CoCO2-MOSAIC 1.0: a global mosaic of regional, gridded, fossil, and biofuel CO2 emission inventories (resumen)
Fecha
2024-06-22Autor
Berna Peña, Lucas
Lopez Noreña, Ana
Puliafito, Enrique
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Mostrar el registro completo del ítemResumen
Gridded bottom-up inventories of CO2 emissions are needed in global CO2 inversion schemes as
priors to initialize transport models and as a complement to top-down estimates to identify the anthropogenic
sources. Global inversions require gridded datasets almost in near-real time that are spatially and methodologi-
cally consistent at a global scale. This may result in a loss of more detailed information that can be assessed by
using regional inventories because they are built with a greater level of detail including country-specific infor-
mation and finer resolution data. With this aim, a global mosaic of regional, gridded CO2 emission inventories,
hereafter referred to as CoCO2-MOSAIC 1.0, has been built in the framework of the CoCO2 project.
CoCO2-MOSAIC 1.0 provides gridded (0.1
◦
0.1
×
◦
) monthly emissions fluxes of CO2 fossil fuel (CO2ff, long
cycle) and CO2 biofuel (CO2bf, short cycle) for the years 2015–2018 disaggregated in seven sectors. The regional
inventories integrated are CAMS-REG-GHG 5.1 (Europe), DACCIWA 2.0 (Africa), GEAA-AEI 3.0 (Argentina),
INEMA 1.0 (Chile), REAS 3.2.1 (East, Southeast, and South Asia), and VULCAN 3.0 (USA). EDGAR 6.0,
CAMS-GLOB-SHIP 3.1 and CAMS-GLOB-TEMPO 3.1 are used for gap-filling. CoCO2-MOSAIC 1.0 can be
recommended as a global baseline emission inventory for 2015 which is regionally accepted as a reference, and
as such we use the mosaic to inter-compare the most widely used global emission inventories: CAMS-GLOB-
ANT 5.3, EDGAR 6.0, ODIAC v2020b, and CEDS v2020_04_24. CoCO2-MOSAIC 1.0 has the highest CO2ff
(36.7 Gt) and CO2bf (5.9 Gt) emissions globally, particularly in the USA and Africa. Regional emissions gener-
ally have a higher seasonality representing better the local monthly profiles and are generally distributed over a higher number of pixels, due to the more detailed information available. All super-emitting pixels from regional
inventories contain a power station (CoCO2 database), whereas several super-emitters from global inventories
are likely incorrectly geolocated, which is likely because regional inventories provide large energy emitters as
point sources including regional information on power plant locations.
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