SeasFire Cube: A Global Dataset for Seasonal Fire Modeling in the Earth System
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下载链接:
https://zenodo.org/record/6834584
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资源简介:
The SeasFire Cube is a scientific datacube for seasonal fire forecasting around the globe. Apart from seasonal fire forecasting, which is the aim of the SeasFire project, the datacube can be used for several other tasks. For example, it can be used to model teleconnections and memory effects in the earth system. Additionally, it can be used to model emissions from wildfires and the evolution of wildfire regimes.
It has been created in the context of the SeasFire project, which deals with "Earth System Deep Learning for Seasonal Fire Forecasting" and is funded by the European Space Agency (ESA) in the context of ESA Future EO-1 Science for Society Call.
It contains 21 years of data (2001-2021) in an 8-days time resolution and 0.25 degrees grid resolution. It has a diverse range of seasonal fire drivers. It expands from atmospheric and climatological ones to vegetation variables, socioeconomic and the target variables related to wildfires such as burned areas, fire radiative power, and wildfire-related CO2 emissions.
Datacube properties
Feature
Value
Spatial Coverage
Global
Temporal Coverage
2001 to 2021
Spatial Resolution
0.25 deg x 0.25 deg
Temporal Resolution
8 days
Number of Variables
54
Tutorial Link
https://github.com/SeasFire/seasfire-datacube
Full name
DataArray name
Unit
Contact *
Dataset: ERA5 Meteo Reanalysis Data
Mean sea level pressure
mslp
Pa
NOA
Total precipitation
tp
m
MPI
Relative humidity
rel_hum
%
MPI
Vapor Pressure Deficit
vpd
hPa
MPI
Sea Surface Temperature
sst
K
MPI
Skin temperature
skt
K
MPI
Wind speed at 10 meters
ws10
m*s-2
MPI
Temperature at 2 meters - Mean
t2m_mean
K
MPI
Temperature at 2 meters - Min
t2m_min
K
MPI
Temperature at 2 meters - Max
t2m_max
K
MPI
Surface net solar radiation
ssr
MJ m-2
MPI
Surface solar radiation downwards
ssrd
MJ m-2
MPI
Volumetric soil water level 1
swvl1
m3/m3
MPI
Volumetric soil water level 2
swvl2
m3/m3
MPI
Volumetric soil water level 3
swvl3
m3/m3
MPI
Volumetric soil water level 4
swvl4
m3/m3
MPI
Land-Sea mask
lsm
0-1
NOA
Dataset: Copernicus
CEMS
Drought Code Maximum
drought_code_max
unitless
NOA
Drought Code Average
drought_code_mean
unitless
NOA
Fire Weather Index Maximum
fwi_max
unitless
NOA
Fire Weather Index Average
fwi_mean
unitless
NOA
Dataset: CAMS: Global Fire Assimilation System (GFAS)
Carbon dioxide emissions from wildfires
cams_co2fire
kg/m²
NOA
Fire radiative power
cams_frpfire
W/m²
NOA
Dataset: FireCCI - European Space Agency’s Climate Change Initiative
Burned Areas from Fire Climate Change Initiative (FCCI)
fcci_ba
ha
NOA
Valid mask of FCCI burned areas
fcci_ba_valid_mask
0-1
NOA
Fraction of burnable area
fcci_fraction_of_burnable_area
%
NOA
Number of patches
fcci_number_of_patches
N
NOA
Fraction of observed area
fcci_fraction_of_observed_area
%
NOA
Dataset: Nasa MODIS MOD11C1, MOD13C1, MCD15A2
Land Surface temperature at day
lst_day
K
MPI
Leaf Area Index
lai
m²/m²
MPI
Normalized Difference Vegetation Index
ndvi
unitless
MPI
Dataset: Nasa SEDAC Gridded Population of the World (GPW), v4
Population density
pop_dens
persons per square kilometers
NOA
Dataset: Global Fire Emissions Database (GFED)
Burned Areas from GFED (large fires only)
gfed_ba
hectares (ha)
MPI
Valid mask of GFED burned areas
gfed_ba_valid_mask
0-1
NOA
GFED basis regions
gfed_region
N
NOA
Dataset: Global Wildfire Information System (GWIS)
Burned Areas from GWIS
gwis_ba
ha
NOA
Valid mask of GWIS burned areas
gwis_ba_valid_mask
0-1
NOA
Dataset: NOAA Climate Indices
Arctic Oscillation Index
oci_ao
unitless
NOA
Western Pacific Index
oci_wp
unitless
NOA
Pacific North American Index
oci_pna
unitless
NOA
North Atlantic Oscillation
oci_nao
unitless
NOA
Southern Oscillation Index
oci_soi
unitless
NOA
Global Mean Land/Ocean Temperature
oci_gmsst
unitless
NOA
Pacific Decadal Oscillation
oci_pdo
unitless
NOA
Eastern Asia/Western Russia
oci_ea
unitless
NOA
East Pacific/North Pacific Oscillation
oci_epo
unitless
NOA
Nino 3.4 Anomaly
oci_nino_34_anom
unitless
NOA
Bivariate ENSO Timeseries
oci_censo
unitless
NOA
Dataset: ESA CCI
Land Cover Class 0 - No data
lccs_class_0
%
NOA
Land Cover Class 1 - Agriculture
lccs_class_1
%
NOA
Land Cover Class 2 - Forest
lccs_class_2
%
NOA
Land Cover Class 3 - Grassland
lccs_class_3
%
NOA
Land Cover Class 4 - Wetlands
lccs_class_4
%
NOA
Land Cover Class 5 - Settlement
lccs_class_5
%
NOA
Land Cover Class 6 - Shrubland
lccs_class_6
%
NOA
Land Cover Class 7 - Sparse vegetation, bare areas, permanent snow and ice
lccs_class_7
%
NOA
Land Cover Class 8 - Water Bodies
lccs_class_8
%
NOA
Dataset: Biomes
Dataset: Calculated
Grid Area in square meters
area
m²
NOA
*The datacube specifications (temporal, spatial resolution, chunk size) have been set up by the Max Planck Institut (MPI) team. For the variables that the contact is MPI, Lazaro Alonso (lalonso bgc-jena.mpg.de) has led the efforts to collect and process them. For the variables that the contact is NOA, Ilektra Karasante (ile.karasante noa.gr) has led the efforts to collect and process them.
创建时间:
2024-09-26



