Published December 14, 2023 | Version v1
Journal article Open

Physics-informed surrogate modeling for supporting climate resilience at groundwater contamination sites

  • 1. Florida International University
  • 2. Lawrence Berkeley National Laboratory
  • 3. University of Chicago
  • 4. University of Wisconsin - Milwaukee
  • 5. NASA Ames Research Center
  • 6. Pasteur Labs & ISI
  • 7. Massachusetts Institute of Technology

Description

Contamination of soil and groundwater presents a widespread global problem, significantly impacting both human well-being and environmental stability. Conventional models employed for estimating pollutant concentrations under varying climatic conditions demand extensive computational power and high-performance computing resources. In response to this issue, we have devised an innovative method utilizing a physics-informed machine learning technique, known as the U-Net Enhanced Fourier Neural Operator (U-FNO), to generate rapid surrogate models for flow and transport. These models are capable of forecasting groundwater pollution levels under diverse climatic situations and subsurface characteristics without necessitating a supercomputer. In our research, we centered our attention on the Department of Energy's Savannah River Site (SRS) F-Area and established two time-dependent structures: U-FNOB and U-FNOB-R. Both frameworks incorporate a tailored loss function, including specific physical constraints of groundwater flow and transport such as spatial derivatives, and contaminant boundary conditions. The findings of our study indicate that the U-FNO models can consistently foresee spatialtemporal fluctuations in groundwater flow and pollutant transportation properties, such as contaminant concentration, hydraulic head, and Darcy's velocity. Our research reveals that the U-FNOB-R architecture is especially adept at predicting the effects of alterations in recharge rates on groundwater contamination sites, delivering superior time-dependent forecasts compared to the U-FNOB structure. Our novel approach holds the potential to revolutionize environmental monitoring and remediation efforts by providing rapid, precise, and cost-efficient estimations of groundwater pollution levels under uncertain climate conditions.

Data availability

The source codes are available at the link: https://console.cloud.google.com/storage/browser/us-digitaltwiner-pub-features/srs_farea_ensemble_simulations_dataset.

Files

Physics-informed-surrogate-modeling-for-supporting-climate-resilience-at-groundwater-contamination-sites.pdf

Additional details

Identifiers

DOI
10.1016/j.cageo.2023.105508
Other
oai:uchicago.tind.io:10246

Funding

U.S. Department of Energy
DE-AI0000001
U.S. Department of Energy
Office of Environmental Management's Advanced Long-term Monitoring Systems (ALTEMIS) project

UChicago Information

Division(s)
Physical Sciences Division
Department(s)
Computer Science