NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Back to Results
Aboveground biomass density models for NASA’s Global Ecosystem Dynamics Investigation (GEDI) lidar missionNASA’s Global Ecosystem Dynamics Investigation (GEDI) is collecting spaceborne full waveform lidar data with a primary science goal of producing accurate estimates of forest aboveground biomass density (AGBD). This paper presents the development of the models used to create GEDI’s footprint-level (~25 m) AGBD (GEDI04_A) product, including a description of the datasets used and the procedure for final model selection. The data used to fit our models are from a compilation of globally distributed spatially and temporally coincident field and airborne lidar datasets, whereby we simulated GEDI-like waveforms from airborne lidar to build a calibration database. We used this database to expand the geographic extent of past waveform lidar studies, and divided the globe into four broad strata by Plant Functional Type (PFT) and six geographic regions. GEDI’s waveform-to-biomass models take the form of parametric Ordinary Least Squares (OLS) models with simulated Relative Height (RH) metrics as predictor variables. From an exhaustive set of candidate models, we selected the best input predictor variables, and data transformations for each geographic stratum in the GEDI domain to produce a set of comprehensive predictive footprint-level models. We found that model selection frequently favored combinations of RH metrics at the 98th, 90th, 50th, and 10th height above ground-level percentiles (RH98, RH90, RH50, and RH10, respectively), but that inclusion of lower RH metrics (e.g. RH10) did not markedly improve model performance. Second, forced inclusion of RH98 in all models was important and did not degrade model performance, and the best performing models were parsimonious, typically having only 1-3 predictors. Third, stratification by geographic domain (PFT, geographic region) improved model performance in comparison to global models without stratification. Fourth, for the vast majority of strata, the best performing models were fit using square root transformation of field AGBD and/or height metrics. There was considerable variability in model performance across geographic strata, and areas with sparse training data and/or high AGBD values had the poorest performance. These models are used to produce global predictions of AGBD, but will be improved in the future as more and better training data become available.
Document ID
20220005077
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Laura Duncanson
(University of Maryland, College Park College Park, Maryland, United States)
James R. Kellner
(Brown University Providence, Rhode Island, United States)
John Armston
(University of Maryland, College Park College Park, Maryland, United States)
Ralph Dubayah
(University of Maryland, College Park College Park, Maryland, United States)
David M. Minor
(University of Maryland, College Park College Park, Maryland, United States)
Steven Hancock
(University of Edinburgh Edinburgh, United Kingdom)
Scott B Luthcke
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Sean P. Healey
(US Forest Service Washington D.C., District of Columbia, United States)
Paul L. Patterson
(US Forest Service Washington D.C., District of Columbia, United States)
Svetlana Saarela
(Norwegian University of Life Sciences Ås, Norway)
Suzanne Marselis
(University of Maryland, College Park College Park, Maryland, United States)
Carlos E. Silva ORCID
(University of Maryland, College Park College Park, Maryland, United States)
Jamis Bruening
(University of Maryland, College Park College Park, Maryland, United States)
Scott J. Goetz
(Northern Arizona University Flagstaff, Arizona, United States)
Hao Tang
(University of Maryland, College Park College Park, Maryland, United States)
Michelle Hofton
(University of Maryland, College Park College Park, Maryland, United States)
Bryan Blair
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Scott Luthcke
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Lola Fatoyinbo
(Goddard Space Flight Center Greenbelt, Maryland, United States)
Katharine Abernethy
(University of Stirling Stirling, Stirling, United Kingdom)
Alfonso Alonso
(Smithsonian Conservation Biology Institute Front Royal, Virginia, United States)
Hans-Erik Andersen
(US Forest Service Washington D.C., District of Columbia, United States)
Paul Aplin
(Edge Hill University Ormskirk, Lancashire, United Kingdom)
Timothy R. Baker
(University of Leeds Leeds, United Kingdom)
Nicolas Barbier
(AMAP, Univ Montpellier Montpellier, France)
Jean Francois Bastin
(University of Edinburgh Edinburgh, United Kingdom)
Peter Biber
(Technical University of Munich Munich, Germany)
Pascal Boeckx
(Ghent University Ghent, Belgium)
Jan Bogaert
(University of Liege)
Luigi Boschetti
(University of Idaho Moscow, Idaho, United States)
Peter Brehm Boucher
(Harvard University Cambridge, Massachusetts, United States)
Doreen S. Boyd
(University of Nottingham Nottingham, Nottingham, United Kingdom)
David F.R.P. Burslem
(University of Aberdeen Aberdeen, United Kingdom)
Sofia Calvo-Rodriguez
(University of Alberta Edmonton, Alberta, Canada)
Jermone Chave
(Laboratoire Evolution et Diversit´e Biologique)
Date Acquired
March 30, 2022
Publication Date
January 7, 2022
Publication Information
Publication: Remote Sensing of Environment
Publisher: Elsevier
Volume: 270
Issue Publication Date: March 1, 2022
URL: https://www.sciencedirect.com/science/article/pii/S0034425721005654?via%3Dihub
Subject Category
Earth Resources And Remote Sensing
Funding Number(s)
WBS: 306615.04.02.01
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
External Peer Committee
No Preview Available