We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Integrating forest inventory and analysis data into a LIDAR-based carbon monitoring system.
- Authors
Johnson, Kristofer D.; Birdsey, Richard; Finley, Andrew O.; Swantaran, Anu; Dubayah, Ralph; Wayson, Craig; Riemann, Rachel
- Abstract
Background Forest Inventory and Analysis (FIA) data may be a valuable component of a LIDAR-based carbon monitoring system, but integration of the two observation systems is not without challenges. To explore integration methods, two wall-to-wall LIDAR-derived biomass maps were compared to FIA data at both the plot and county levels in Anne Arundel and Howard Counties in Maryland. Allometric model-related errors were also considered. Results In areas of medium to dense biomass, the FIA data were valuable for evaluating map accuracy by comparing plot biomass to pixel values. However, at plots that were defined as "nonforest", FIA plots had limited value because tree data was not collected even though trees may be present. When the FIA data were combined with a previous inventory that included sampling of nonforest plots, 21 to 27% of the total biomass of all trees was accounted for in nonforest conditions, resulting in a more accurate benchmark for comparing to total biomass derived from the LIDAR maps. Allometric model error was relatively small, but there was as much as 31% difference in mean biomass based on local diameter-based equations compared to regional volume-based equations, suggesting that the choice of allometric model is important. Conclusions To be successfully integrated with LIDAR, FIA sampling would need to be enhanced to include measurements of all trees in a landscape, not just those on land defined as "forest". Improved GPS accuracy of plot locations, intensifying data collection in small areas with few FIA plots, and other enhancements are also recommended.
- Subjects
FOREST surveys; ONLINE monitoring systems; PLANT biomass; ALLOMETRIC equations; GLOBAL Positioning System
- Publication
Carbon Balance & Management, 2014, Vol 9, Issue 1, p1
- ISSN
1750-0680
- Publication type
Article
- DOI
10.1186/1750-0680-9-3