Please use this identifier to cite or link to this item: http://hdl.handle.net/2067/47909
Title: A comprehensive framework for assessing the accuracy and uncertainty of global above-ground biomass maps
Authors: Araza, Arnan
de Bruin, Sytze
Herold, Martin
Quegan, Shaun
Labriere, Nicolas
Rodriguez-Veiga, Pedro
Avitabile, Valerio
Santoro, Maurizio
Mitchard, Edward T.A.
Ryan, Casey M.
Phillips, Oliver L.
Willcock, Simon
Verbeeck, Hans
Carreiras, Joao
Hein, Lars
Schelhaas, Mart Jan
Pacheco-Pascagaza, Ana Maria
da Conceição Bispo, Polyanna
Vaglio Laurin, Gaia
Vieilledent, Ghislain
Slik, Ferry
Wijaya, Arief
Lewis, Simon L.
Morel, Alexandra
Liang, Jingjing
Sukhdeo, Hansrajie
Schepaschenko, Dmitry
Cavlovic, Jura
Gilani, Hammad
Lucas, Richard
Journal: REMOTE SENSING OF ENVIRONMENT 
Issue Date: 2022
Abstract: 
Over the past decade, several global maps of above-ground biomass (AGB) have been produced, but they exhibit significant differences that reduce their value for climate and carbon cycle modelling, and also for national estimates of forest carbon stocks and their changes. The number of such maps is anticipated to increase because of new satellite missions dedicated to measuring AGB. Objective and consistent methods to estimate the accuracy and uncertainty of AGB maps are therefore urgently needed. This paper develops and demonstrates a framework aimed at achieving this. The framework provides a means to compare AGB maps with AGB estimates from a global collection of National Forest Inventories and research plots that accounts for the uncertainty of plot AGB errors. This uncertainty depends strongly on plot size, and is dominated by the combined errors from tree measurements and allometric models (inter-quartile range of their standard deviation (SD) = 30–151 Mg ha−1). Estimates of sampling errors are also important, especially in the most common case where plots are smaller than map pixels (SD = 16–44 Mg ha−1). Plot uncertainty estimates are used to calculate the minimum-variance linear unbiased estimates of the mean forest AGB when averaged to 0.1∘. These are used to assess four AGB maps: Baccini (2000), GEOCARBON (2008), GlobBiomass (2010) and CCI Biomass (2017). Map bias, estimated using the differences between the plot and 0.1∘ map averages, is modelled using random forest regression driven by variables shown to affect the map estimates. The bias model is particularly sensitive to the map estimate of AGB and tree cover, and exhibits strong regional biases. Variograms indicate that AGB map errors have map-specific spatial correlation up to a range of 50–104 km, which increases the variance of spatially aggregated AGB map estimates compared to when pixel errors are independent. After bias adjustment, total pantropical AGB and its associated SD are derived for the four map epochs. This total becomes closer to the value estimated by the Forest Resources Assessment after every epoch and shows a similar decrease. The framework is applicable to both local and global-scale analysis, and is available at https://github.com/arnanaraza/PlotToMap. Our study therefore constitutes a major step towards improved AGB map validation and improvement.
URI: http://hdl.handle.net/2067/47909
ISSN: 0034-4257
DOI: 10.1016/j.rse.2022.112917
Appears in Collections:A1. Articolo in rivista

Files in This Item:
File Description SizeFormat Existing users please
Araza_VaglioLaurin_2022_RSE.pdf5.75 MBAdobe PDF    Request a copy
Show full item record

SCOPUSTM   
Citations 20

49
Last Week
2
Last month
2
checked on Apr 17, 2024

Page view(s)

49
Last Week
0
Last month
0
checked on Apr 24, 2024

Download(s)

2
checked on Apr 24, 2024

Google ScholarTM

Check

Altmetric


All documents in the "Unitus Open Access" community are published as open access.
All documents in the community "Prodotti della Ricerca" are restricted access unless otherwise indicated for specific documents