There is a newer version of the record available.

Published January 30, 2025 | Version v1.0.0
Dataset Open

Post-processing workflow for ED2 simulations for the Brazilian Amazon, initialised with airborne lidar (Part 2)

  • 1. ROR icon Lawrence Berkeley National Laboratory
  • 2. USDA Forest Service
  • 3. ROR icon University of California, Berkeley
  • 4. ROR icon University of California, Los Angeles
  • 5. ROR icon Jet Propulsion Laboratory
  • 6. ROR icon Wake Forest University
  • 7. University of California Los Angeles Institute of the Environment and Sustainability
  • 8. ROR icon Harvard University
  • 9. ROR icon National Institute for Space Research
  • 10. ROR icon Universidade Federal de Minas Gerais
  • 11. ROR icon Cornell University
  • 12. ROR icon Universidade Federal dos Vales do Jequitinhonha e Mucuri
  • 13. UrbanFootprint
  • 14. UCLA Life Sciences
  • 15. EcoAct - Atos
  • 16. ROR icon Oregon State University
  • 17. Pachama Inc.

Description

These scripts uses the RData objects produced by the first set of post-processing workflows (available in this archive) to generate most figures presented in the following manuscript:

Longo, M., M. Keller, L. M. Kueppers, K. Bowman, O. Csillik, A. Ferraz, P. R. Moorcroft, J. P. Ometto, B. S. Soares-Filho, X. Xu, M. L. F. de Assis, E. B. Görgens, E. J. L. Larson, J. F. Needham, E. M. Ordway, F. R. S. Pereira, E. Rangel Pinagé, L. Sato, L. Xu and S. Saatchi. Degradation and deforestation increase the sensitivity of the Amazon Forest to climate extremes. In review.

This data set contains the following scripts, each in its own compressed directory. All directories for plots and summaries require setting the path to RUtils, which is also provided in this data set too.

  • 01+04+S14_PlotGMeanCompare.tgz. This script combines individual plots of global averages into Figure 1, Figure 4 and Figure S14.
  • 02+S10_PlotDYDX.tgz. This script combines individual plots of sensitivities to environmental drivers into Figure 2 and Figure S10.
  • 03_PlotXYSummary.tgz. This script combines plots of ET and GPP responses to environmental drivers by patch AGB classes into Figure 3.
  • 05_PlotXYSimSumm.tgz. This script combines plots of ET and GPP responses to environmental drivers by  simulation to into Figure 5.
  • S06_PlotGMeanEval_AGB+LAI.tgz. This script combines plots of global averages of AGB and LAI from ED2 and benchmarks into Figure S06.
  • S08_PlotEMeanCorr_GPP+ET+SH.tgz. This script combines plots of correlations of GPP, ET and SH between ED2 and select benchmarks into Figure S08.
  • S09_PlotGMeanFixed.tgz. This script combines global averages of edaphic conditions and mean annual precipitation into Figure S09. 
  • S11+S12_PlotXYbyPAGB.tgz. This script plots the ET and GPP response to environmental drivers by patch AGB classes and by Amazonian region into Figures S11 and S12.
  • S13_PlotGStateCompare.tgz. This script plots the global averages of AGB and LAI, and the differences between simulations Recovery and Degradation and Control.
  • S15+S16+S17_PlotXYbySimul.tgz. This script plots the plots of ET and GPP responses to environmental drivers by simulation and by Amazonian region into Figures S15, S16 and S17.
  • SummCompGMean.tgz. Summaries of the global mean analyses by variable of interest and simulation.
  • SummDYDXbyPAGB.tgz. Summaries of the sensitivities of ET and GPP to environmental drivers by patch AGB (simulation Control).
  • SummDYDXbySimul.tgz. Summaries of the sensitivities of ET and GPP to environmental drivers by simulation.
  • SummResponseByPAGB.tgz. Summaries of the responses of ET and GPP to environmental drivers by patch AGB (simulation Control).
  • SummResponseBySimul.tgz. Summaries of the responses of ET and GPP to environmental drivers by simulation.
  • RUtils.tgz. Folder containing additional R scripts that may be used for running all scripts above.

Additional figures not listed here were either generated with QGIS (Figures S1 and Figure S3),  by manually combining panels from existing output from the first set of post-processing workflows (Figure S2, Figure S5, Figure S7), or because they are generated directly by the first set of post-processing workflows (Figure S4). 

Files

Files (756.4 MB)

Name Size Download all
md5:d8f1fbafbb2b55ff83ab7ae507edc359
104.5 MB Download
md5:12f0e530bb56dcccd777d72638935461
186.3 MB Download
md5:872e868458f3ab9b2f7880634d0450b6
2.2 MB Download
md5:eab2c3d6366e5efab9d5c9c341d1d62a
1.7 MB Download
md5:773dda7931d64b8d6b0e5a87b5b3289f
251.5 kB Download
md5:52db8ea46547c13b46bd1c3a96659941
17.6 MB Download
md5:da13a1eac9fd5ef21a50170418623aac
11.6 MB Download
md5:e5a4beddbfa394c1e40f561793a5a708
9.0 MB Download
md5:6e827c368405a6809b079f6563252047
6.7 MB Download
md5:962b5a85825a04c6495a9ce8aeeddcc6
87.1 MB Download
md5:f2562610139f476dc9676b722f8b235f
7.1 MB Download
md5:88e2b1005ebdb2f5ff167f1d4262b41c
233.6 MB Download
md5:34b03426c1495060f66defcc2583db97
83.9 MB Download
md5:af7540810fad7049b9c726cb69c51883
2.9 MB Download
md5:10e89f7fb7120d503450f9c3a9241207
883.9 kB Download
md5:b04481d234c056a15b1ecb39d2898fbe
924.6 kB Download