posted on 2019-08-23, 15:38authored byC Silva, A Hudak, L Vierling, C Klauberg, M Garcia, A Ferraz, M Keller, J Eitel, S Saatchi
Airborne lidar is a technology well-suited for mapping many forest attributes, including
aboveground biomass (AGB) stocks and changes in selective logging in tropical forests. However,
trade-offs still exist between lidar pulse density and accuracy of AGB estimates. We assessed the
impacts of lidar pulse density on the estimation of AGB stocks and changes using airborne lidar
and field plot data in a selectively logged tropical forest located near Paragominas, Pará, Brazil.
Field-derived AGB was computed at 85 square 50 × 50 m plots in 2014. Lidar data were acquired
in 2012 and 2014, and for each dataset the pulse density was subsampled from its original density
of 13.8 and 37.5 pulses·m−2
to lower densities of 12, 10, 8, 6, 4, 2, 0.8, 0.6, 0.4 and 0.2 pulses·m−2
.
For each pulse density dataset, a power-law model was developed to estimate AGB stocks from
lidar-derived mean height and corresponding changes between the years 2012 and 2014. We found
that AGB change estimates at the plot level were only slightly affected by pulse density. However, at
the landscape level we observed differences in estimated AGB change of >20 Mg·ha−1 when pulse
density decreased from 12 to 0.2 pulses·m−2
. The effects of pulse density were more pronounced
in areas of steep slope, especially when the digital terrain models (DTMs) used in the lidar derived
forest height were created from reduced pulse density data. In particular, when the DTM from high
pulse density in 2014 was used to derive the forest height from both years, the effects on forest height
and the estimated AGB stock and changes did not exceed 20 Mg·ha−1
. The results suggest that AGB
change can be monitored in selective logging in tropical forests with reasonable accuracy and low
cost with low pulse density lidar surveys if a baseline high-quality DTM is available from at least one
lidar survey. We recommend the results of this study to be considered in developing projects and
national level MRV systems for REDD+ emission reduction programs for tropical forests.
Funding
Funding from NASA for the AfriSAR campaign and science products. Carlos Silva was partially
supported by a PhD scholarship from the National Council of Technological and Scientific Development—CNPq
via the Science Without Borders Program (Process 249802/2013-9).
History
Citation
Remote Sensing, 2017, 9 (10), pp. 1068-1068
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/School of Geography, Geology and the Environment