| Literature DB >> 25489336 |
Naikoa Aguilar-Amuchastegui1, Juan Carlos Riveros2, Jessica L Forrest3.
Abstract
BACKGROUND: To implement the REDD+ mechanism (Reducing Emissions for Deforestation and Forest Degradation, countries need to prioritize areas to combat future deforestation CO2 emissions, identify the drivers of deforestation around which to develop mitigation actions, and quantify and value carbon for financial mechanisms. Each comes with its own methodological challenges, and existing approaches and tools to do so can be costly to implement or require considerable technical knowledge and skill. Here, we present an approach utilizing a machine learning technique known as Maximum Entropy Modeling (Maxent) to identify areas at high deforestation risk in the study area in Madre de Dios, Peru under a business-as-usual scenario in which historic deforestation rates continue. We link deforestation risk area to carbon density values to estimate future carbon emissions. We quantified area deforested and carbon emissions between 2000 and 2009 as the basis of the scenario.Entities:
Keywords: Accessibility; Carbon; Conservation; Forest; MAXENT; Species habitat modeling
Year: 2014 PMID: 25489336 PMCID: PMC4257064 DOI: 10.1186/s13021-014-0010-5
Source DB: PubMed Journal: Carbon Balance Manag ISSN: 1750-0680
Figure 1Deforestation between 2000-2009. Deforestation has been observed mainly along the main road, in mining areas and close to previously deforested areas.
Percent contributions of environmental variables to the Maxent model based on 2000-2006 data
| Accessibility index | 32 | 0.923 | 0.017 | |
| Distance to previous
deforestation | 65 | | | |
| Land designation | 3 | | | |
| Accessibility Index | 94 | 0.904 | 0.008 | |
| Land designation | 6 | | | |
| Distance to previous
deforestation | 94 | 0.920 | 0.013 | |
| Land designation | 6 | | | |
| Distance to roads | 26 | 0.904 | 0.019 | |
| Distance to towns | 47 | | | |
| Distance to rivers | 16 | | | |
| Slope | 1 | | | |
| Land designation | 10 | | | |
| Accessibility index | 95 | 0.912 | 0.009 | |
| Land designation | 5 |
(AUC = Area under curve, SD = Standard deviation).
Figure 2Accessibility as shown by an Accessibility Index estimated following [[38]]. Areas near rivers, roads, and previously deforested land show higher levels of accessibility.
Figure 3Soft estimation of future risk of deforestation based on observed deforestation between 2000-2005 overlaid with actual deforestation observed between 2006-2009. Predicted deforestation risk was based on 2000-2005 explanatory variables and observed deforestation. Nonforest in 2006 is shown in white. Observed deforestation points are based on 2006-2009 data [14]. Note broad scale agreement between predicted and observed locations of deforestation.
Figure 4Comparison between area predicted and area observed deforested 2006-2009. Black bars indicate that large observed deforestation patches are more likely to be correctly predicted as having a high probability of deforestation (p > 0.59). Observed areas of no forest cover change are more likely to be correctly predicted as having a low probability of deforestation (p < 0.10).
Figure 5Hard estimate of forest areas likely to be lost between 2009 and 2020. Prediction is based on the historical rate observed for the period 2006-2009 (Hr = 0.3%) and data on accessibility and land use designation for that same time period.