Atmospheric Chemistry and Physics (Feb 2010)

Global estimates of CO sources with high resolution by adjoint inversion of multiple satellite datasets (MOPITT, AIRS, SCIAMACHY, TES)

  • M. Kopacz,
  • D. J. Jacob,
  • J. A. Fisher,
  • J. A. Logan,
  • L. Zhang,
  • I. A. Megretskaia,
  • R. M. Yantosca,
  • K. Singh,
  • D. K. Henze,
  • J. P. Burrows,
  • M. Buchwitz,
  • I. Khlystova,
  • W. W. McMillan,
  • J. C. Gille,
  • D. P. Edwards,
  • A. Eldering,
  • V. Thouret,
  • P. Nedelec

Journal volume & issue
Vol. 10, no. 3
pp. 855 – 876

Abstract

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We combine CO column measurements from the MOPITT, AIRS, SCIAMACHY, and TES satellite instruments in a full-year (May 2004–April 2005) global inversion of CO sources at 4&deg;&times;5&deg; spatial resolution and monthly temporal resolution. The inversion uses the GEOS-Chem chemical transport model (CTM) and its adjoint applied to MOPITT, AIRS, and SCIAMACHY. Observations from TES, surface sites (NOAA/GMD), and aircraft (MOZAIC) are used for evaluation of the a posteriori solution. Using GEOS-Chem as a common intercomparison platform shows global consistency between the different satellite datasets and with the in situ data. Differences can be largely explained by different averaging kernels and a priori information. The global CO emission from combustion as constrained in the inversion is 1350 Tg a<sup>&minus;1</sup>. This is much higher than current bottom-up emission inventories. A large fraction of the correction results from a seasonal underestimate of CO sources at northern mid-latitudes in winter and suggests a larger-than-expected CO source from vehicle cold starts and residential heating. Implementing this seasonal variation of emissions solves the long-standing problem of models underestimating CO in the northern extratropics in winter-spring. A posteriori emissions also indicate a general underestimation of biomass burning in the GFED2 inventory. However, the tropical biomass burning constraints are not quantitatively consistent across the different datasets.