EGU26-2168, updated on 13 Mar 2026
https://doi.org/10.5194/egusphere-egu26-2168
EGU General Assembly 2026
© Author(s) 2026. This work is distributed under
the Creative Commons Attribution 4.0 License.
Oral | Thursday, 07 May, 14:10–14:20 (CEST)
 
Room 2.23
Machine Learning and Proximal Sensing for Predicting Evapotranspiration of Agricultural Systems
Darren Drewry1,2,3, James Cross4, Sana Shirazi4, Srishti Gaur5, Kanishka Mallick6, Guler Aslan-Sungur7, and Andy Vanloocke7
Darren Drewry et al.
  • 1Department of Food, Agricultural and Biological Engineering, Ohio State University, Columbus, United States of America (drewry.19@osu.edu)
  • 2Department of Horticulture and Crop Science, Ohio State University, Columbus, United States of America
  • 3Translational Data Analytics Institute, Ohio State University, Columbus, United States of America
  • 4Department of Food, Agricultural and Biological Engineering, Ohio State University, Columbus, United States of America
  • 5Department of Climate and Space Sciences and Engineering, University of Michigan, Ann Arbor, United States of America
  • 6Luxembourg Institute of Science and Technology, Esch-sur-Alzette, Luxembourg
  • 7Department of Agronomy, Iowa State University, Ames, United States of America

Machine learning methods provide a powerful basis for developing flexible, non-parametric models of complex phenomena and have demonstrated strong predictive capabilities across many areas of the physical sciences generally and the earth sciences specifically. While machine learning methods have been demonstrated to be flexible predictive tools capable of integrating diverse data streams, they present significant challenges in terms of interpretability and generalizability. This is especially true in the context of ecohydrological or biophysical systems, where the objective is often to develop a better understanding of the underlying system rather than exclusively improve predictive performance. There is a growing recognition that interpretability, physical consistency, and data complexity are key challenges in the successful adoption of machine learning methodologies. Here we evaluate the application of machine learning methods to produce models for land-atmosphere water vapor exchange across a set of diverse agricultural systems. Specific focus is placed on the use of environmental and proximal sensing information to develop simple and effective models of evapotranspiration using both machine learning and hybrid modeling approaches that leverage the advantages of machine learning and biophysical simulation. Emphasis is placed on parsimonious model development and interpretability of model performance.

How to cite: Drewry, D., Cross, J., Shirazi, S., Gaur, S., Mallick, K., Aslan-Sungur, G., and Vanloocke, A.: Machine Learning and Proximal Sensing for Predicting Evapotranspiration of Agricultural Systems, EGU General Assembly 2026, Vienna, Austria, 3–8 May 2026, EGU26-2168, https://doi.org/10.5194/egusphere-egu26-2168, 2026.