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Estimation of Aboveground Biomass at a High Spatial Resolution Using an Extensive Data Record of Satellite Derived Metrics: A Case Study with California

Gong Zhang, NASA ARC/ Cal State Univ Monterey, yenite@gmail.com (Presenter)
Sangram Ganguly, NASA ARC, sangramganguly@gmail.com
Ramakrishna R. Nemani, NASA ARC, rama.nemani@nasa.gov
Sassan Saatchi, CALTECH/JPL, sassan.saatchi@jpl.nasa.gov
Yifan Yu, UCLA, yifan@atmos.ucla.edu
Alexander Fore, JPL, alexander.fore@jpl.nasa.gov
Weile Wang, CSUMB&NASA/ARC, weile.wang@gmail.com
Petr Votava, NASA ARC, petr.votava-1@nasa.gov
Andrew Michaelis, NASA ARC, andrew.r.michaelis@nasa.gov
Ranga Babu Myneni, Boston University, rmyneni@bu.edu

Several studies are presently underway in estimating aboveground biomass over large regions across the globe at a moderate spatial resolution using remote sensing-derived metrics and field inventory data. However, few studies demonstrate the ability of estimating biomass values at a high spatial resolution without utilizing field based inventory data. This is mainly due to a lack of processing capacity, unavailability of requisite ancillary data at the same resolution and absence of robust algorithms that can be generalized across different regions of the globe. To this end, this study aims to bring together a platform for initially acquiring all necessary available data and further devising an algorithm than can be effectively used in computing biomass over large regions. In this proto-typing study, we map the aboveground biomass for the state of California using functional relationships between Geoscience Laser Altimeter System (GLAS) derived height metrics (maximum height and Lorey’s height) and Landsat derived Leaf Area Index for different forest cover types as delineated by the National Land Cover Database (NLCD) 2006 land cover map. Additionally, the National Elevation Data (NED) data are utilized to screen for elevation and slope effects. The simple model based on extensive filtering of input data estimates aboveground biomass values that are comparable to the Forest Inventory and Analysis (FIA) estimates of biomass density and total biomass, both in terms of plot data and county to sub-ecoregion level aggregated data. We also undertake the exercise in preparing a framework for comparing biomass values obtained from different processing chains such as the Woodshole Research Group, United States Forest Service, NASA JPL to name a few. Comparison of our biomass estimates with existing biomass data sets including FIA estimates shows our estimates have the least bias and error. This is a promising result in terms of generalizing the algorithm for national-to global scale biomass estimates, where field level data are not readily available.

Presentation Type:  Poster

Session:  Science in Support of Decision Making   (Wed 10:00 AM)

Associated Project(s): 

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Poster Location ID: 260

 


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