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Toward High Precision XCO2 Retrievals from TanSat Observations: Retrieval Improvement and Validation against TCCON Measurements
  • +28
  • Dongxu Yang,
  • Hartmut Boesch,
  • Yi Liu,
  • Peter Somkuti,
  • Zhaonan Cai,
  • Xi Chen,
  • Antonio Di Noia,
  • Chao Lin,
  • Naimen Lu,
  • Daren Lyu,
  • Robert Parker,
  • Longfei Tian,
  • Maohua Wang,
  • Alex J. Webb,
  • Lu Yao,
  • Zengshan Yin,
  • Yuquan Zheng,
  • Nicholas Michael Deutscher,
  • David W.T Griffith,
  • Frank Hase,
  • Rigel Kivi,
  • Isamu Morino,
  • Justus Notholt,
  • Hirofumi Ohyama,
  • David Frank Pollard,
  • Ralf Sussmann,
  • Kei Shiomi,
  • Yao Té,
  • Voltaire Almario Velazco,
  • Thorsten Warneke,
  • Debra Wunch
Dongxu Yang
Institute of Atmospheric Physics, Chinese Academy of Sciences

Corresponding Author:[email protected]

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Hartmut Boesch
University of Leicester
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Yi Liu
Institute of Atmospheric Physics, Chinese Academy of Sciences
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Peter Somkuti
University of Leicester
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Zhaonan Cai
Institute of Atmospheric Physics
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Xi Chen
Institute of Atmospheric Physics, Chinese Academy of Sciences
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Antonio Di Noia
University of Leicester
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Chao Lin
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences
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Naimen Lu
Unknown
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Daren Lyu
Institute of Atmospheric Physics, Chinese Academy of Sciences
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Robert Parker
University of Leicester
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Longfei Tian
Shanghai Engineering Center for Microsatellites
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Maohua Wang
Shanghai Advanced Research Institute
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Alex J. Webb
University of Leicester
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Lu Yao
Institute of Atmospheric Physics, Chinese Academy of Sciences
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Zengshan Yin
Shanghai Engineering Center for Microsatellites
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Yuquan Zheng
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences
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Nicholas Michael Deutscher
University of Wollongong
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David W.T Griffith
University of Wollongong
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Frank Hase
Institut fuer Meteorologie und
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Rigel Kivi
Finnish Meteorological Institute
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Isamu Morino
National Institute for Environmental Studies
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Justus Notholt
Institute of Environmental Physics, University of Bremen
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Hirofumi Ohyama
National Institute for Environmental Studies
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David Frank Pollard
National Institute of Water and Atmospheric Research
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Ralf Sussmann
Karlsruhe Institute of Technology, IMK-IFU
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Kei Shiomi
Japan Aerospace Exploration Agency
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Yao Té
Laboratoire d'Etudes du Rayonnement et de la Matière en Astrophysique et Atmosphères (LERMA-IPSL)
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Voltaire Almario Velazco
University of Wollongong
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Thorsten Warneke
University of Bremen
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Debra Wunch
University of Toronto
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Abstract

TanSat is the 1st Chinese carbon dioxide (CO) measurement satellite, launched in 2016. In this study, the University of Leicester Full Physics (UoL-FP) algorithm is implemented for TanSat nadir mode XCO retrievals. We develop a spectrum correction method to reduce the retrieval errors by the online fitting of an 8 order Fourier series. The model and a priori is developed by analyzing the solar calibration measurement. This correction provides a significant improvement to the O A band retrieval. Accordingly, we extend the previous TanSat single CO weak band retrieval to a combined O A and CO weak band retrieval. A Genetic Algorithm (GA) has been applied to determine the threshold values of post-screening filters. In total, 18.3% of the retrieved data is identified as high quality compared to the original measurements. The same quality control parameters have been used in a footprint independent multiple linear regression bias correction due to the stronger correlation with the XCO retrieval error. Twenty sites of the Total Column Carbon Observing Network (TCCON) have been selected to validate our new approach for the TanSat XCO retrieval. We show that our new approach produces a significant improvement on the XCO retrieval accuracy and precision when compared to TCCON with an average bias and RMSE of -0.08 ppm and 1.47 ppm, respectively. The methods used in this study can help to improve the XCO retrieval from TanSat and subsequently the Level-2 data production, and hence will be applied in the TanSat operational XCO processing.