人工神经网络
可解释性
基质(化学分析)
非线性系统
物理
采样(信号处理)
生产(经济)
领域(数学)
应用数学
机器学习
数学优化
算法
计算机科学
数学
材料科学
量子力学
探测器
纯数学
光学
经济
复合材料
宏观经济学
作者
Jiaxuan Chen,Hao Yu,B.Q. Li,HouLin Zhang,Jin Xu,Siwei Meng,He Liu,HengAn Wu
摘要
As a rising method for reservoir-scale production analysis, machine learning (ML) models possess high computational efficiency with robust capability of nonlinear mapping. However, their accuracy and interpretability are commonly limited owing to the absence of intrinsic physical mechanisms, solely by the data fitting. This work proposes a novel DeepONet-embedded physics-informed neural network (DE-PINN), which comprises a forward network to connect the matrix/fracture characteristics and production performance, and a sampling network to acquire the location of sampling points within shale reservoirs. DeepONets are constructed by the selected layers of these networks to output the field variables in governing equations that include mass/momentum conservation equations coupled with multiscale transport mechanisms. Through the automatic differentiation method, these equations are solved by the obtained field variables, and the residuals generated during the solution are integrated into the loss function as physical constraints. Compared with traditional data-driven machine learning models, the DE-PINN exhibits better performance in forecasting the production rate and cumulative production, achieving the mean absolute percentage error (MAPE) of approximately 3% and adjusted R2 values in the test set exceeding 0.98. This model demonstrates the advantage by realizing superior predictive precision with fewer production data samples under complex geological conditions of the shale reservoirs.
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