Wokoma, E.M. and Adeel, P. (2024) Real-Time Predictive Analytics in Multi-Phase Flow Metering for Offshore Pipelines: A Machine Learning Approach. International Journal of Petroleum and Gas Exploration Management, 7 (1). pp. 34-54. ISSN 2515-0863 (Print),2515-0871 (Online)
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Abstract
This research investigates the deployment of real-time predictive analytics in multi-phase flow metering systems for offshore pipelines, with a focus on Nigeria’s oil and gas industry. Offshore operations in Nigeria, a major global oil producer, are often confronted with challenging environmental conditions and the complexities of multi-phase flows—simultaneous flows of oil, water, and gas within pipelines. These factors complicate the accuracy and efficiency of traditional flow measurement systems, leading to potential operational inefficiencies, heightened environmental risks, and costly regulatory non-compliance. Accurate flow measurement is essential in managing resource allocation, preventing over-extraction, and ensuring safe, efficient operations. However, traditional metering methods often fall short in real-time responsiveness and are susceptible to inaccuracies due to variations in pressure, temperature, and flow composition.To address these limitations, this study explores the integration of machine learning with multi-phase flow metering technology, leveraging predictive analytics to enhance real-time monitoring capabilities. Machine learning models, trained on historical and real-time data from flow meters, analyze patterns within the multi-phase flows and forecast pipeline conditions. By identifying potential anomalies, such as leaks, blockages, or unexpected shifts in flow composition, machine learning-based predictive analytics provides operators with timely, actionable insights. These insights enable data-driven decision-making, allowing operators to proactively mitigate risks, optimize production, and align with environmental compliance requirements. Additionally, predictive analytics supports operational efficiency by minimizing the frequency of unplanned maintenance, reducing emissions, and promoting resource optimization.The case study on Resoluto Nigeria Limited—a Nigerian oil and gas service provider—demonstrates the practical application of this technology within a complex offshore environment. Resoluto’s implementation of machine learning-based predictive analytics in multi-phase flow metering exemplifies how data-driven technologies can overcome traditional limitations, offering improved accuracy, enhanced operational resilience, and environmental benefits. The study highlights the advantages of this integration, including reduced operational disruptions, enhanced safety, and improved compliance with environmental regulations. It also examines the challenges specific to the Nigerian context, such as infrastructure constraints, regulatory considerations, and the cost of technology adoption.The findings from this research suggest that machine learning-powered predictive analytics has significant potential for broader application within Nigeria’s offshore oil sector. By reducing environmental risks, improving data reliability, and supporting efficient resource management, this approach aligns with Nigeria’s sustainability objectives and strengthens the resilience of the oil and gas industry. Furthermore, the study underscores the importance of continuous research and development to adapt machine learning solutions for varying offshore conditions and operational needs. The results provide a foundation for future research on the scalability of predictive analytics across diverse sectors in Nigeria’s economy, positioning machine learning as a transformative tool in achieving both operational and environmental goals in industrial applications.
Item Type: | Article |
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Subjects: | T Technology > T Technology (General) |
Depositing User: | mark suger |
Date Deposited: | 16 Nov 2024 15:05 |
Last Modified: | 16 Nov 2024 15:05 |
URI: | https://ecrtd-digital-library.org/id/eprint/108 |