通过机器学习支持的新型3d时移电磁断层成像完井系统实现资产价值最大化

P. Dell’Aversana, R. Servodio, F. Bottazzi, C. Carniani, G. Gallino, C. Molaschi, C. Sanasi
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引用次数: 1

摘要

在本文中,我们介绍了一种永久安装在完井上的新技术,该技术通过生产和/或注入时的延时电/电磁层析成像来实现实时油藏流体测绘。我们的技术包括将电极和线圈安装在井眼/储层段的套管/尾管上。我们测量了在距离井几米到几百米的范围内流体分布变化引起的电磁场的变化。我们的技术所获得的数据通过一个集成的软件平台进行处理和解释,该平台将3D和4D地球物理数据反演与配备全套分类/预测算法的机器学习平台相结合。每次获取新数据时,它们都与以前的数据库完全集成,并用于降低储层动态模型的不确定性。为了阐明这种系统对油藏管理的潜在影响,我们将这种方法应用于一个合成数据集。我们讨论了在石油生产过程中滨水靠近油井的情景模拟。我们测试的目的是展示如何将我们的技术与机器学习结合起来,对生产井周围的地下水位变化做出可靠的预测。
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Asset Value Maximization through a Novel Well Completion System for 3d Time Lapse Electromagnetic Tomography Supported by Machine Learning
In this paper, we introduce a new technology permanently installed on the well completion and addressed to a real time reservoir fluid mapping through time-lapse electric/electromagnetic tomography while producing and/or injecting. Our technology consists of electrodes and coils installed on the casing/liner in the borehole/reservoir section of the well. We measure the variations of the electromagnetic fields caused by changes of the fluid distribution in a wide range of distances from the well, from few meters up to hundreds meters. The data acquired by our technology are processed and interpreted through an integrated software platform that combines 3D and 4D geophysical data inversion with a Machine Learning platform equipped with a complete suite of classification/prediction algorithms. Every time new data are acquired, they are fully integrated with the previous database, and used for decreasing the level of uncertainty about the dynamic model of the reservoir. In order to clarify the potential impact of such system on reservoir management, we apply this methodology to a synthetic data set. We discuss a simulation of a scenario where the waterfront approaches the wells during oil production. The goal of our test is to show how to combine our technology with Machine Learning to make robust predictions about the water table variations around the production wells.
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