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License GPLv3 Cirad Dataverse Website ForestAtRisk forestatrisk Python package bioRxiv

This repository includes the code used to produce the results of the following scientific article:

ORCID logo Vieilledent G., ORCID logo C. Vancutsem, ORCID logo C. Bourgoin, ORCID logo P. Ploton, ORCID logo P. Verley, and F. Achard. 2023. Spatial scenario of tropical deforestation and carbon emissions for the 21st century. bioRxiv. doi: 10.1101/2022.03.22.485306. manuscript in pdf Supplementary Information SI

ORCID logo

Figure: Pantropical map of the risk of deforestation.

Minimal reproducible example using the forestatrisk Python package

This notebook provides a minimal and reproducible example presenting the general approach we followed to model and forecast deforestation in each of the 119 study areas (representing 92 countries) considered in the above article. We use the Guadeloupe archipelago as a case study. The notebook is available at the website associated with the forestatrisk Python package. This package has been specifically developed for this study and provides functions to model and forecast deforestation in the tropics.

Steps followed to produce the results of the study

We present below the R and Python scripts which have been used to produce the results of the study, from the datasets preparation to the writing of the manuscript.

1. Preparing datasets

## Derive past forest cover change maps from the annual product 
## of Vancutsem et al. 2021 using Google Earth Engine.
python Tropics/forest_gee_jrc.py

## Download raw data from on-line databases (GADM, SRTM, WDPA, OSM), and Google Drive.
python Tropics/download_raw_data.py

## Compute explanatory variables (elevation, slope, distances, etc.).
python Tropics/compute_variables.py

2. Estimating deforestation intensity

## Compute deforestation rates and uncertainty
Rscript Intensity/intensity.R

## Estimate contagious deforestation between states of Brazil
python Intensity/brazil_fcc_jrc.py

3. Spatial modeling and forecasting

## Model and forecast
python Tropics/model_and_forecast.py

4. Post-processing and writing

## Combine rasters to obtain continental maps
python Maps/combine.py

## Synthesize results
Rscript Analysis/synthesis.R

## Plot main maps
Rscript Maps/main_maps.R
Rscript Maps/main_maps_prob.R

## Plot supplementary maps
Rscript Maps/supp_maps.R

## Compile documents
Rscript Manuscript/zzz_knitr_compile/compile_book.R

Website accompanying the article

A website at https://forestatrisk.cirad.fr is accompanying the article cited above. The website includes the following resources:

Interactive map

We release interactive pantropical maps of the past forest cover change (2000–2010–2020), of the risk of deforestation (2020), and of the projected forest cover in 2050 and 2100:

Download

Rasters of results from this study can be downloaded as Cloud Optimized GeoTIFFs (COG):

Supplementary data

  • Data S1: Uncertainty around projected forest cover.
  • Data S2: Uncertainty around projected carbon emissions.

forestatrisk Python package

Results from this study have been obtained with the forestatrisk Python package:

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