Physics-informed graph neural network for spatial-temporal production forecasting

被引:14
|
作者
Liu, Wendi [1 ]
Pyrcz, Michael J. [1 ,2 ]
机构
[1] Univ Texas Austin, Cockrell Sch Engn, Hildebrand Dept Petr & Geosyst Engn, Austin, TX 78712 USA
[2] Univ Texas Austin, Jackson Sch Geosci, Dept Geol Sci, Austin, TX USA
来源
GEOENERGY SCIENCE AND ENGINEERING | 2023年 / 223卷
关键词
Graph neural network; Capacitance resistance models; Physics-informed neural network; Production forecasting; RESERVOIR CONNECTIVITY;
D O I
10.1016/j.geoen.2023.211486
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Production forecast based on historical data provides essential value for developing hydrocarbon resources. Classic history matching workflow is often computationally intense and geometry-dependent. Analytical data -driven models like decline curve analysis (DCA) and capacitance resistance models (CRM) provide a grid-free solution with a relatively simple model capable of integrating some degree of physics constraints. However, the analytical solution may ignore subsurface geometries and is appropriate only for specific flow regimes and otherwise may violate physics conditions resulting in degraded model prediction accuracy. Machine learning -based predictive model for time series provides non-parametric, assumption-free solutions for production fore-casting, but are prone to model overfit due to training data sparsity; therefore may be accurate over short prediction time intervals.We propose a grid-free, physics-informed graph neural network (PI-GNN) for production forecasting. A customized graph convolution layer aggregates neighborhood information from historical data and has the flexibility to integrate domain expertise into the data-driven model. The proposed method relaxes the depen-dence on close-form solutions like CRM and honors the given physics-based constraints. Our proposed method is robust, with improved performance and model interpretability relative to the conventional CRM and GNN baseline without physics constraints.
引用
收藏
页数:13
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