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      Markedly divergent estimates of A mazon forest carbon density from ground plots and satellites

      1 , 2 , 3 , 2 , 2 , 4 , 2 ,   2 , 5 , 6 , 7 , 2 , 8 , 9 , 1 , 10 , 11 , 12 , 3 , 13 , 12 , 14 , 15 , 16 , 17 , 18 , 19 , 20 , 4 , 21 , 22 , 23 , 24 , 25 , 7 , 26 , 27 , 28 , 29 , 7 , 2 , 30 , 31 , 32 , 7 , 7 , 33 , 33 , 11 , 34 ,   35 , 36 , 37 , 38 , 12 , 39 , 40 , 41 , 42 , 43 , 40 , 44 , 45 , 11 , 46 , 2 , 47 , 48 , 7 , 19 , 7 , 49 , 50 , 51 , 52 , 41 , 53 , 45 , 8 , 54 , 55 , 48 , 56 , 45 , 38 , 57 , 7 , 58 , 2
      Global Ecology and Biogeography
      Wiley

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          Abstract

          Aim The 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. Location Tropical forests of the Amazon basin. The permanent archive of the field plot data can be accessed at: http://dx.doi.org/10.5521/FORESTPLOTS.NET/2014_1 Methods Two recent pantropical RS maps of vegetation carbon are compared to a unique ground-plot dataset, involving tree measurements in 413 large inventory plots located in nine countries. The RS maps were compared directly to field plots, and kriging of the field data was used to allow area-based comparisons. Results The two RS carbon maps fail to capture the main gradient in Amazon forest carbon detected using 413 ground plots, from the densely wooded tall forests of the north-east, to the light-wooded, shorter forests of the south-west. The differences between plots and RS maps far exceed the uncertainties given in these studies, with whole regions over- or under-estimated by > 25%, whereas regional uncertainties for the maps were reported to be < 5%. Main conclusions Pantropical biomass maps are widely used by governments and by projects aiming to reduce deforestation using carbon offsets, but may have significant regional biases. Carbon-mapping techniques must be revised to account for the known ecological variation in tree wood density and allometry to create maps suitable for carbon accounting. The use of single relationships between tree canopy height and above-ground biomass inevitably yields large, spatially correlated errors. This presents a significant challenge to both the forest conservation and remote sensing communities, because neither wood density nor species assemblages can be reliably mapped from space.

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          Most cited references73

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          Towards a worldwide wood economics spectrum.

          Wood performs several essential functions in plants, including mechanically supporting aboveground tissue, storing water and other resources, and transporting sap. Woody tissues are likely to face physiological, structural and defensive trade-offs. How a plant optimizes among these competing functions can have major ecological implications, which have been under-appreciated by ecologists compared to the focus they have given to leaf function. To draw together our current understanding of wood function, we identify and collate data on the major wood functional traits, including the largest wood density database to date (8412 taxa), mechanical strength measures and anatomical features, as well as clade-specific features such as secondary chemistry. We then show how wood traits are related to one another, highlighting functional trade-offs, and to ecological and demographic plant features (growth form, growth rate, latitude, ecological setting). We suggest that, similar to the manifold that tree species leaf traits cluster around the 'leaf economics spectrum', a similar 'wood economics spectrum' may be defined. We then discuss the biogeography, evolution and biogeochemistry of the spectrum, and conclude by pointing out the major gaps in our current knowledge of wood functional traits.
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            Continental-scale patterns of canopy tree composition and function across Amazonia.

            The world's greatest terrestrial stores of biodiversity and carbon are found in the forests of northern South America, where large-scale biogeographic patterns and processes have recently begun to be described. Seven of the nine countries with territory in the Amazon basin and the Guiana shield have carried out large-scale forest inventories, but such massive data sets have been little exploited by tropical plant ecologists. Although forest inventories often lack the species-level identifications favoured by tropical plant ecologists, their consistency of measurement and vast spatial coverage make them ideally suited for numerical analyses at large scales, and a valuable resource to describe the still poorly understood spatial variation of biomass, diversity, community composition and forest functioning across the South American tropics. Here we show, by using the seven forest inventories complemented with trait and inventory data collected elsewhere, two dominant gradients in tree composition and function across the Amazon, one paralleling a major gradient in soil fertility and the other paralleling a gradient in dry season length. The data set also indicates that the dominance of Fabaceae in the Guiana shield is not necessarily the result of root adaptations to poor soils (nodulation or ectomycorrhizal associations) but perhaps also the result of their remarkably high seed mass there as a potential adaptation to low rates of disturbance.
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              Tree allometry and improved estimation of carbon stocks and balance in tropical forests.

