Title
Pan-tropical prediction of forest structure from the largest trees
Date Issued
01 November 2018
Access level
open access
Resource Type
journal article
Author(s)
Bastin J.F.
Rutishauser E.
Kellner J.R.
Saatchi S.
Pélissier R.
Hérault B.
Slik F.
Bogaert J.
De Cannière C.
Marshall A.R.
Poulsen J.
Alvarez-Loyayza P.
Andrade A.
Angbonga-Basia A.
Araujo-Murakami A.
Arroyo L.
Ayyappan N.
de Azevedo C.P.
Banki O.
Barbier N.
Barroso J.G.
Beeckman H.
Bitariho R.
Boeckx P.
Boehning-Gaese K.
Brandão H.
Brearley F.Q.
Breuer Ndoundou Hockemba M.
Brienen R.
Camargo J.L.C.
Campos-Arceiz A.
Cassart B.
Chave J.
Chazdon R.
Chuyong G.
Clark D.B.
Clark C.J.
Condit R.
Davidar P.
de Haulleville T.
Descroix L.
Doucet J.L.
Dourdain A.
Droissart V.
Duncan T.
Espinosa S.
Farwig N.
Fayolle A.
Feldpausch T.R.
Ferraz A.
Fletcher C.
Gajapersad K.
Gillet J.F.
Amaral I.L.d.
Gonmadje C.
Grogan J.
Harris D.
Herzog S.K.
Homeier J.
Hubau W.
Hubbell S.P.
Hufkens K.
Hurtado J.
Kamdem N.G.
Kearsley E.
Kenfack D.
Kessler M.
Labrière N.
Laumonier Y.
Laurance S.
Laurance W.F.
Lewis S.L.
Libalah M.B.
Ligot G.
Lloyd J.
Lovejoy T.E.
Malhi Y.
Marimon B.S.
Marimon Junior B.H.
Martin E.H.
Matius P.
Meyer V.
Mendoza Bautista C.
Mtui A.
Neill D.
Parada Gutierrez G.A.
Pardo G.
Parren M.
Parthasarathy N.
Phillips O.L.
Pitman N.C.A.
Ploton P.
Ponette Q.
Ramesh B.R.
Razafimahaimodison J.C.
Réjou-Méchain M.
Rolim S.G.
Publisher(s)
Blackwell Publishing Ltd
Abstract
Aim: Large tropical trees form the interface between ground and airborne observations, offering a unique opportunity to capture forest properties remotely and to investigate their variations on broad scales. However, despite rapid development of metrics to characterize the forest canopy from remotely sensed data, a gap remains between aerial and field inventories. To close this gap, we propose a new pan-tropical model to predict plot-level forest structure properties and biomass from only the largest trees. Location: Pan-tropical. Time period: Early 21st century. Major taxa studied: Woody plants. Methods: Using a dataset of 867 plots distributed among 118 sites across the tropics, we tested the prediction of the quadratic mean diameter, basal area, Lorey's height, community wood density and aboveground biomass (AGB) from the ith largest trees. Results: Measuring the largest trees in tropical forests enables unbiased predictions of plot- and site-level forest structure. The 20 largest trees per hectare predicted quadratic mean diameter, basal area, Lorey's height, community wood density and AGB with 12, 16, 4, 4 and 17.7% of relative error, respectively. Most of the remaining error in biomass prediction is driven by differences in the proportion of total biomass held in medium-sized trees (50–70 cm diameter at breast height), which shows some continental dependency, with American tropical forests presenting the highest proportion of total biomass in these intermediate-diameter classes relative to other continents. Main conclusions: Our approach provides new information on tropical forest structure and can be used to generate accurate field estimates of tropical forest carbon stocks to support the calibration and validation of current and forthcoming space missions. It will reduce the cost of field inventories and contribute to scientific understanding of tropical forest ecosystems and response to climate change.
Start page
1366
End page
1383
Volume
27
Issue
11
Language
English
OCDE Knowledge area
Forestal Ecología
Scopus EID
2-s2.0-85054871795
Source
Global Ecology and Biogeography
ISSN of the container
1466822X
Sponsor(s)
J.-F.B. was supported for data collection by the FRIA-FNRS (Fond National pour la Recherche Scientifique), ERAIFT (Ecole Régionale Post-Universitaire d'Aménagement et de Gestion Intégrés des Forêts Tropicales), World Wide Fund for Nature (WWF) and by the CoForTips project (ANR-12-EBID-0002); T.d.H. was supported by the COBIMFO project (Congo Basin integrated monitoring for forest carbon mitigation and biodiversity) funded by the Belgian Science Policy Office (Belspo); C.H.G. was supported by the ‘Sud Expert Plantes’ project of French Foreign Affairs, CIRAD and SCAC. Some of the data in this paper were provided by the RAINFOR Network, the AfriTRON network, TEAM Network, the partnership between Conservation International, The Missouri Botanical Garden, The Smithsonian Institution and The Wildlife Conservation Society and the Gordon and Betty Moore Foundation. We acknowledge data contributions from the TEAM network not listed as co-authors (upon a voluntary basis). We thank Jean-Phillipe Puyravaud, Estação Científica Ferreira Penna (MPEG) and the Andrew Mellon Foundation and National Science Foundation (DEB 0742830). The forest plots in Nova Xavantina and Southern Amazonia, Brazil were funded by grants from Project PELD-CNPq/FAPEMAT (403725/2012-7; 441244/2016-5; 164131/2013); CNPq-PPBio (457602/2012-0); productivity grants (CNPq/PQ-2) to B. H. Marimon-Junior and B. S. Marimon; Project USA-NAS/PEER (#PGA-2000005316) and Project ReFlor FAPEMAT 0589267/2016. Finally, we thank Helen Muller-Landau for her careful revision and comments on the manuscript. J.‐F.B. was supported for data collection by the FRIA‐FNRS (Fond National pour la Recherche Scientifique), ERAIFT (Ecole Régionale Post‐Universitaire d’Aménagement et de Gestion Intégrés des Forêts Tropicales), World Wide Fund for Nature (WWF) (...) WWF and by the CoForTips project (ANR‐12‐EBID‐0002); T.d.H. was supported by the COBIMFO project (Congo Basin integrated mon‐ itoring for forest carbon mitigation and biodiversity) funded by the Belgian Science Policy Office (Belspo); C.H.G. was supported by the ‘Sud Expert Plantes’ project of French Foreign Affairs, CIRAD and SCAC. Some of the data in this paper were provided by the RAINFOR Network, the AfriTRON network, TEAM Network, the partnership between Conservation International, The Missouri Botanical Garden, The Smithsonian Institution and The Wildlife Conservation Society and the Gordon and Betty Moore Foundation. We acknowledge data contributions from the TEAM network not listed as co‐authors (upon a voluntary basis). We thank Jean‐Phillipe Puyravaud, Estação CientD?fica Ferreira Penna (MPEG) and the Andrew Mellon Foundation and National Science Foundation (DEB 0742830). The forest plots in Nova Xavantina and Southern Amazonia, Brazil were funded by grants from Project PELD‐CNPq/FAPEMAT (403725/2012‐7; 441244/2016‐5; 164131/2013); CNPq‐PPBio (457602/2012‐0); productivity grants (CNPq/PQ‐2) to B. H. Marimon‐Junior and B. S. Marimon; Project USA‐NAS/PEER (#PGA‐2000005316) and Project ReFlor FAPEMAT 0589267/2016. Finally, we thank Helen Muller‐Landau for her careful revision and comments on the manuscript.
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