DEVELOPING A MACHINE LEARNING-BASED DIGITAL TWIN FOR REAL-TIME MULTIPHASE LEAK DETECTION IN OFFSHORE GAS PIPELINES
Advisor | Sleiti, Ahmad Khalaf |
Author | AL-AMMARI, WAHIB AHMED SALEH |
Available date | 2025-07-17T05:00:05Z |
Publication Date | 2025-06 |
Abstract | Leak detection in offshore gas pipelines is critical for operational safety, environmental sustainability, and economic efficiency [1]. Conventional methods suffer from poor accuracy, low sensitivity, delayed response, and high false alarm rates, particularly under multiphase flow conditions. This thesis develops a novel digital twin framework for real-time and robust leak detection and localization. The framework utilizes OLGA-generated synthetic data, validated against experimental multiphase flow data, to optimize ML models such as Random Forest, SVM, XGBoost, and stacked ensembles. The final model achieves R2 > 0.96 for single leaks and >90% accuracy for multiple leaks with zero false alarm rate. Also, this study introduces a self-learning model to enhance the adaptability of the digital twin across different pipeline conditions, minimizing retraining efforts. This comprehensive approach advances AI-driven pipeline monitoring, with applications in automated integrity management, predictive maintenance, and real-time risk assessment, setting the foundation for next-generation offshore monitoring systems and improved leak response strategies. |
Language | en |
Subject | Digital Twin Technology Multiphase Flow Monitoring Offshore Pipeline Integrity Machine Learning for Leak Detection Real-Time Predictive Maintenance |
Type | Master Thesis |
Department | Engineering Management |
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Engineering Management [146 items ]