Validating remotely sensed biomass estimates with forest inventory data in the western US
Xiuyu Cao, Joseph O. Sexton, Panshi Wang, Dimitrios Gounaridis, Neil H. Carter, Kai Zhu

TL;DR
This study validates a commercial aboveground biomass dataset using independent US Forest Service data, demonstrating strong agreement and highlighting areas for improvement in non-forest and high-biomass regions.
Contribution
It provides a scalable validation framework for biomass datasets using FIA data and benchmarks a new commercial AGBD product for global monitoring.
Findings
Strong correlation between terraPulse and FIA estimates (R2 > 0.88)
Agreement improves at larger spatial scales (R2 > 0.90)
Identified biases in non-forest and high-biomass areas
Abstract
Monitoring aboveground biomass (AGB) and its density (AGBD) at high resolution is essential for carbon accounting and ecosystem management. While NASA's spaceborne Global Ecosystem Dynamics Investigation (GEDI) LiDAR mission provides globally distributed reference measurements for AGBD estimation, the majority of commercial remote sensing products based on GEDI remain without rigorous or independent validation. Here, we present an independent regional validation of an AGBD dataset offered by terraPulse, Inc., based on independent reference data from the US Forest Service Forest Inventory and Analysis (FIA) program. Aggregated to 64,000-hectare hexagons and US counties across the US states of Utah, Nevada, and Washington, we found very strong agreement between terraPulse and FIA estimates. At the hexagon scale, we report R2 = 0.88, RMSE = 26.68 Mg/ha, and a correlation coefficient (r) of…
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