Global land 1° mapping XCO2 dataset using satellite observations of GOSAT and OCO-2 from 2009 to 2020 (doi:10.7910/DVN/4WDTD8)

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Document Description

Citation

Title:

Global land 1° mapping XCO2 dataset using satellite observations of GOSAT and OCO-2 from 2009 to 2020

Identification Number:

doi:10.7910/DVN/4WDTD8

Distributor:

Harvard Dataverse

Date of Distribution:

2021-03-26

Version:

4

Bibliographic Citation:

Sheng,Mengya; Lei,Liping; Zeng,Zhao-Cheng; Weiqiang Rao; Hao Song; Wu,Changjiang, 2021, "Global land 1° mapping XCO2 dataset using satellite observations of GOSAT and OCO-2 from 2009 to 2020", https://doi.org/10.7910/DVN/4WDTD8, Harvard Dataverse, V4

Study Description

Citation

Title:

Global land 1° mapping XCO2 dataset using satellite observations of GOSAT and OCO-2 from 2009 to 2020

Identification Number:

doi:10.7910/DVN/4WDTD8

Authoring Entity:

Sheng,Mengya (Aerospace Information Research Institute,Chinese Academy of Sciences)

Lei,Liping (Aerospace Information Research Institute,Chinese Academy of Sciences)

Zeng,Zhao-Cheng (Division of Geological and Planetary Sciences, California Institute of Technology)

Weiqiang Rao (Aerospace Information Research Institute,Chinese Academy of Sciences)

Hao Song (China University of Geosciences, Beijing)

Wu,Changjiang (Aerospace Information Research Institute,Chinese Academy of Sciences)

Date of Production:

2021-01-25

Grant Number:

2020YFA0607503

Grant Number:

2016YFA0600303

Distributor:

Harvard Dataverse

Access Authority:

Sheng, Mengya

Depositor:

Sheng, Mengya

Date of Deposit:

2021-03-26

Date of Distribution:

2021-03-26

Study Scope

Keywords:

Earth and Environmental Sciences

Abstract:

The global 1° land mapping XCO2 dataset (Mapping-XCO2) is derived from satellite XCO2 retrievals of GOSAT and OCO-2 spanning the period of April 2009 to December 2020. The data product is provided in GeoTIFF format and include two temporal resolutions: 3 days and month. The 3-day data files include gridded XCO2 and mapping uncertainty, which are named like “MappingXCO2_Date.nc” and “MappingUncertainty_Date.nc”. The flag “Date” is defined as date ID of 1426 time-units started from 20 April 2009. The monthly data files only include XCO2 data and named like “MappingXCO2_YYYY_MM.tif”. The number of “YYYY” and “MM” represent year and month, respectively. The domain of the dataset covers global land ranging from 56° S to 65° N and 169° W to 180° E. The spatial reference of the dataset is Geographic Lat/Lon. The unit of XCO2 data is ppm while the nodata values were assigned to NaN.

Time Period:

2009-04-2020-12

Methodology and Processing

Sources Statement

Data Access

Notes:

CC0 Waiver

Other Study Description Materials

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Other Study-Related Materials

Label:

MappingXCO2_3days.rar

Notes:

application/x-rar-compressed

Other Study-Related Materials

Label:

MappingXCO2_month.rar

Notes:

application/x-rar-compressed