Wahib A. Al-Ammari, Ahmad K. Sleiti, Matthew Hamilton, Hicham Ferroudji, Sina Rezaei Gomari, Ibrahim Hassan, Rashid Hasan, Ibnelwaleed A. Hussein, Mohammad Azizur Rahman
{"title":"多相流条件下天然气管道实时泄漏检测的数字/视觉孪生体研究","authors":"Wahib A. Al-Ammari, Ahmad K. Sleiti, Matthew Hamilton, Hicham Ferroudji, Sina Rezaei Gomari, Ibrahim Hassan, Rashid Hasan, Ibnelwaleed A. Hussein, Mohammad Azizur Rahman","doi":"10.1002/ghg.2379","DOIUrl":null,"url":null,"abstract":"<p>Leak detection (LD) in gas pipelines (GPs) is critical for ensuring operational safety and environmental protection. This study presents a novel digital/visual twin for detecting single- and multiple leaks in GPs under both single- and multiphase flow conditions. The framework of the digital twin leverages experimental data from a multiphase flow-testing loop and synthetic data generated using OLGA software to validate and optimize machine learning (ML) models for leak detection and localization. Several ML models, including random forest (RF), support vector machine (SVM), <i>k</i>-nearest neighbors (<i>k</i>-NNs), decision tree regression (DTR), and eXtreme gradient boosting (XGBoost), were tested individually for their ability to classify leak conditions and localize leaks. Initial results showed moderate performance for individual models, with accuracies ranging from 42% to 57%. However, a significant improvement was observed through the use of advanced techniques such as stacking models, feature engineering, and data averaging. The final stacking regressor model, which combined the strengths of RF, <i>k</i>-NN, and SVM, outperformed the individual models, achieving <i>R</i><sup>2</sup> values exceeding 0.96 with an accuracy of 90% in complex multiple leak scenarios. The digital twin system integrates this ML framework with real-time data visualization, allowing operators to visualize offshore pipeline conditions, detect leaks, and localize leak positions using a virtual twin representation of the physical pipeline. The virtual twin provides an interactive, high-fidelity interface that enables users to monitor and analyze leak events as they occur, enhancing situational awareness and decision-making capabilities. The combination of advanced ML techniques and digital twin technology provides a robust and accurate solution for real-time LD in offshore pipelines. It significantly improves detection performance in multiphase flow conditions. This innovative approach sets a new benchmark for offshore pipeline monitoring systems, offering superior LD capabilities under a range of operational conditions. The system is readily adaptable for integration with SCADA platforms and pipeline monitoring infrastructures, supporting deployment in offshore oil and gas operations, industrial gas distribution networks, and critical energy corridors where early LD is essential.</p>","PeriodicalId":12796,"journal":{"name":"Greenhouse Gases: Science and Technology","volume":"15 5","pages":"513-530"},"PeriodicalIF":2.8000,"publicationDate":"2025-09-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://scijournals.onlinelibrary.wiley.com/doi/epdf/10.1002/ghg.2379","citationCount":"0","resultStr":"{\"title\":\"Development of Digital/Visual Twin for Real-Time Leak Detection in Gas Pipelines Under Multiphase Flow Conditions\",\"authors\":\"Wahib A. Al-Ammari, Ahmad K. Sleiti, Matthew Hamilton, Hicham Ferroudji, Sina Rezaei Gomari, Ibrahim Hassan, Rashid Hasan, Ibnelwaleed A. 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Development of Digital/Visual Twin for Real-Time Leak Detection in Gas Pipelines Under Multiphase Flow Conditions
Leak detection (LD) in gas pipelines (GPs) is critical for ensuring operational safety and environmental protection. This study presents a novel digital/visual twin for detecting single- and multiple leaks in GPs under both single- and multiphase flow conditions. The framework of the digital twin leverages experimental data from a multiphase flow-testing loop and synthetic data generated using OLGA software to validate and optimize machine learning (ML) models for leak detection and localization. Several ML models, including random forest (RF), support vector machine (SVM), k-nearest neighbors (k-NNs), decision tree regression (DTR), and eXtreme gradient boosting (XGBoost), were tested individually for their ability to classify leak conditions and localize leaks. Initial results showed moderate performance for individual models, with accuracies ranging from 42% to 57%. However, a significant improvement was observed through the use of advanced techniques such as stacking models, feature engineering, and data averaging. The final stacking regressor model, which combined the strengths of RF, k-NN, and SVM, outperformed the individual models, achieving R2 values exceeding 0.96 with an accuracy of 90% in complex multiple leak scenarios. The digital twin system integrates this ML framework with real-time data visualization, allowing operators to visualize offshore pipeline conditions, detect leaks, and localize leak positions using a virtual twin representation of the physical pipeline. The virtual twin provides an interactive, high-fidelity interface that enables users to monitor and analyze leak events as they occur, enhancing situational awareness and decision-making capabilities. The combination of advanced ML techniques and digital twin technology provides a robust and accurate solution for real-time LD in offshore pipelines. It significantly improves detection performance in multiphase flow conditions. This innovative approach sets a new benchmark for offshore pipeline monitoring systems, offering superior LD capabilities under a range of operational conditions. The system is readily adaptable for integration with SCADA platforms and pipeline monitoring infrastructures, supporting deployment in offshore oil and gas operations, industrial gas distribution networks, and critical energy corridors where early LD is essential.
期刊介绍:
Greenhouse Gases: Science and Technology is a new online-only scientific journal dedicated to the management of greenhouse gases. The journal will focus on methods for carbon capture and storage (CCS), as well as utilization of carbon dioxide (CO2) as a feedstock for fuels and chemicals. GHG will also provide insight into strategies to mitigate emissions of other greenhouse gases. Significant advances will be explored in critical reviews, commentary articles and short communications of broad interest. In addition, the journal will offer analyses of relevant economic and political issues, industry developments and case studies.
Greenhouse Gases: Science and Technology is an exciting new online-only journal published as a co-operative venture of the SCI (Society of Chemical Industry) and John Wiley & Sons, Ltd