Not logged in
PANGAEA.
Data Publisher for Earth & Environmental Science

Dionizio, Emily Ane; Pimenta, Fernando Martins; Lima, Lucas Barbosa; Costa, Marcos Heil (2020): Historical carbon stocks database for Western Bahia (1990-2018) [dataset]. PANGAEA, https://doi.org/10.1594/PANGAEA.923885

Always quote citation above when using data! You can download the citation in several formats below.

RIS CitationBibTeX Citation

Abstract:
We developed the first time series of carbon stocks (Aboveground- AGB, Belowground- BGB and Soil Carbon Stocks-SCS) for Western Bahia from 1990-2018. This region is located at the largest and most dynamic agricultural frontier in Brazil known as MATOPIBA.
The methods used here to develop carbon stocks time series combine data from the literature for Aboveground (AGB) and Belowground (BGB), and Soil Carbon Stocks measurements (SCS) for six land use and land cover classes (irrigated agriculture, rainfed agriculture, pasture, Savana Formations, Grasslands formations, and Forest formations) with modeling and remote sensing techniques. All maps have a scale of 1:15,000 (30 m spatial resolution) and are in NetCDF (network Common Data Form) format.
These time series were generated and discussed in the study "Carbon stocks and dynamics of different land uses on the Cerrado agricultural frontier", published in PLOS ONE journal. Data sources, assumptions and calculations are described in detail in the reference above.
Keyword(s):
Biomass; land use change; soil carbon; sustainable agriculture; tropical savanna
Related to:
Dionizio, Emily Ane; Pimenta, Fernando Martins; Lima, Lucas Barbosa; Costa, Marcos Heil (accepted): Carbon stocks and dynamics of different land uses on the Cerrado agricultural frontier. PLoS ONE
Parameter(s):
#NameShort NameUnitPrincipal InvestigatorMethod/DeviceComment
1Binary ObjectBinaryDionizio, Emily Ane
2Binary Object (Media Type)Binary (Type)Dionizio, Emily Ane
3Binary Object (File Size)Binary (Size)BytesDionizio, Emily Ane
Size:
87 data points

Download Data

Download dataset as tab-delimited text — use the following character encoding:

View dataset as HTML