| Literature DB >> 26229548 |
Ida Theilade1, Ervan Rutishauser2, Michael K Poulsen3.
Abstract
BACKGROUND: REDD+ programs rely on accurate forest carbon monitoring. Several REDD+ projects have recently shown that local communities can monitor above ground biomass as well as external professionals, but at lower costs. However, the precision and accuracy of carbon monitoring conducted by local communities have rarely been assessed in the tropics. The aim of this study was to investigate different sources of error in tree biomass measurements conducted by community monitors and determine the effect on biomass estimates. Furthermore, we explored the potential of local ecological knowledge to assess wood density and botanical identification of trees.Entities:
Keywords: Community monitoring; Indonesia; MRV; REDD+; Species identification; Tree biomass; Wood density
Year: 2015 PMID: 26229548 PMCID: PMC4515755 DOI: 10.1186/s13021-015-0028-3
Source DB: PubMed Journal: Carbon Balance Manag ISSN: 1750-0680
Figure 1Standard deviation (Y-axis) around mean DBH measurements (X-axis). Linear regression (line) and 95% CI envelop are shown. Dot size is proportional to the frequency of large errors by DBH class.
Figure 2Difference in paired DBH measurements (Y-axis) of the same tree DBH (X-axis) among experienced (N = 4) and inexperienced (N = 2) monitors. Smoothed averaged curves and 95% CI envelop are shown.
Figure 3Boxplot of wood densities by wood hardness class estimated by experienced (grey) and inexperienced (blue) observers.
Figure 4Number of vernacular names (boxplots) at tree and species by experienced and inexperienced monitors for all trees (top) and Dipterocarps only (bottom).
Figure 5Smoothed average (line) and 95% confidence intervals (envelop) difference (%) of tree biomass estimates with (left) estimates (Estimates 1) computed with wood density derived from wood hardness; (right) estimates computed with DBH measurement and default wood density value (0.6 g cm−3).