4.7 Article

Global land mapping of satellite-observed CO2 total columns using spatio-temporal geostatistics

Journal

INTERNATIONAL JOURNAL OF DIGITAL EARTH
Volume 10, Issue 4, Pages 426-456

Publisher

TAYLOR & FRANCIS LTD
DOI: 10.1080/17538947.2016.1156777

Keywords

XCO2; ACOS-GOSAT; Spatio-temporal geostatistics; global mapping; geospatial dataset

Funding

  1. Open Research Fund of Key Laboratory of Digital Earth Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences (CAS-RADI) [2014LDE010]
  2. National Key Basic Research Program of China [2015CB954103]
  3. Strategic Priority Research Program-Climate Change: Carbon Budget and Relevant Issues of the Chinese Academy of Sciences [XDA05040401]
  4. CUHK
  5. NASA's Carbon Cycle Science Program through California Institute of Technology
  6. Australian Research Council [DP140101552, DP110103118, DP0879468352, LP0562346]
  7. Ministry of the Environment, Japan [A-1102]
  8. LANL's LDRD Project [20110081DR]

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This study presents an approach for generating a global land mapping dataset of the satellite measurements of CO2 total column (XCO2) using spatio-temporal geostatistics, which makes full use of the joint spatial and temporal dependencies between observations. The mapping approach considers the latitude-zonal seasonal cycles and spatiotemporal correlation structure of XCO2, and obtains global land maps of XCO2, with a spatial grid resolution of 1 degrees latitude by 1 degrees longitude and temporal resolution of 3 days. We evaluate the accuracy and uncertainty of the mapping dataset in the following three ways: (1) in crossvalidation, the mapping approach results in a high correlation coefficient of 0.94 between the predictions and observations, (2) in comparison with ground truth provided by the Total Carbon Column Observing Network (TCCON), the predicted XCO2 time series and those from TCCON sites are in good agreement, with an overall bias of 0.01 ppm and a standard deviation of the difference of 1.22 ppm and (3) in comparison with model simulations, the spatio-temporal variability of XCO2 between the mapping dataset and simulations from the CT2013 and GEOS-Chem are generally consistent. The generated mapping XCO2 data in this study provides a new global geospatial dataset in global understanding of greenhouse gases dynamics and global warming.

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