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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:一种新型数据物理技术的基准研究,用于蒸汽灌木和SAGD建模:传统储层模拟的比较

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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,称为与机器学习结合的水库物理学的“数据物理学”对热恢复问题的传统储层模拟器进行了验证,即蒸汽泛水和蒸汽辅助重力排水(SAGD)。新模型的新颖性是其数据集成速度(少于一周)和运行时(分钟)的结合,具有长期预测准确性(年或几十年)。这是由于水库物理与快速数据驱动方法的独特集成。为了准确的基准测试,筛选和控制有限差分模拟中建模误差的主要来源。研究了两种情况,SPE4蒸汽模型和单个垫SAGD模型。结果表明,当模拟中的数值误差被适当地占据了数值误差时,数据物理模型能够准确地重现生产简档和关键储层物理学,同时也免受像网格定向效果等数值问题,这可能对水库模拟结果产生重大影响。介绍

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