

Author: Cao Lin Coops Nicholas C. Innes John Dai Jinsong She Guanghui
Publisher: MDPI
E-ISSN: 1999-4907|5|6|1356-1373
ISSN: 1999-4907
Source: Forests, Vol.5, Iss.6, 2014-06, pp. : 1356-1373
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Abstract
In order to better assess the spatial variability in subtropical forest biomass, the goal of our study was to use small-footprint, discrete-return Light Detection and Ranging (LiDAR) data to accurately estimate and map above- and below-ground biomass components of subtropical forests. Foliage, branch, trunk, root, above-ground and total biomass of 53 plots (30 × 30 m) were modeled using a range of LiDAR-derived metrics, with individual models built for each of the three dominant forest types using stepwise multi-regression analysis. A regular grid covered the entire study site with cell size 30 × 30 m corresponding to the same size of the plots; it was generated for mapping each biomass component. Overall, results indicate that biomass estimation was more accurate in coniferous forests, compared with the mixed and broadleaved plots. The coefficient of determination (
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