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A Footprint-Aware, High-Resolution Approach for Carbon Flux Prediction Across Diverse Ecosystems

Published: December 1, 2025 | arXiv ID: 2512.01917v1

By: Jacob Searcy , Anish Dulal , Scott Bridgham and more

Potential Business Impact:

Maps forests' carbon capture accurately from space.

Business Areas:
Facial Recognition Data and Analytics, Software

Natural climate solutions (NCS) offer an approach to mitigating carbon dioxide (CO2) emissions. However, monitoring the carbon drawdown of ecosystems over large geographic areas remains challenging. Eddy-flux covariance towers provide ground truth for predictive 'upscaling' models derived from satellite products, but many satellites now produce measurements on spatial scales smaller than a flux tower's footprint. We introduce Footprint-Aware Regression (FAR), a first-of-its-kind, deep-learning framework that simultaneously predicts spatial footprints and pixel-level (30 m scale) estimates of carbon flux. FAR is trained on our AMERI-FAR25 dataset which combines 439 site years of tower data with corresponding Landsat scenes. Our model produces high-resolution predictions and achieves R2 = 0.78 when predicting monthly net ecosystem exchange on test sites from a variety of ecosystems.

Country of Origin
🇺🇸 United States

Page Count
29 pages

Category
Computer Science:
Machine Learning (CS)