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  • Physics-Informed Neural Network Framework for Modeling Flow in Dual-Pore Porous Media

38-10 Physics-Informed Neural Network Framework for Modeling Flow in Dual-Pore Porous Media

Session: Geoscience and Hydrogeology in the AI Era: From Predictive Models to Real-Time Applications



Presenting Author:

Venkat Maduri


Authors:

Nakshatrala, Kalyana babu1, Maduri, Venkat sai2

(1) Department of Civil and Environmental Engineering, University of Houston, HOUSTON, TX, USA, (2) Department of Civil and Environmental Engineering, University of Houston, HOUSTON, TX, USA,

Abstract:

Porous media span a remarkably diverse range of systems—including fractured carbonate reservoirs, ultra-tight shale formations, architected metallic foams, tissue-engineering scaffolds, and even plant xylem conduits. In many of these environments, flow and transport processes are governed by two hierarchically distinct but hydraulically coupled pore domains: a larger, highly permeable network that serves as the main conduit for flow, and a finer, more tortuous micro-pore network that controls storage, diffusion, and exchange dynamics. To accurately capture the resulting multiscale mass and solute transfer, the double-porosity/permeability (DPP) framework offers a powerful modeling approach. However, classical discretization methods—such as finite volume, finite difference, or finite element techniques—are often inadequate for workflows requiring rapid scenario screening, real-time data assimilation, or high-dimensional inverse analysis under sparse and noisy observations. In this talk, we introduce a physics-informed neural network (PINN) framework tailored to address these limitations. The method employs a shared neural backbone through which residual-balancing dynamically reconciles competing physical constraints. An error-guided collocation strategy further enhances accuracy by adaptively concentrating sampling points near steep pressure gradients and evolving flow fronts. Representative numerical results demonstrate that this mesh-free formulation offers multiple performance advantages: it resolves discontinuities without artificial diffusion, maintains numerical stability under extreme permeability contrasts, and avoids the spurious oscillations commonly observed in traditional mixed-element schemes.A particularly attractive feature of the proposed framework is its adaptability: the network can be incrementally retrained as new laboratory measurements, wireline logs, or in-situ sensor data become available. This enables continuously updated forecasting capabilities for critical applications such as critical-mineral extraction, tight-shale production, CO₂ and hydrogen storage integrity, and geothermal heat-exchange optimization.




Geological Society of America Abstracts with Program. Vol. 57, No. 6, 2025


doi: 10.1130/abs/2025AM-9522


© Copyright 2025 The Geological Society of America (GSA), all rights reserved.

Physics-Informed Neural Network Framework for Modeling Flow in Dual-Pore Porous Media

Category

Topical Sessions

Description


Session Format: Oral

Presentation Date: 10/19/2025

Presentation Start Time: 04:20 PM

Presentation Room: HBGCC, 210AB



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