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Data assimilation for validation of climate modeling systems

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Data assimilation for validation of climate modeling systems Pierre Gauthier Department of Earth and Atmospheric Sciences Universit du Qu bec Montr al – PowerPoint PPT presentation

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Title: Data assimilation for validation of climate modeling systems


1
Data assimilation for validation of climate
modeling systems
  • Pierre Gauthier

2
Validation of atmospheric models
  • Transpose Atmospheric Model Intercomparison
    Experiments (AMIP)
  • Comparison of atmospheric models against each
    other under same conditions (e.g., initial
    conditions provided by the same analysis)
  • Short term forecasts as in NWP
  • Intercomparison of data assimilation systems
  • More difficult to carry out due to the added
    complexity coming from observations, data
    assimilation components, and atmospheric model
  • Impact on both the analysis (information content)
    or on the forecasts

3
Schematic of the data assimilation process
(from Rodwell and Palmer, 2007)
4
Validation of atmospheric models against
observations
  • Short-term forecast used by the assimilation
  • Common ground provided by a short term forecast,
    the background state
  • Sums up the information gained from observations
  • Monitoring of averages of observations minus
    background is used to detect biases
  • in new or existing observations
  • the model itself (detection of biases)
    particularly if the observation dataset has been
    carefully quality controlled

5
Monitoring and quality control
  • Statistics based on innovations (y -HXb) example
    from TOVS radiances

6
Using NWP to assess climate models(Rodwell and
Palmer, 2007)
  • Impact of changes to climate models usually done
    by comparing several long climate runs with
    perturbed models
  • Uncertainty associated with the physical
    processes used in the model (Stainforth et al.,
    2005)
  • Assimilation produces analysis increments to
    correct the model forecast to bring it closer to
    the observations
  • Reduced analysis increments is an indication that
    the model has improved its fit to observations
  • Presence of spin-up can be associated with model
    differences with respect to what has been
    observed
  • Examination of the physical tendencies in the
    early stages of the forecast can provide useful
    information about imbalances in the model

7
Schematic of the data assimilation process
(from Rodwell and Palmer, 2007)
8
Time series of precipitation rates averaged over
the Northern Hemisphere (Gauthier and Thépaut,
2001)
9
RMS error w.r.t. unperturbed model vs. Simulated
climate sensitivity
(from Rodwell and Palmer, 2007)
10
Comparing physical tendencies for different
processes in experiments with perturbed physics
Total tendency
Convection
Dynamicalcooling
Rodwell and Palmer (2007)
11
Conclusions
  • Data assimilation and reanalyses
  • often based on an adapted NWP suite for which the
    model short term forecasts have been thoroughly
    validated
  • Using a climate model to do data assimilation
  • provide detailed information about systematic
    departures from observations
  • Examination of the physical tendencies associated
    with the first instants of a forecast can
  • Indicate how imbalances in the physical processes
    may cause excessive model sensitivity which
    increase the uncertainty of climate predictions
  • Observation datasets used for reanalyses could be
    valuable for studies on climate model validation
  • Added value for the data prepared for reanalyses

12
Conclusion (contd)
  • For coupled systems, the complexity is increasing
    and this approach is certainly to be encouraged
  • Parameter estimation with coupled models (Sugiura
    et al., 2008) to adjust parameter related to
    surface fluxes
  • Found it was necessary to adjust also other
    parameterizations
  • (1) the wind sensitivity parameter in the ocean
  • (2) the isopycnal diffusion coefficient in the
    OGCM,
  • (3) the mixing length in an atmospheric boundary
    layer in the AGCM,
  • (4) the relaxation time for large-scale
    condensation in the AGCM,
  • (5) the range of relative humidity change in the
    AGCM,
  • (6) the standard height for precipitation
    efficiency in the AGCM, and
  • (7) the adjustment time for cumulus convection in
    the AGCM
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