TY - JOUR
T1 - Evaluating uncertainty in mapping forest carbon with airborne LiDAR
AU - Mascaro, Joseph
AU - Detto, Matteo
AU - Asner, Gregory P.
AU - Muller-Landau, Helene C.
N1 - Funding Information:
We thank Ty Kennedy-Bowdoin, James Jacobson, David Knapp, Aravindh Balaji and the rest of the Carnegie Airborne Observatory team for collecting and processing airborne LiDAR data, and two anonymous reviewers for comments on a previous version of this manuscript. This study was supported by the Gordon and Betty Moore Foundation , the John D. and Catherine T. MacArthur Foundation , and the HSBC Climate Partnership . The Carnegie Airborne Observatory is made possible by the Gordon and Betty Moore Foundation, W.M. Keck Foundation, and William Hearst III. The BCI forest dynamics research project is made possible by National Science Foundation grants to S. P. Hubbell: DEB-0640386 , DEB-0425651 , DEB-0346488 , DEB-0129874 , DEB-00753102 , DEB-9909347 , DEB-9615226 , DEB-9615226 , DEB-9405933 , DEB-9221033 , DEB-9100058 , DEB-8906869 , DEB-8605042 , DEB-8206992 , DEB-7922197 , support from the Center for Tropical Forest Science, the Smithsonian Tropical Research Institute, the John D. and Catherine T. MacArthur Foundation, the Mellon Foundation, the Celera Foundation, and numerous private individuals, and through the hard work of over 100 people from 10 countries over the past two decades. The plot project is part the Center for Tropical Forest Science, a global network of large-scale demographic tree plots.
PY - 2011/12/15
Y1 - 2011/12/15
N2 - Airborne LiDAR is increasingly used to map carbon stocks in tropical forests, but our understanding of mapping errors is constrained by the spatial resolution (i.e., plot size) used to calibrate LiDAR with field data (typically 0.1-0.36ha). Reported LiDAR errors range from 17 to 40MgCha-1, but should be lower at coarser resolutions because relative errors are expected to scale with (plot area)-1/2. We tested this prediction empirically using a 50-ha plot with mapped trees, allowing an assessment of LiDAR prediction errors at multiple spatial resolutions. We found that errors scaled approximately as expected, declining by 38% (compared to 40% predicted from theory) from 0.36- to 1-ha resolution. We further reduced errors at all spatial resolutions by accounting for tree crowns that are bisected by plot edges (not typically done in forestry), and collectively show that airborne LiDAR can map carbon stocks with 10% error at 1-ha resolution - a level comparable to the use of field plots alone.
AB - Airborne LiDAR is increasingly used to map carbon stocks in tropical forests, but our understanding of mapping errors is constrained by the spatial resolution (i.e., plot size) used to calibrate LiDAR with field data (typically 0.1-0.36ha). Reported LiDAR errors range from 17 to 40MgCha-1, but should be lower at coarser resolutions because relative errors are expected to scale with (plot area)-1/2. We tested this prediction empirically using a 50-ha plot with mapped trees, allowing an assessment of LiDAR prediction errors at multiple spatial resolutions. We found that errors scaled approximately as expected, declining by 38% (compared to 40% predicted from theory) from 0.36- to 1-ha resolution. We further reduced errors at all spatial resolutions by accounting for tree crowns that are bisected by plot edges (not typically done in forestry), and collectively show that airborne LiDAR can map carbon stocks with 10% error at 1-ha resolution - a level comparable to the use of field plots alone.
KW - Aboveground biomass
KW - Crown radius
KW - Light detection and ranging
KW - Spatial autocorrelation
KW - Tree allometry
KW - Tropical forest carbon stocks
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U2 - 10.1016/j.rse.2011.07.019
DO - 10.1016/j.rse.2011.07.019
M3 - Article
AN - SCOPUS:81355147450
SN - 0034-4257
VL - 115
SP - 3770
EP - 3774
JO - Remote Sensing of Environment
JF - Remote Sensing of Environment
IS - 12
ER -