外推法
人工神经网络
计算机科学
水力压裂
图形
储层模拟
算法
压裂液
致密气
一般化
理论(学习稳定性)
数学优化
应用数学
断裂(地质)
网络模型
反向传播
流体力学
地质学
地质力学
计算流体力学
油页岩
储层建模
煤层气
人工智能
数学
作者
Xin Yang,Tian Gao,Tiankui Guo,Haiyang Wang,Jinfeng Zhou
出处
期刊:Energies
[MDPI AG]
日期:2025-11-24
卷期号:18 (23): 6144-6144
摘要
Deflagration fracturing is a gas-dominated, water-free reservoir stimulation technology that has shown strong potential in unconventional, low-permeability, or water-sensitive reservoirs such as coalbed methane and shale gas formations. Accurate prediction of fluid pressure variations, critical for optimizing fracture propagation and stimulation performance, is challenging. While field experiments and numerical simulations offer reliable predictions, they are hindered by high risks, costs, and computational complexity due to multi-physics coupling, Moreover, purely data-driven machine learning methods often exhibit poor generalization and may produce predictions that deviate from fundamental physical principles. To address these challenges, a physics-guided graph neural network (PG-GNN) is proposed in this study to predict the evolution of fluid pressure, the key driving factor governing fracture propagation, from a mechanistic perspective. The proposed method integrates governing equations and physical constraints to construct geometric, physical, and hybrid features and employs a graph neural network encoder to capture the spatial correlations among these features, thereby forming a deep learning framework with strong physical consistency. A multi-task loss function is further employed to balance predictive accuracy and physical rationality. Finally, the proposed model is validated using a high-resolution dataset generated by a CDEM-based numerical simulator, achieving a minimum MAPE of 0.313% and a minimum MSE of 2.309 × 10−4 on the test dataset, outperforming baseline models in both accuracy and stability and demonstrating strong extrapolation capability.
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