              Tropical forests hold large stores of carbon, yet uncertainty remains regarding their quantitative contribution to the global carbon cycle. One approach to quantifying carbon biomass stores consists in inferring changes from long-term forest inventory plots. Regression models are used to convert inventory data into an estimate of aboveground biomass (AGB). We provide a critical reassessment of the quality and the robustness of these models across tropical forest types, using a large dataset of 2,410 trees >or= 5 cm diameter, directly harvested in 27 study sites across the tropics. Proportional relationships between aboveground biomass and the product of wood density, trunk cross-sectional area, and total height are constructed. We also develop a regression model involving wood density and stem diameter only. Our models were tested for secondary and old-growth forests, for dry, moist and wet forests, for lowland and montane forests, and for mangrove forests. The most important predictors of AGB of a tree were, in decreasing order of importance, its trunk diameter, wood specific gravity, total height, and forest type (dry, moist, or wet). Overestimates prevailed, giving a bias of 0.5-6.5% when errors were averaged across all stands. Our regression models can be used reliably to predict aboveground tree biomass across a broad range of tropical forests. Because they are based on an unprecedented dataset, these models should improve the quality of tropical biomass estimates, and bring consensus about the contribution of the tropical forest biome and tropical deforestation to the global carbon cycle.
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                Author and article information

