[email protected]7 th AT2 workshop, Helsinki, 1 Oct ., 2008 ECPL-UoC [email protected]7 th AT2 workshop, Helsinki, 1 Oct ., 2008 ECPL-UoC ACCENT-TROPOSAT-2 (AT-2) Task Group 2 Synergistic use of models and observations Achievements and Prospects Aims and objectives Outlook of final reports-highlights Prospects
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The synergistic use of models and observations to improve our understanding of tropospheric chemistry
and dynamics.
Leader: Martin Dameris, DLR, Oberpfaffenhofen ; 17 PIs (12+1 final reports)
Investigation of physical, dynamical, and chemical processes in the troposphere. Development of methods for using satellite data from the troposphere as part of
model validation strategy. Use the combination of model results, satellite observations, ground based and
airborne measurements in a synergistic way to improve our knowledge about individual tropospheric processes, such as: source attribution and impact assessment of gaseous and particulate pollutants; cloud occurrence and the hydrological cycle.
Use model results to help bridge the gap between point measurements and the satellite view footprint for evaluating satellite retrievals.
September/October 2002: unusual sudden stratospheric warming and subsequent vortex split comparatively weak dehydration and early recovery of the Antarctic stratospheric water vapour compared to the next years
Validation against other satellite measurements :lower relative humidity in MIPAS than in Microwave Limb Sounder (MLS)collocated measurements of the Japanese instrument ILAS-II good agreement up to 40 km & against in situ and LIDAR measurements (TROCCINOX & SCOUT –O3 campaigns)
Ozone partial pressure profiles : Means of simulations over 1983-1989 from E39C-A and E39C. Dotted lines : standard deviation (±1σ).
Black solid lines: average radiosonde observations (Resolute: 1983-1989 & South Pole: 1986-1987 ).
Stenke, A., M. Dameris, V. Grewe, and H. Garny, Implications of Lagrangian transport for coupled chemistry-climate simulations, Atmos. Chem. Phys. Discuss., accepted in September 2008.
A Lagrangian approach (ATTILA) for transport of tracers has been extended to the CCM E39C, resulting in the upgraded model version E39C-A
Impact of Climate Change on Dynamics and Chemistry of the UTLS: Investigations with a Climate-Chemistry
Model Dameris et al. DLR
A non diffusive advection scheme better description of the ozonopause
74°N, 95°WMotivation: improve on the ‘cold bias’ of the extra tropical lowermost stratosphere
Development of methods for using satellite data from the troposphere as part of model validation
strategy.
Ensemble average annual mean tropospheric NO2 column density for three different GOME retrievals (left panel) and the full model ensemble (right panel). These quantities have been calculated after smoothing the data to a horizontal resolution of 5×5 deg. van Noije et al. (2006).
Differences in GOME retrievals are in many instances (10-50%) as large as the spread in model results. Emission estimates depend on the choice of model and retrieval!
Account for: Spatial and temporal sampling of the atmosphereAssumptions on vertical distribution
Use model results to help bridge the gap between point measurements and the satellite view footprint for evaluating
satellite retrievals. Inversions:
Retrievals of atmospheric concentrations from observed radiances optimisation of estimates of model parametersData assimilation
Data assimilation:
filtering the signal from noisy observationsinterpolation in space and timecompletion of state variables that are not sampled by the observation networkAccount for a process that is not (fully) resolved in the model
Assimilation of Tropospheric Species into a Chemistry Transport Model J.-L attié1, L. El Amraoui2 , P. Ricaud1, V.-H. Peuch2, M. Claeyman1, S. Massart3, B.
