Nonlinear and Non‐Gaussian Ensemble Assimilation of MOPITT CO

Author:

Gaubert Benjamin1ORCID,Anderson Jeffrey L.2,Trudeau Michael34,Smith Nadia5,McKain Kathryn4ORCID,Pétron Gabrielle34,Raeder Kevin2ORCID,Arellano Avelino F.6,Granier Claire378ORCID,Emmons Louisa K.1ORCID,Ortega Ivan1ORCID,Hannigan James W.1ORCID,Tang Wenfu1ORCID,Worden Helen M.1ORCID,Ziskin Daniel1,Edwards David P.1ORCID

Affiliation:

1. Atmospheric Chemistry Observations & Modeling Laboratory (ACOM) NSF National Center for Atmospheric Research (NSF NCAR) Boulder CO USA

2. Computational and Information Systems Laboratory NSF National Center for Atmospheric Research (NSF NCAR) Boulder CO USA

3. Cooperative Institute for Research in Environmental Sciences University of Colorado Boulder Boulder CO USA

4. Global Monitoring Laboratory National Oceanic and Atmospheric Administration Boulder CO USA

5. Science and Technology Corporation Columbia MD USA

6. Department of of Hydrology and Atmospheric Sciences University of Arizona Tucson AZ USA

7. Chemical Sciences Laboratory National Oceanic and Atmospheric Administration Boulder CO USA

8. Laboratoire d’Aérologie Université de Toulouse, CNRS, UPS Toulouse France

Abstract

AbstractSatellite retrievals of carbon monoxide (CO) are routinely assimilated in atmospheric chemistry models to improve air quality forecasts, produce reanalyzes and to estimate emissions. This study applies the quantile‐conserving ensemble filter framework, a novel assimilation algorithm that can deal with non‐Gaussian and modestly nonlinear distributions. Instead of assuming normal distributions like the Ensemble Adjustments Kalman Filter (EAKF), we now apply a bounded normal rank histogram (BNRH) distribution for the prior. The goal is to efficiently estimate bounded quantities such as CO atmospheric mixing ratios and emission fluxes while maintaining the good performance achieved by the EAKF. We contrast assimilating meteorological and MOPITT (Measurement of Pollution in the Troposphere) observations for May 2018. We evaluate the results with the fourth deployment of the NASA Atmospheric Tomography Mission (ATom‐4) airborne field campaign. We also compare simulations with CO tropospheric columns from the network for the detection of atmospheric composition change and surface in‐situ observations from NOAA carbon cycle greenhouse gases. While the differences remain small, the BNRH approach clearly works better than the EAKF in comparison to all observation data sets.

Funder

National Oceanic and Atmospheric Administration

Goddard Space Flight Center

Publisher

American Geophysical Union (AGU)

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