2014
DOI: 10.1111/geb.12168
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Markedly divergent estimates of Amazon forest carbon density from ground plots and satellites

Abstract: AimThe accurate mapping of forest carbon stocks is essential for understanding the global carbon cycle, for assessing emissions from deforestation, and for rational land-use planning. Remote sensing (RS) is currently the key tool for this purpose, but RS does not estimate vegetation biomass directly, and thus may miss significant spatial variations in forest structure. We test the stated accuracy of pantropical carbon maps using a large independent field dataset.LocationTropical forests of the Amazon basin. Th… Show more

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Cited by 276 publications
(318 citation statements)
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References 25 publications
(63 reference statements)
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“…Methodologies currently do not consider the fire type explicitly and typically model emissions on the basis of the dominant land cover or vegetation type where active fires are detected (Freitas et al 2005;van der Werf et al 2008;Ichoku and Ellison 2013;Castellanos, Boersma, and Van Der Werf 2014;Mitchard et al 2014). The spatial distribution of the classified fire types may help provide more reliable parameterization of the biomass loading, combustion completeness, and emission factors that differ among the fire types.…”
Section: Discussionmentioning
confidence: 99%
“…Methodologies currently do not consider the fire type explicitly and typically model emissions on the basis of the dominant land cover or vegetation type where active fires are detected (Freitas et al 2005;van der Werf et al 2008;Ichoku and Ellison 2013;Castellanos, Boersma, and Van Der Werf 2014;Mitchard et al 2014). The spatial distribution of the classified fire types may help provide more reliable parameterization of the biomass loading, combustion completeness, and emission factors that differ among the fire types.…”
Section: Discussionmentioning
confidence: 99%
“…1). In the light of the considerable uncertainties between RS products, as well as with site data [79][80][81] , we accepted the uncertainty we introduce through tree-height-based downscaling for the advantage of consistency, because national forest C-stock data are available with global coverage 26 . Other approaches that have been proposed for downscaling national carbon stock information, for example, following the pattern of NPP 82 , would result in one national τbact value for forest.…”
Section: Carbon Stock Of the Actual Vegetation (Scact )mentioning
confidence: 99%
“…All of these studies represent advances in interpretation of remote sensing data, but remain limited by their datasets for ground truth. Mitchard et al (2014) contrasted the spatial results of the Saatchi et al (2011) and Baccini et al (2012) remote sensing studies, as well as the geographical information system (GIS) analyses derived directly from plot data by Houghton et al (2001), Malhi et al (2006) and their own analysis of RAINFOR (Amazon Forest Inventory Network) plots (e.g., Phillips et al 2009). The results show major differences between all of the resulting maps, including those with largely overlapping ground-based datasets.…”
Section: Improving Interpretation Of Aboveground Biomass Datamentioning
confidence: 95%