Pan-tropical prediction of forest structure from the largest trees
Article
-
- Overview
-
- Research
-
- Identity
-
- Additional Document Info
-
- View All
-
Overview
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%27s 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%27s height, community wood density and AGB with 12, 16, 4, 4 and 17.7%25 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. © 2018 John Wiley %26 Sons Ltd
-
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%25 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. © 2018 John Wiley %26 Sons Ltd
publication date
funding provided via
-
2000005316 Grant
-
Andrew W. Mellon Foundation, AWMF Grant
-
Belgian Federal Science Policy Office, BELSPO Grant
-
CNPq/PQ-2 Grant
-
Centre National pour la Recherche Scientifique et Technique, CNRST Grant
-
Centre de Coopération Internationale en Recherche Agronomique pour le Développement, CIRAD Grant
-
Fundação de Amparo à Pesquisa do Estado de Mato Grosso, FAPEMAT: 0589267/2016, 403725/2012‐7, 441244/2016‐5, 457602/2012‐0 Grant
-
Gordon and Betty Moore Foundation, GBMF Grant
-
Missouri Botanical Garden, MBG Grant
-
National Science Foundation, NSF: 164131/2013, 403725/2012-7, 441244/2016-5, DEB 0742830 Grant
-
Natural Environment Research Council, NERC: NE/D01025X/1, NE/I02982X/1 Grant
-
Smithsonian Institution, SI Grant
-
WWF International, WWF: ANR‐12‐EBID‐0002 Grant
-
Wildlife Conservation Society, WCS Grant
published in
Research
keywords
-
carbon; climate change; forest structure; large trees; pan-tropical; REDD+; tropical forest ecology carbon cycle; climate change; data set; deforestation; emission control; forest ecosystem; prediction; tropical forest
Identity
Digital Object Identifier (DOI)
Additional Document Info
start page
end page
volume
issue