely reported. This require urgent detection and intervention, the potential of an Artificial Neural Network (ANN) in detecting and locating leaks from everyday flow line measurements was explored in this research paper. Pipeline responses under zero (no) leak condition, and realistic different leak conditions were simulated on a gas pipeline using OLGA simulator. Simulated leaks were seen to be characterized with unique flow rate, velocity, pressure and temperature signatures that were identifiable by the neural network. The network during training was able to learn the correlation between these signatures and the leak parameters and then use the learning in predicting and locating leaks from new signature data. The network predictions showed final RMSE values of 6.14 and 0.977 for the single and multiple leaks model respectively. The correlations between the actual and predicted leak sizes gave R values of 0.95 and 0.60 for the single and multiple leaks respectively while those of the actual and predicted leak locations were 0.97 and 0.96. The system was able to locate 90% of the induced leaks to a distance that is less than 10 m away from the actual leak locations while 62% of the ANN predicted leak sizes differed from the actual value by less than 50% of the actual leak size and the remaining 38% differed by about 65 – 400% the actual sizes. This thus implies that the set has a better precision in predicting leak locations than predicting leak sizes. Based on obtained results, it can be said that with sufficiently large number of measurements, neural networks are of great potential in predicting and locating leaks. Results also showed that leak detectability tends to improve with increasing leak size and increasing distance from the source and the relatively low correlation obtained for the multiple leaks model can be attributed to the partial masking of smaller downstream leaks by larger upstream leaks.These characteristics of leaks are predominant to the countries with cases of vandalism, and could be a potential approach in handling pipe leaks.
Citation
Afebu, K., Abbas, A., Nasr, G., & Kadir, A. Integrated leak detection in gas pipelines using OLGA simulator and artificial neural networks. Presented at Abu Dhabi International Petroleum Exhibition and Conference, Abu Dhabi, UAE
Presentation Conference Type | Other |
---|---|
Conference Name | Abu Dhabi International Petroleum Exhibition and Conference |
Conference Location | Abu Dhabi, UAE |
Acceptance Date | Mar 19, 2023 |
Publication Date | Jan 1, 2015 |
Deposit Date | Mar 15, 2016 |
ISBN | 1613994249 |
DOI | https://doi.org/10.2118/177459-MS |
Publisher URL | http://dx.doi.org/10.2118/177459-MS |
Additional Information | Event Type : Conference |
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