Knowledge-Guided Machine Learning Models to Upscale Evapotranspiration in the U.S. Midwest
By: Aleksei Rozanov , Samikshya Subedi , Vasudha Sharma and more
Potential Business Impact:
Measures water evaporation from fields accurately.
Evapotranspiration (ET) plays a critical role in the land-atmosphere interactions, yet its accurate quantification across various spatiotemporal scales remains a challenge. In situ measurement approaches, like eddy covariance (EC) or weather station-based ET estimation, allow for measuring ET at a single location. Agricultural uses of ET require estimates for each field over broad areas, making it infeasible to deploy sensing systems at each location. This study integrates tree-based and knowledge-guided machine learning (ML) techniques with multispectral remote sensing data, griddled meteorology and EC data to upscale ET across the Midwest United States. We compare four tree-based models - Random Forest, CatBoost, XGBoost, LightGBM - and a simple feed-forward artificial neural network in combination with features engineered using knowledge-guided ML principles. Models were trained and tested on EC towers located in the Midwest of the United States using k-fold cross validation with k=5 and site-year, biome stratified train-test split to avoid data leakage. Results show that LightGBM with knowledge-guided features outperformed other methods with an R2=0.86, MSE=14.99 W m^-2 and MAE = 8.82 W m^-2 according to grouped k-fold validation (k=5). Feature importance analysis shows that knowledge-guided features were most important for predicting evapotranspiration. Using the best performing model, we provide a data product at 500 m spatial and one-day temporal resolution for gridded ET for the period of 2019-2024. Intercomparison between the new gridded product and state-level weather station-based ET estimates show best-in-class correspondence.
Similar Papers
Knowledge-guided machine learning for county-level corn yield prediction under drought
Machine Learning (CS)
Predicts corn harvest better using soil and weather.
On Global Applicability and Location Transferability of Generative Deep Learning Models for Precipitation Downscaling
Machine Learning (CS)
Makes weather forecasts work everywhere.
Knowledge-Guided Adaptive Mixture of Experts for Precipitation Prediction
Artificial Intelligence
Predicts rain better by combining different weather data.