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Lidar-Based Estimates of Above-Ground Biomass in the Continental US and Mexico Using Ground, Airborne, and Satellite ObservationsExisting national forest inventory plots, an airborne lidar scanning (ALS) system, and a space profiling lidar system (ICESat-GLAS) are used to generate circa 2005 estimates of total aboveground dry biomass (AGB) in forest strata, by state, in the continental United States (CONUS) and Mexico. The airborne lidar is used to link ground observations of AGB to space lidar measurements. Two sets of models are generated, the first relating ground estimates of AGB to airborne laser scanning (ALS) measurements and the second set relating ALS estimates of AGB (generated using the first model set) to GLAS measurements. GLAS then, is used as a sampling tool within a hybrid estimation framework to generate stratum-, state-, and national-level AGB estimates. A two-phase variance estimator is employed to quantify GLAS sampling variability and, additively, ALS-GLAS model variability in this current, three-phase (ground-ALS-space lidar) study. The model variance component characterizes the variability of the regression coefficients used to predict ALS-based estimates of biomass as a function of GLAS measurements. Three different types of predictive models are considered in CONUS to determine which produced biomass totals closest to ground-based national forest inventory estimates - (1) linear (LIN), (2) linear-no-intercept (LNI), and (3) log-linear. For CONUS at the national level, the GLAS LNI model estimate (23.95 +/- 0.45 Gt AGB), agreed most closely with the US national forest inventory ground estimate, 24.17 +/- 0.06 Gt, i.e., within 1%. The national biomass total based on linear ground-ALS and ALS-GLAS models (25.87 +/- 0.49 Gt) overestimated the national ground-based estimate by 7.5%. The comparable log-linear model result (63.29 +/-1.36 Gt) overestimated ground results by 261%. All three national biomass GLAS estimates, LIN, LNI, and log-linear, are based on 241,718 pulses collected on 230 orbits. The US national forest inventory (ground) estimates are based on 119,414 ground plots. At the US state level, the average absolute value of the deviation of LNI GLAS estimates from the comparable ground estimate of total biomass was 18.8% (range: Oregon,−40.8% to North Dakota, 128.6%). Log-linear models produced gross overestimates in the continental US, i.e., N2.6x, and the use of this model to predict regional biomass using GLAS data in temperate, western hemisphere forests is not appropriate. The best model form, LNI, is used to produce biomass estimates in Mexico. The average biomass density in Mexican forests is 53.10 +/- 0.88 t/ha, and the total biomass for the country, given a total forest area of 688,096 sq km, is 3.65 +/- 0.06 Gt. In Mexico, our GLAS biomass total underestimated a 2005 FAO estimate (4.152 Gt) by 12% and overestimated a 2007/8 radar study's figure (3.06 Gt) by 19%.
Document ID
20170000985
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Nelson, Ross
(NASA Goddard Space Flight Center Greenbelt, MD United States)
Margolis, Hank
(NASA Headquarters Washington, DC United States)
Montesano, Paul
(Science Systems and Applications, Inc. Lanham, MD, United States)
Sun, Guoqing
(Maryland Univ. College Park, MD, United States)
Cook, Bruce
(NASA Goddard Space Flight Center Greenbelt, MD United States)
Corp, Larry
(Science Systems and Applications, Inc. Lanham, MD, United States)
Andersen, Hans-Erik
(Forest Service Seattle, WA, United States)
DeJong, Ben
(El Colegio de la Frontera Sur, Av. Ranco Polígono Campeche, Mexico)
Pellat, Fernando Paz
(Colegio de Postgraduados en Ciencias Agrícolas Estado de México, Mexico)
Fickel, Thaddeus
(Infrared Baron, Inc. Hermiston, OR, United States)
Kauffman, Jobriath
(Virginia Tech Blacksburg, VA, United States)
Prisley, Stephen
(Virginia Tech Blacksburg, VA, United States)
Date Acquired
January 31, 2017
Publication Date
November 14, 2016
Publication Information
Publication: Remote Sensing of Environment
Publisher: Elsevier
Volume: 188
ISSN: 0034-4257
Subject Category
Earth Resources And Remote Sensing
Report/Patent Number
GSFC-E-DAA-TN38851
Funding Number(s)
CONTRACT_GRANT: NNX12AD03A
CONTRACT_GRANT: NNG15HQ01C
Distribution Limits
Public
Copyright
Other
Keywords
Hybrid 3-Phase sampling
Forest Biomass
ICESat/GLAS

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