Dual-Domain Deep Learning Method to Accelerate Local Basis Functions Computation for Reservoir Simulation in High-Contrast Porous Media
PositiveArtificial Intelligence
- A dual-domain deep learning framework has been proposed to enhance the computation of multiscale basis functions for reservoir simulation in high-contrast porous media, addressing the computational challenges posed by Darcy flow in heterogeneous environments. This method leverages deep learning to extract permeability field features in both frequency and spatial domains, significantly improving efficiency in generating numerical matrices.
- This development is crucial as it offers a solution to the computationally expensive process of constructing multiscale basis functions within the Mixed Generalized Multiscale Finite Element Method (MGMsFEM), which is essential for accurate reservoir simulations. By accelerating this computation, the framework can lead to more efficient and effective reservoir engineering practices.
- The introduction of advanced computational methods like this reflects a broader trend in the integration of artificial intelligence with traditional engineering disciplines. As industries increasingly adopt deep learning techniques, the potential for improved predictive modeling and simulation capabilities becomes evident, highlighting the ongoing evolution of methodologies in fields such as fluid dynamics and structural modeling.
— via World Pulse Now AI Editorial System
