Physics-informed deep learning for prediction of CO storage site response.

Journal: Journal of contaminant hydrology
Published Date:

Abstract

Accurate prediction of the CO plume migration and pressure is imperative for safe operation and economic management of carbon storage projects. Numerical reservoir simulations of CO flow could be used for this purpose allowing the operators and stakeholders to calculate the site response considering different operational scenarios and uncertainties in geological characterization. However, the computational toll of these high-fidelity simulations has motivated the recent development of data-driven models. Such models are less costly, but may overfit the data and produce predictions inconsistent with the underlying physical laws. Here, we propose a physics-informed deep learning method that uses deep neural networks but also incorporates flow equations to predict a carbon storage site response to CO injection. A 3D synthetic dataset is used to show the effectiveness of this modeling approach. The model approximates the temporal and spatial evolution of pressure and CO saturation and predicts water production rate over time (outputs), given the initial porosity, permeability and injection rate (inputs). First, we establish a baseline using data-driven deep learning models namely, Multilayer Perceptron (MLP) and Long Short-Term Memory (LSTM). To build a physics-informed model, the loss term is modified using the constraints defined by a simplified form of the governing partial differential equations (conservation of mass coupled with Darcy's law for a two-phase flow system). Our results indicate that incorporating the domain knowledge significantly improves the accuracy of predictions. The proposed modeling approach can be integrated in CO storage management to accurately predict the critical site response indicators for a range of relevant input parameters, even when limited training data is available.

Authors

  • Parisa Shokouhi
    Dental School, Hamadan University of Medical Sciences, Hamadan, Iran.
  • Vikas Kumar
    Department of Urology, King George's Medical University, Lucknow, Uttar Pradesh, India.
  • Sumedha Prathipati
    Department of Computer Science, The Pennsylvania State University, United States of America.
  • Seyyed A Hosseini
    Jackson School of Geosciences, The University of Texas at Austin, United States of America.
  • Clyde Lee Giles
    Department of Computer Science, The Pennsylvania State University, United States of America.
  • Daniel Kifer
    Department of Computer Science & Engineering, Pennsylvania State University.