N: 90 S: -90 E: 180 W: -180
Description
This is the Gridded Daily OCO-2 Carbon Dioxide assimilated dataset.
The OCO-2 mission provides the highest quality space-based XCO2 retrievals to date. However, the instrument data are characterized by large gaps in coverage due to OCO-2’s narrow 10-km ground track and an inability to see through clouds and thick aerosols. This global gridded dataset is produced using a data assimilation technique commonly referred to as state estimation within the geophysical literature. Data assimilation synthesizes simulations and observations, adjusting the state of atmospheric constituents like CO2 to reflect observed values, thus gap-filling observations when and where they are unavailable based on previous observations and short transport simulations by GEOS. Compared to other methods, data assimilation has the advantage that it makes estimates based on our collective scientific understanding, notably of the Earth’s carbon cycle and atmospheric transport.
OCO-2 GEOS (Goddard Earth Observing System) Level 3 data are produced by ingesting OCO-2 L2 retrievals every 6 hours with GEOS CoDAS, a modeling and data assimilation system maintained by NASA’s Global Modeling and Assimilation Office (GMAO). GEOS CoDAS uses a high-performance computing implementation of the Gridpoint Statistical Interpolation approach for solving the state estimation problem. GSI finds the analyzed state that minimizes the three-dimensional variational (3D-Var) cost function formulation of the state estimation problem.
Product Summary
Citation
Citation is critically important for dataset documentation and discovery. This dataset is openly shared, without restriction, in accordance with the EOSDIS Data Use and Citation Guidance.
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Documents
USER'S GUIDE
READ-ME
GENERAL DOCUMENTATION
Publications Citing This Dataset
| Title | Year Sort ascending | Author | Topic |
|---|---|---|---|
| Extracting XCO2-NASA data with XCODEX: a Python package | Fontellas Laurito, Henrique, Gomes da Silva, Thais Rayane, La Scala, Newton, de Souza Rolim, Glauco | Atmospheric Carbon Dioxide | |
| ESD Ideas: Near-real-time preliminary detection of carbon dioxide source and sink areas using a Laplacian filter | Savytska, Yana, Smolii, Viktor, Weitzel, Nils | Atmospheric Carbon Dioxide, Carbon Dioxide, Land Use/Land Cover Classification | |
| Estimation of Anthropogenic Carbon Dioxide Emissions in China: Remote | Chen, Chen, Qin, Kaitong, Wu, Songjie, Sivakumar, Bellie, Zhuang, Chengxian, Li, Jiaye | Atmospheric Carbon Dioxide, Photosynthesis, Primary Production, VEGETATION PRODUCTIVITY | |
| High-Performance Computing and Artificial Intelligence in Process Engineering | Atmospheric Carbon Dioxide | ||
| How climate change and deforestation interact in the transformation of the Amazon rainforest | Franco, Marco A., Rizzo, Luciana V., Teixeira, Marcio J., Artaxo, Paulo, Azevedo, Tasso, Lelieveld, Jos, Nobre, Carlos A., Pohlker, Christopher, Poschl, Ulrich, Shimbo, Julia, Xu, Xiyan, Machado, Luiz A. T. | Carbon Monoxide, Geopotential Height, Tropopause, Methane, Atmospheric Ozone, Surface Pressure, Outgoing Longwave Radiation, Air Temperature, Upper Air Temperature, Humidity, Total Precipitable Water, Water Vapor, Water Vapor Profiles, Cloud Liquid Water/Ice, Cloud Height, Cloud Top Pressure, Cloud Top Temperature, Cloud Vertical Distribution, Emissivity, Skin Temperature, Sea Surface Temperature, Atmospheric Carbon Dioxide | |
| Supercomputing-based inverse identification of high-resolution atmospheric pollutant source intensity distributions | Huang, Mingming, Heng, Yi | Atmospheric Carbon Dioxide | |
| Spatial-temporal heterogeneity of carbon dioxide concentration in | Liu, Zihua, Cao, Yongqiang, Yao, Jiaqi, Mo, Fan, Gao, Xiaoming, Xu, Nan, Gong, Haiying, Liu, Tong | Atmospheric Carbon Dioxide, Tropopause, Surface Pressure, Air Temperature, Upper Air Temperature, Total Precipitable Water, Water Vapor, Cloud Height, Cloud Top Pressure, Cloud Top Temperature, Cloud Vertical Distribution, Emissivity, Sea Surface Temperature, Skin Temperature, Carbon Monoxide, Geopotential Height, Humidity, Water Vapor Profiles, Cloud Liquid Water/Ice, Outgoing Longwave Radiation, Methane, Atmospheric Ozone, Vegetation Index, Normalized Difference Vegetation Index (NDVI), Enhanced Vegetation Index (EVI) | |
| Tracking Carbon Dioxide with Lagrangian Transport Simulations: Case Study of Canadian Forest Fires in May 2021 | Liao, Ye, Deng, Xuying, Huang, Mingming, Liu, Mingzhao, Yi, Jia, Hoffmann, Lars | Atmospheric Carbon Dioxide | |
| Assessing progress toward the Paris climate agreement from space | Weir, Brad, Oda, Tomohiro, Ott, Lesley E, Schmidt, Gavin A | Carbon Monoxide, Geopotential Height, Tropopause, Methane, Atmospheric Ozone, Surface Pressure, Outgoing Longwave Radiation, Air Temperature, Upper Air Temperature, Humidity, Total Precipitable Water, Water Vapor, Water Vapor Profiles, Cloud Liquid Water/Ice, Cloud Height, Cloud Top Pressure, Cloud Top Temperature, Cloud Vertical Distribution, Emissivity, Skin Temperature, Sea Surface Temperature, Atmospheric Carbon Dioxide | |
| Environmental drivers of agricultural productivity growth: CO2 fertilization of US field crops | Taylor, Charles, Schlenker, Wolfram | Atmospheric Carbon Dioxide |
Variables
The table below lists the variables contained within a single granule for this dataset. Variables often contain observed or derived geophysical measurements collected from a variety of sources, including remote sensing instruments on satellite and airborne platforms, field campaigns, in situ measurements, and model outputs. The terms variable, parameter, scientific data set, layer, and band have been used across NASA’s Earth science disciplines; however, variable is the designated nomenclature in NASA’s Common Metadata Repository (CMR). Variable metadata attributes such as Name, Description, Units, Data Type, Fill Value, Valid Range, and Scale Factor allow users to efficiently process and analyze the data. The full range of attributes may not be applicable to all variables. Additional information on variable attributes is typically available in the data, user guide, and/or other product documentation.
For questions on a specific variable, please use the Earthdata Forum.
| Name Sort descending | Description | Units | Data Type | Fill Value | Valid Range | Scale Factor | Offset |
|---|---|---|---|---|---|---|---|
| lat | lat | degrees_north | float64 | N/A | N/A | N/A | N/A |
| lon | lon | degrees_east | float64 | N/A | N/A | N/A | N/A |
| time | time | days since 2022-02-28 12:00:00 | float64 | N/A | N/A | N/A | N/A |
| XCO2 | XCO2 | mol CO2/mol dry | float64 | -999999 | N/A | N/A | N/A |
| XCO2PREC | XCO2PREC | mol CO2/mol dry | float64 | -999999 | N/A | N/A | N/A |