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We should clear up the obvious deficiencies

We should clear up the obvious deficiencies. Check LS Forcings: should we ask for it as required output? u,v –profiles : RACMO-TKE, ECMWF, UCLA-LaRC, ECHAM Ask for timeseries for u,v,q,T near surface to check surface fluxes and cloud base height off-line. Other remarks.

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We should clear up the obvious deficiencies

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  1. We should clear up the obvious deficiencies • Check LS Forcings: should we ask for it as required output? • u,v –profiles : RACMO-TKE, ECMWF, UCLA-LaRC, ECHAM • Ask for timeseries for u,v,q,T near surface to check surface fluxes and cloud base height off-line.

  2. Other remarks • Noise in time-series related to TKE-scheme. • on/off switching of convection related to mass flux profile. • There seems to be no agreement on the precipitation evaporation efficiency. • Most models don’t seem to trigger deep convection. • Cloud cover, and liquid water profile 1st order problem, microphysics is a 2nd order problem (but might affect the mean state considerably!!)

  3. Some models behave remarkably well • ECMWF, HIRLAM, AROME • These models worked actively on shallow cumulus (but did not tune their parameterization on the present case) • It seems that there are 3 crucial ingredients: • Good estimate of cloud base mass flux : M~ac w* • Good estimate of entrainment and detrainment • Good estimate of the variance of qt and ql in the cloud layer in order to have a good estimate of cloud cover and liquid water.

  4. Required observational data • Liquid water path (or even better profiles) • cloud cover profiles (should be possible) • .precipitation evaporation efficiency. • Cloud base mass flux. • Incloud properties., entrainment, detrainment mass flux (Hermann??) • Variance of qt and theta (for cloud scheme purposes)

  5. Further Points: • Proceed with the long run?? • Get the the RICO-sondes into the ECMWF/NCEP analysis in order to get better forcings? • Should we do 3d-GCM RICO?

  6. Case set up changes (thermodynamics + forcings) • Simplify the case even further? • Only adjust set up to ensure SCM-LES cases are identical? (LES profiles -> SCM, SCM forcings -> LES) • Run a simulation without rain

  7. Case set up changes (microphysics) • Adjust cloud droplet number • Do people need CCN spectrum?

  8. Changes to output list LES • Thermodynamic variables hourly averaged • Threshold cloudy/rainy gridcell 0.01/0.001 g/kg • Tke, prec_fracsrf, zcb • Add precipitation averaged over rainy cells over • (optional) Total water and Liq. Water Pot. Temperature budget? • Other suggestions?

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