A Quantum Gravity AI Framework for CO2 Storage Monitoring and Optimization

Klemens Katterbauer, Abdallah Al Shehri, Abdulaziz Al Qasim
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引用次数: 1

Abstract

Gravimetry is a physical method with a large depth of investigation. Traditional applications include surface gravity observations for mining and oil exploration and borehole gravity logging for investigating formation bulk density. Quantum gravity sensors have recently been developed allowing to achieve considerably higher accuracy and signal to noise ratios as compared to conventional gravimetric approaches. Borehole gravity data have some advantages over the surface data, because the sensors are closer to the reservoir better spatial resolution is obtained; and because the deep borehole gravity data are less affected than surface data by near surface changes. We have developed a new AI driven framework for the interpretation and monitoring of CO2 migration for CO2 storage applications. The framework utilize an integrated LSTM -Bayesian inference framework approach that to determine the gravity gradient within the reservoir and infer from this the possible movement in the reservoir. The LSTM framework evaluates the time lapse gravity gradient changes to infer from it the migration of the CO2 movement. We evaluated the framework on a public benchmark dataset of the Pohokura field in New Zealand. The Pohokura field in New Zealand has been investigated as a reservoir for CO2 storage given its acceptable reservoir quality and seal rock structure. The framework was evaluated on simulated CO2 storage migration patterns with multiple scenarios, taking into account the uncertainties that may arise with respect to various potential CO2 migration scenarios. The study outlines the enhanced accuracy and tracking of CO2 front movement within the reservoir based on quantum gravity sensors integrated with an AI framework. The deep learning framework represents an important step at utilizing quantum borehole gravity sensing for CO2 movement monitoring and the optimization of CO2 storage. The AI framework outlined the considerable potential of quantum gravity sensing for CO2 storage monitoring and optimization.
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二氧化碳储存监测与优化的量子重力AI框架
重力法是一种研究深度大的物理方法。传统的应用包括用于采矿和石油勘探的地面重力观测,以及用于调查地层体积密度的井眼重力测井。与传统的重力测量方法相比,量子重力传感器最近得到了发展,可以实现相当高的精度和信噪比。与地面数据相比,井内重力数据具有一定的优势,因为传感器离储层更近,可以获得更好的空间分辨率;由于深井重力数据受近地表变化的影响比地表数据小。我们开发了一个新的人工智能驱动框架,用于解释和监测二氧化碳储存应用中的二氧化碳迁移。该框架采用综合的LSTM -Bayesian推理框架方法,确定储层内的重力梯度,并由此推断储层可能的运动。LSTM框架通过计算重力梯度随时间的变化来推断CO2运动的迁移。我们在新西兰Pohokura油田的公共基准数据集上评估了该框架。鉴于新西兰Pohokura油田具有良好的储层质量和密封岩石结构,该油田已被研究作为二氧化碳储存的储层。考虑到各种潜在的二氧化碳迁移情景可能产生的不确定性,对多种情景下模拟的二氧化碳储存迁移模式进行了框架评估。该研究概述了基于量子重力传感器与人工智能框架集成的储层内二氧化碳锋面运动的提高精度和跟踪。深度学习框架是利用量子井眼重力传感进行二氧化碳运动监测和优化二氧化碳储存的重要一步。人工智能框架概述了量子重力传感在二氧化碳储存监测和优化方面的巨大潜力。
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