Partitioning of Eddy Covariance Footprint Evapotranspiration Using Field Data, UAS Observations and GeoAI in the U.S. Chihuahuan Desert
Habibur R. Howlider, Hernan A. Moreno, Marguerite E. Mauritz, Stephanie N. Marquez

TL;DR
This paper introduces a novel method combining field data, UAS observations, and deep learning to estimate transpiration contributions within an eddy covariance footprint in the U.S. Chihuahuan Desert, enhancing understanding of water fluxes.
Contribution
The study develops an integrated approach using remote sensing, plant measurements, and deep learning to upscale transpiration estimates from individual plants to landscape scale.
Findings
Mesquite transpiration averaged 2.84 mm/d in summer
Creosote transpiration averaged 1.78 mm/d in summer
Transpiration contributed about 50% to total evapotranspiration during the season
Abstract
This study proposes a new method for computing transpiration across an eddy covariance footprint using field observations of plant sap flow, phytomorphology sampling, uncrewed aerial system (UAS), deep learning-based digital image processing, and eddy covariance micrometeorological measurements. The method is applied to the Jornada Experimental Range, New Mexico, where we address three key questions: (1) What are the daily summer transpiration rates of Mesquite (Prosopis glandulosa) and Creosote (Larrea tridentata) individuals, and how do these species contribute to footprint-scale evapotranspiration? (2) How can the plant-level measurements be integrated for terrain-wide transpiration estimates? (3) What is the contribution of transpiration to total evapotranspiration within the eddy covariance footprint? Data collected from June to October 2022, during the North American Monsoon…
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