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A Benchmarking Study of a Novel Data Physics Technology for Steamflood and SAGD Modeling: Comparison to Conventional Reservoir Simulation

机译:一种基准研究对蒸汽灌木和SAGD建模的新型数据物理技术:传统储层模拟比较

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A novel modeling technology termed "Data Physics" that combines reservoir physics with machine learning is validated against a conventional reservoir simulator for thermal recovery problems, i.e., steam flooding and steam assisted gravity drainage (SAGD). The novelty of the new model is its combination of speed of data integration (less than a week) and runtime (minutes) with long-term predictive accuracy (years or decades). This is due to the unique integration of reservoir physics with fast data-driven methods. For accurate benchmarking, major sources of modeling errors in the finite difference simulations are screened and controlled. Two cases are studied, the SPE4 steamflood model, and a single pad SAGD model. The results demonstrate that the Data Physics model is able to reproduce production profiles and key reservoir physics accurately when numerical errors in simulation are properly accounted for, while also being immune to numerical issues like grid orientation effects that can have significant impact on results of reservoir simulation. Introduction
机译:一种新的建模技术被称为“数据物理学”,它结合储层物理机器学习进行验证的常规储层模拟器用于热回收的问题,即,蒸汽驱和蒸汽辅助重力泄油(SAGD)。新模式的新颖之处在于它的长期预测准确度(几年或几十年)数据集成(小于一周)和运行时间(分钟)的速度的组合。这是由于独特的一体化油藏物理与快速的数据驱动的方法。为了获得准确的基准,在有限差分模拟建模误差的主要来源进行筛选和控制。两起案件进行了研究,在SPE4蒸汽驱模式,单垫SAGD模型。结果表明,该数据物理模型,能够再现的生产概况和主要水库物理学准确地当模拟数值误差是正常入账,同时还不受类似网格取向效应的数值问题,可以对油藏模拟的结果显著影响。介绍

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