1 / 17

Intercomparison of SCIAMACHY NO 2 , the Chim è re air-quality model and surface observations

Intercomparison of SCIAMACHY NO 2 , the Chim è re air-quality model and surface observations. Nad è ge Blond, LISA, Paris, France Henk Eskes, Folkert Boersma, Ronald van der A KNMI, Netherlands Michel van Roozendael, Isabelle De Smedt BIRA-IASB, Belgium.

martha
Download Presentation

Intercomparison of SCIAMACHY NO 2 , the Chim è re air-quality model and surface observations

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Intercomparison of SCIAMACHY NO2, the Chimère air-quality model and surface observations Nadège Blond, LISA, Paris, France Henk Eskes, Folkert Boersma, Ronald van der A KNMI, Netherlands Michel van Roozendael, Isabelle De Smedt BIRA-IASB, Belgium

  2. Slant column retrieval approach (BIRA-IASB) DOAS slant column: • "raw" L1, v 4.02 L1, v 5.01 L1 • Non-linear least-squares inversion (Marquardt-Levenberg) • Wavelength window 426.3 - 451.3 • NO2 243K (Bogumil), O3 (Bogumil), O2-O2, H2O • 2nd order polynomial • Undersampling cross section • Ring (Vountas) • Offset correction based on measurement over Indian Ocean

  3. Combined retrieval - modelling - assimilation approach to SCIA NO2 Careful treatment needed for: • Clouds • Surface albedo • Profile shape • Aerosol

  4. Slant to vertical column retrieval approach (KNMI) Air-mass factor calculation: • Temperature correction (NO2 cross section) • TM3 / TM4 (tropospheric) CTM • Assimilation of slant columns -> stratospheric "background" • Fresco cloud fraction and cloud top pressure • TOMS / GOME combined albedo map (Herman, Koelemeijer) • DAK RTM height-dependent AMF lookup table • Tropospheric AMF based on TM profile shape, clouds Product: • Detailed error estimates • Averaging kernels

  5. Validation results (ACVE-2), stratosphere J. C. Lambert NO2 products: • SCIA processor • IUP • SAO • BIRA-IASB • Heidelberg

  6. Combined retrieval - modelling - assimilation approach to GOME NO2

  7. Chimère model Developed in France R. Vautard, H. Schmidt, L. Menut, M. Beekman, N. Blond, ... ) Operational air-quality forecasts: http://www.prevair.org/ Model ingredients: • MELCHIOR chemistry (82 species, 333 reactions) • EMEP emissions • ECMWF meteorological analyses • 15 vertical layers, surface - 200 hPa • Boundary conditions from MOZART monthly-mean climatology

  8. Emissions

  9. Intercomparisons Chimère, SCIA and surface observations Motivation: • Lack of profile observations of NO2 for validation purposes: use model as intermediate for indirect validation study Approach: • Space-time collocation of Chimère fields to individual SCIA pixels • Application of averaging kernels: Simulated SCIA-equiv column = kernel vector • model NO2 profile • One year of SCIA data, 2003; Cloud free (cloud radiance < 50%) Advantages: • Compare model-SCIA under exactly same conditions (e.g. cloud free) • Comparison independent of profile shape assumptions in the retrieval

  10. Chimère and surface observations (RIVM, NL) • surface observation • - Chimère • Netherlands: • (rural stations) • Bias 0.1 ppb • RMS 7.2 ppb • Correl. 0.66

  11. SCIAMACHY vs. Chimère: yearly mean Yearly-mean bias = 0.2 1015 molec cm-2, RMS 2.9, correl.coeff. 0.73 Cloud-free pixels

  12. SCIAMACHY vs. Chimère: 27 Feb 2004

  13. SCIAMACHY vs. Chimère: 28 Mar 2004

  14. SCIAMACHY vs. Chimère: 16 April 2004

  15. SCIAMACHY vs. Chimère: 16 Sep 2004

  16. Synergy: Surface - Chimère - SCIAMACHY

  17. Conclusions NO2 comparisons SCIAMACHY - Chimère - surface • Yearly mean: - very small bias SCIA - Chimère and Chimère - surface - Correlation coefficients 0.7 typically • SCIA and Chimère resolution comparable • Extended NO2 plumes compare well • Details show differences: - Seasonality (winter Chimère higher) - Individual days - Distribution - Amount of detail

More Related