                Contributors
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                Journal
                Global Ecology and Biogeography
                Global Ecology and Biogeography
                Wiley
                1466-822X
                1466-8238
                August 2014
                April 22 2014
                August 2014
                : 23
                : 8
                : 935-946
                Affiliations
                [1 ]School of GeoSciences University of Edinburgh Edinburgh EH9 3JN UK
                [2 ]School of Geography University of Leeds Leeds LS2 9JT UK
                [3 ]Geography College of Life and Environmental Sciences University of Exeter Exeter EX4 4RJ UK
                [4 ]Jardín Botánico de Missouri Oxapampa Peru
                [5 ]Department of Geography University College London UK
                [6 ]Faculty of Natural Sciences Department of Life Sciences Imperial College London UK
                [7 ]Instituto Nacional de Pesquisas da Amazônia Manaus Brazil
                [8 ]Naturalis Biodiversity Center Leiden the Netherlands
                [9 ]Institute of Environmental Biology Utrecht University Utrecht the Netherlands
                [10 ]Research School of Biology Australian National University Canberra ACT 0200 Australia
                [11 ]Jardín Botánico de Medellín Grupo de Investigación en Servicios Ecosistémicos y Cambio Climático Medellin Colombia
                [12 ]Museo de Historia Natural Noel Kempff Mercado Universidad Autónoma Gabriel René Moreno Casilla 2489, Av. Irala 565 Santa Cruz Bolivia
                [13 ]Remote Sensing Division National Institute for Space Research – INPE São José dos Campos SP Brazil
                [14 ]UNELLEZ‐Guanare Programa de Ciencias del Agro y el Mar Herbario Universitario (PORT) Mesa de Cavacas Estado Portuguesa 3350 Venezuela
                [15 ]IBED University of Amsterdam POSTBUS 94248 1090 GE Amsterdam the Netherlands
                [16 ]L'Institut National de la Recherche Agronomique UMR 1137 EEF 54280 Champenoux France
                [17 ]Ecosystem Services Unit Winrock International Arlington VA 22202 USA
                [18 ]Woods Hole Research Center Falmouth MA USA
                [19 ]Universidade Federal do Acre Centro de Ciências Biológicas e da Natureza Rio Branco AC 69910‐900 Brazil
                [20 ]Herbario Alfredo Paredes (QAP) Universidad Central del Ecuador Quito Ecuador
                [21 ]Université Paul Sabatier Laboratoire EDB bâtiment 4R3 31062 Toulouse France
                [22 ]National Park Service Fredericksburg VA USA
                [23 ]Universidad Nacional Agraria La Molina Facultad de Ciencias Forestales Lima Peru
                [24 ]Universidad Nacional de San Agustín de Arequipa Arequipa Peru
                [25 ]Geociencias Universidade Federal de Para Belem Brazil
                [26 ]Univeristy of Texas Austin TX USA
                [27 ]FFCLRP‐USP Department of Biology Universidade de São Paulo 05508‐090 Brazil
                [28 ]Department of Entomology Smithsonian Institution P.O. Box 37012, MRC 187 Washington, DC 20013‐7012 USA
                [29 ]Ferrum College Ferum Virginia USA
                [30 ]Instituto de Investigaciones de la Amazonía Peruana Av. José A. Quiñones km. 2.5 Iquitos Peru
                [31 ]World Wildlife Fund 1250 24th Street, N.W. Washington, DC 20037 USA
                [32 ]Centre for Tropical Environmental and Sustainability Science (TESS) School of Marine and Tropical Biology James Cook University Cairns Queensland 4878 Australia
                [33 ]Universidade do Estado de Mato Grosso Campus de Nova Xavantina Caixa Postal 08 CEP 78.690‐000 Nova Xavantina MT Brazil
                [34 ]Department of Civil Engineering Indian Institute of Technology Roorkee Uttarakhand 247667 India
                [35 ]Centro de Biociências e Biotecnologia Universidade Estadual do Norte Fluminese Campos dos Goytacazes RJ Brasil
                [36 ]Puyo Universidad Estatal Amazónica Paso lateral km 2½ via a Napo Pastaza Ecuador
                [37 ]Universidad Nacional de San Antonio Abad del Cusco Cusco Peru
                [38 ]Escuela de Ingeniería Forestal Universidad Técnica del Norte Ecuador
                [39 ]Universidad Autónoma del Beni Riberalta Beni Bolivia
                [40 ]Forest Ecology and Forest Management Group Wageningen University P.O. Box 47 6700 AA Wageningen the Netherlands
                [41 ]Instituto Boliviano de Investigación Forestal Santa Cruz Bolivia
                [42 ]Center for Tropical Conservation Duke University Box 90381 Durham NC 27708 USA
                [43 ]Centre for Biodiversity Research School of Environmental Sciences University of East Anglia Norwich NR4 7JT UK
                [44 ]Instituto de Ciencias Naturales Universidad Nacional de Colombia Bogota Colombia
                [45 ]Universidad de Los Andes Merida Venezuela
                [46 ]Department of Biology University of Florida P.O. 118526 511 Bartram Hall Gainesville FL 32611‐8526 USA
                [47 ]Universidad Nacional de Colombia Leticia Colombia
                [48 ]Museu Paraense Emilio Goeldi Av. Magalhães Barata, 376, São Braz 66040‐170 Belém PA Brazil
                [49 ]Center for Applied Biodiversity Science Conservation International Washington, DC USA
                [50 ]Institute for Environment and Sustainability Joint Research Centre of the European Commission Via Enrico Fermi, 2748 TP 440 I‐21027 Ispra Italy
                [51 ]Nicholas School of the Environment Duke University Box 90381 Durham NC 27708 USA
                [52 ]Iwokrama International Centre 77 High Street Kingston Georgetown Guyana
                [53 ]Universidad Autónoma Gabriel René Moreno Santa Cruz Bolivia
                [54 ]University of Wisconsin‐Milwaukee P.O Box 413 Milwaukee WI 53201 USA
                [55 ]Smithsonian Tropical Research Institute Apartado Postal 0843‐03092 Panamá Panama
                [56 ]Núcleo de Estudos e Pesquisas Ambientais Universidade Estadual de Campinas Campinas Brazil
                [57 ]Lab of Landscape Ecology and Conservation Biology Northern Arizona University Flagstaff AZ USA
                [58 ]School of Geography and the Environment University of Oxford Oxford UK
                Article
                10.1111/geb.12168
                6f07414c-077e-4c1c-a65b-61c8a26b32f7
                © 2014

                http://creativecommons.org/licenses/by/3.0/

                http://doi.wiley.com/10.1002/tdm_license_1.1

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