Data for: Learned 1-D passive scalar advection to accelerate chemical transport modeling: a case study with GEOS-FP horizontal wind fields

Dataset

Description

This dataset contains the training results (model parameters, outputs), datasets for generalization testing, and 2-D implementation used in the article "Learned 1-D passive scalar advection to accelerate chemical transport modeling: a case study with GEOS-FP horizontal wind fields." The article will be submitted to Artificial Intelligence for Earth Systems. The datasets are saved as CSV for 1-D time-series data and *netCDF for 2-D time series dataset. The model parameters are saved in every training epoch tested in the study.
Date made availableMay 23 2024
PublisherUniversity of Illinois Urbana-Champaign

Keywords

  • Air quality modeling
  • Numerical advection
  • Physics-informed machine learning
  • GEOS-Chem
  • Transport operator
  • Coarse-graining

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