Leak Detection in Natural Gas Pipelines Using Intelligent Models

Author:

Akinsete Oluwatoyin1,Oshingbesan Adebayo1

Affiliation:

1. University of Ibadan

Abstract

Abstract Detection of small leaks in gas pipelines is an important and persistent problem in the oil and gas industry. However, the industry is beginning to investigate how tools of Machine Learning, Artificial Intelligence, Big Data, etc. can be used to improve current industry processes. This work aims to study the ability of intelligent models to detect small leaks in a natural gas pipeline using operational parameters such as pressure, temperature and flowrate through existing industry performance metrics (sensitivity, reliability, robustness and accuracy). Observer design technique was applied to detect leaks in a gas pipeline using a regresso-classification hierarchical model where an intelligent model acts as a regressor and a leak detection algorithm acts as a classifier. Five intelligent models (Gradient Boosting, Decision Trees, Random Forest, Support Vector Machine and Artificial Neural Network) were used in this present work. Results showed that the Random Forest and Decision Tree models are the most sensitive as they can detect a leak of 0.1% of nominal flow in about 2 hours. All the intelligent models had high reliability with zero false alarm rate in testing phase. However, due to this level of reliability, the models had low accuracy with the Artificial Neural Network and Support Vector Machine performing best and better regressors than the others. All the intelligent models are robust. The average time to leak detection for different leak sizes for all the intelligent models were compared to a real time transient model in literature. The intelligent models had a time savings of 25% to 48%. Results in this present work further suggest that intelligent models could be used alongside a real time transient model to improve leak detection. Also, that the tools of big data, data analytics, artificial intelligence can be harnessed to improving leak detection results.

Publisher

SPE

Cited by 12 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Intelligent Models for Forecasting Repair Timing of Leakage Water Pipelines;2023 International Mobile, Intelligent, and Ubiquitous Computing Conference (MIUCC);2023-09-27

2. TMR-Array-Based Pipeline Location Method and Its Realization;Sustainability;2023-06-20

3. An Internet of Things-based System Towards Detecting Oil Spills;2023 International Conference on Intelligent Computing, Communication, Networking and Services (ICCNS);2023-06-19

4. Applying Machine Learning to the Fuel Theft Problem on Pipelines;Journal of Pipeline Systems Engineering and Practice;2023-05

5. Leak Detection in Natural Gas Pipelines Based on Unsupervised Reconstruction of Healthy Flow Data;SPE Production & Operations;2023-04-17

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