Barret1, N. Semane2 and A. Piacentini3
1LA, 2Meteo France, 3Cerfacs, ToulouseCO data from Terra/MOPITT and Aura/MLS have been assimilated into the MOCAGE-PALM chemistry-transport model by using the 3-DFGAT scheme via the PALM software developed by the CERFACS – Dual assimilation
Zonal mean of CO calculated over India from MOCAGE without assimilation (left) and with dual assimilation (right). Grey areas represent larger values
Comparison of assimilated and non-assimilated SLIMCAT/TOMCAT vertical column NO2 with ground based DOAS observations for 4 NDACC sites: The black crosses represent the observations, the dashed blue line represents the free running model and the yellow dashed line the model with assimilation. The red dashed line is a version of the assimilation model which does not assimilate O3. Gunn et al., ACPD submitted 2008
Gunn, Richards, Chipperfield, Univ Leeds
Data assimilation in the 3-D chemical transport model (TOMCAT/SLIMCAT) to accurate represent the stratosphere (HALOE data) and improve the quantitative derivation of tropospheric composition.
Derivation of Tropospheric Composition from Satellites using a 3-D CTM
Scientific Interpretation of SCIAMACHY CO, CO2 and CH4 MeasurementsS. Houweling, M. Krol, J.-F. Meirink and I. AbenSRON, IMAU, WUR
@ use of the 4D-VAR technique to infer CH4 sources and sinks from a combination of surface and satellite measurements(TM5- modeling)
@ progress in the spectroscopic parameters that are used in the SCIAMACHY CH4 retrieval (Frankenberg et al GRL, 2008 & ACPD,2008) improved agreement between the satellite-optimized model and in situ measurements. Meirink et al., JGR 10.1029/2007JD009740, 2008
SCIAMACHY- CH4 observations bias corrected (ppbv)
Model CH4 difference: a posteriori- a priori (ppbv)
Scientific Interpretation of SCIAMACHY CO, CO2 and CH4 MeasurementsS. Houweling, M. Krol, J.-F. Meirink and I. AbenSRON, IMAU, WUR aircraft measurements vs TM5 simulated CH4
AMAZON region – BrazilObservations Miller et al GRL 2007
blue, TM5 using prior fluxes; green, TM5 using posterior fluxes obtained using surface measurements; blue and red, TM5 using surface measurements and SCIAMACHY retrievals.
Integrating Chemical Modelling and Satellite Observations for monitoring Tropospheric Chemistry and Air Quality
M. Beekmann, I. Konovalov, G. Dufour, A. Hodzic et al.LISA, LMD, LSCE, IAP, NCAR, LIV
@ use of GOME and SCIAMACHY tropospheric NO2 and HCHO measurements (1996-2005) for inverse modelling of European NOx and biogenic VOC emissions (CHIMERE model).
•set of empirical models Trop_column_NO2=f(Flux NO2)•NO2 satellite data +ground based O3
Integrating Chemical Modelling and Satellite Observations for monitoring Tropospheric Chemistry and Air Quality
M. Beekmann, I. Konovalov, G. Dufour, A. Hodzic et al.LISA, LMD, LSCE, IAP, NCAR, LIV
@ use of GOME and SCIAMACHY tropospheric NO2 and HCHO measurements (1996-2005) for inverse modelling of European NOx and biogenic VOC emissions (CHIMERE model).
Comparison of time averaged HCHO columns over land for summer (June to August) 2003, CHIMERE simulations, SCIAMACHY observations
Remaining systematic observation errors and model errors are limiting factors for biogenic isoprene emission inversion, but nevertheless use of satellite data is shown to reduce biogenic emissions uncertainties by more than 50 % in the most sensitive regions
Summary remarks• Synergistic use of satellite observations with CTMs has opened new
horizons in air pollution control and climate change evaluation.
• Continuous dialogue between satellite retrieved observations of atmospheric trace constituents and model results enables improving i) process understanding, ii) models, iii) retrieval algorithms and constructing a concise picture of our changing atmosphere
• Data assimilation contributes in improving prognostic models, in the past for weather forecasts and recently for chemical weather forecasts.
• Estimates of emissions from satellite retrievals strongly depend on the choice of model & of retrieval.
Looking forward• Need for developments towards results independent from
the applied tools
• Higher spatial resolution models and satellite observations will better resolve air pollution from various sources
• Improvements are also needed in the temporal sampling of the atmosphere by the satellite based sensors that has to be taken into account in the models when satellite retrievals are used.
• Substantial efforts are required in optimizing assimilation algorithm parameters