Published June 3, 2026 | Version v1
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Data for: A hybrid biophysical-machine learning framework for diurnal surface energy flux estimation using proximal sensing

  • 1. The Ohio State University
  • 2. Luxembourg Institute of Science and Technology
  • 3. Iowa State University

Description

Thermal-based remote sensing of surface energy fluxes has traditionally relied on high spatial resolution satellite data with revisit frequencies on the order of weeks. In this study, we evaluate a biophysics-based analytical surface energy balance model for predicting latent energy (LE) and sensible heat (H) fluxes using proximal sensing observations. The Surface Temperature Initiated Closure (STIC1.2) model has been extensively validated across a wide range of spatial and temporal scales using various satellite-derived thermal datasets. Here we extend this validation by applying STIC at sub-hourly temporal resolution over multiple growing seasons for four distinct agricultural systems. We further develop and evaluate novel STIC variants that incorporate machine learning (ML) techniques to eliminate the need for specific surface energy balance observations, specifically net radiation and soil heat flux, thereby enhancing model applicability in data-sparse settings. The integration of an ML component to estimate surface available energy is shown to have strong predictive performance for both LE (R2 = 0.81-0.94) and H (R2 = 0.46-0.72) across all agricultural systems examined here, demonstrating the potential of hybrid biophysical – machine learning approaches for surface energy balance modeling with minimal data requirements. This study concludes with a novel application of explainable machine learning (exML) to diagnose sources of model error. This exML framework attributes residual prediction errors to both model input variables and environmental drivers not explicitly included in the simulation experiments. This approach provides a new pathway for improving model design and integrating previously overlooked yet influential variables into future model iterations.

Notes

Funding provided by: The Ohio State University
ROR ID: https://ror.org/00rs6vg23
Award Number:

Funding provided by: Division of Atmospheric and Geospace Sciences
ROR ID: https://ror.org/037gd6g64
Award Number: 2239877

Funding provided by: National Aeronautics and Space Administration
ROR ID: https://ror.org/027ka1x80
Award Number: 80NSSC20K1789

Funding provided by: Office of Science
ROR ID: https://ror.org/00mmn6b08
Award Number: DE-SC0018420

Funding provided by: National Institute of Food and Agriculture
ROR ID: https://ror.org/05qx3fv49
Award Number: OHO01509

Funding provided by: National Research Fund Luxembourg
ROR ID: https://ror.org/039z13y21
Award Number: INTER/ANR/22/17204507/HiDRATE

Funding provided by: Centre National d'Études Spatiales
ROR ID: https://ror.org/04h1h0y33
Award Number:

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Additional details

Related works

Is derived from
10.5061/dryad.r4xgxd2tm (DOI)