Leveraging Data Analytics with Numerical Modeling for Optimizing Oil Field Development and Management

M. Y. Alklih, Tengku Mohd Fauzi Tengku Ab Hamid, T. Al-Shabibi, Shahab Mohagheg
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Abstract

Data-Driven subsurface modeling technology has been proven, for the past few years, to yield technical and commercial success in several oil fields worldwide. A data-driven model is constructed for the first time for an oil field onshore Abu Dhabi, and used for evaluation of a reservoir with substantial reserves and comprehensive development plan; for the purpose of predicting production rates, dynamic reservoir pressure and water saturation, improving reservoir understanding, supporting field development optimization and identifying optimum infill well locations. The objective is to provide the asset with a decision-support tool to make better field development planning and management. The subject reservoir is a low permeability carbonate reservoir and characterized by lateral and vertical variations in its reservoir rocks and fluid properties. More than 8 years of Phase-I development and production/injection data and extensive amount of well tests and log data (SCAL, PVT, MDT) from more than 37 wells were used to construct the Data Driven Model for this asset. This new modeling technology, (TDM), integrates reservoir engineering analytical techniques with Artificial Intelligence, Machine Learning & Data Mining in order to formulate an empirical and spatiotemporally calibrated full field model. In this work, it is leveraged with other conventional reservoir modeling and management tools such as streamline modeling, isobaric maps and flooding conformance. Several analyses were performed using the full field data-driven model; complementing the existing conventional numerical model. The accomplishments of the data-driven reservoir model for this project included, but not limited to, comprehensive history matching (including blind validation) and then forecast of Oil rate, GOR, WC, reservoir pressure and water saturation, injection optimization, and choke size optimization. The results generated by the data-driven model proved to be quite eye-opening for the asset management; as the model was able to identify potential areas of improving field efficiency and cost reduction. When combined with numerical techniques, the calibrated data-driven model assist to obtain a reliable short term forecast in a shorter time and help make quick decisions on day-to-day operational optimization aspects. The use of facts (all field measurements) instead of human biases, pre-conceived notions, and gross approximations distinguishes data-driven modeling from other existing modeling technologies. Its innovative combination of Artificial Intelligence and Machine Learning (the technologies that are transforming all industries in the 21st century) with reservoir engineering, reservoir modeling and reservoir management clearly demonstrates the potentials that these pattern recognition technologies offer to the upstream oil and gas industry for its realistic digital transformation.
利用数据分析和数值建模优化油田开发和管理
在过去的几年中,数据驱动的地下建模技术已经在世界各地的几个油田获得了技术和商业上的成功。首次为阿布扎比陆上油田构建了数据驱动模型,用于评价储量丰富的油藏和综合开发计划;为了预测产量、动态储层压力和含水饱和度,提高对储层的认识,支持油田开发优化,并确定最佳的填充井位。目的是为该资产提供决策支持工具,以更好地进行油田开发规划和管理。本研究储层为低渗透碳酸盐岩储层,储层岩石和流体性质具有横向和纵向变化特征。研究人员利用超过8年的第一阶段开发和生产/注入数据,以及超过37口井的大量试井和测井数据(SCAL、PVT、MDT)来构建该资产的数据驱动模型。这种新的建模技术(TDM)将油藏工程分析技术与人工智能、机器学习和数据挖掘相结合,以制定经验和时空校准的全油田模型。在这项工作中,它与其他传统的油藏建模和管理工具(如流线建模、等压图和驱油一致性)相结合。使用全油田数据驱动模型进行了一些分析;补充了现有的传统数值模型。该项目数据驱动油藏模型的成果包括但不限于全面的历史匹配(包括盲验证),然后预测出油率、GOR、WC、油藏压力和含水饱和度、注入优化和节流孔尺寸优化。数据驱动模型产生的结果对资产管理来说是相当令人大开眼界的;由于该模型能够确定提高现场效率和降低成本的潜在领域。当与数值技术相结合时,经过校准的数据驱动模型有助于在更短的时间内获得可靠的短期预测,并有助于在日常运营优化方面做出快速决策。使用事实(所有的现场测量)而不是人类偏见、先入为主的概念和粗略的近似,将数据驱动的建模与其他现有的建模技术区分开来。它将人工智能和机器学习(21世纪改变所有行业的技术)与油藏工程、油藏建模和油藏管理创新地结合在一起,清楚地展示了这些模式识别技术为上游油气行业实现现实的数字化转型提供的潜力。
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