the operational meteo-france ensemble 4d-var (l. berre, g. desroziers, and co-authors)
DESCRIPTION
The operational Meteo-France ensemble 4D-Var (L. Berre, G. Desroziers, and co-authors). Ensemble assimilation (operational with 6 members…) :. The operational Meteo-France ensemble 4D-Var (L. Berre, G. Desroziers, and co-authors). Operational since July 2008 : six perturbed global members, - PowerPoint PPT PresentationTRANSCRIPT
The operational Meteo-France ensemble 4D-Var
(L. Berre, G. Desroziers, and co-authors)
Ensemble assimilation (operational with 6 members…) :
The operational Meteo-France ensemble 4D-Var
(L. Berre, G. Desroziers, and co-authors) Operational since July 2008 : six perturbed global members,
T399 L70 with 4D-Var Arpege (explicit obs perturbations,and implicit background perturbations through perturbed DA cycling).
Flow-dependent background error variances
(for all variables including humidity and unbalanced variables)
for obs. quality control and for the minimization.
Flow-dependent background error correlations experimented using
wavelet filtering properties (Varella et al 2011 a,b, Prevassemble project).
Initialisation of M.F. ensemble prediction (PEARP) by EnVar, since 2009 :
PEARP is based on 35 members, T538 c2.4 L65, EnVar+SVs and 10 physics.
Inflation of ensemble B / model error contributions,to be replaced by on-line inflation of perturbations in 2012.
(Raynaud et al 2008a)(Raynaud et al 2008a)
““OPTIMIZED” SPATIAL FILTERING OPTIMIZED” SPATIAL FILTERING
OF THE VARIANCE FIELD OF THE VARIANCE FIELD
Vb
* ~ Vb
where = signal/(signal+noise)
« TRUE » VARIANCES FILTERED VARIANCES VARIANCES (N = 6)
RAW VARIANCES VARIANCES (N = 6) (Berre et al 2007,2010, Raynaud et al 2008,2009,2011)
Errors of the day for 3-hr forecasts provided by the Ensemble Data Assimilation
Ens Assim.
4D-Var
Ens Assim.
3D-Var Fgat Klaus storm. The error maximum is better
forecast by the 4D-Var version of the ensemble assimilation.
24/01/2009 at 00h/03h
The operational Meteo-France ensemble 4D-Var
(L. Berre, G. Desroziers, and co-authors) Operational since July 2008 : six perturbed global members,
T399 L70 with 4D-Var Arpege (explicit obs perturbations,and implicit background perturbations through perturbed DA cycling).
Flow-dependent background error variances
(for all variables including humidity and unbalanced variables)
for obs. quality control and for the minimization.
Flow-dependent background error correlations experimented using
wavelet filtering properties (Varella et al 2011 a,b, Prevassemble project).
Initialisation of M.F. ensemble prediction (PEARP) by EnVar, since 2009 :
PEARP is based on 35 members, T538 c2.4 L65, EnVar+SVs and 10 physics.
Inflation of ensemble B / model error contributions,to be replaced by on-line inflation of perturbations in 2012.
Flow-dependent background error correlations
using EnVar and wavelets
Wavelet-implied horizontal length-scales (in km), for wind near 500 hPa, averaged over a 4-day period.
(Varella et al 2011b, and also Fisher 2003, Deckmyn and Berre 2005, Pannekoucke et al
2007)
Impact of wavelet flow-dependent correlationsagainst spectral static correlations (Varella et al 2011b)
SOUTHERN HEMISPHERE (3 weeks, RMS of geopotential)
EUROPE AND N. ATLANTIC (3 weeks, RMS of geopotential)
Time evolution of RMSfor +96h, at 500 hPa
Time evolution of RMSfor +48h, at 250 hPa
Vertical profile of RMS for +48h
Vertical profile of RMS for +96h
The operational Meteo-France ensemble 4D-Var
(L. Berre, G. Desroziers, and co-authors) Operational since July 2008 : six perturbed global members,
T399 L70 with 4D-Var Arpege (explicit obs perturbations,and implicit background perturbations through perturbed DA cycling).
Flow-dependent background error variances
(for all variables including humidity and unbalanced variables)
for obs. quality control and for the minimization.
Flow-dependent background error correlations experimented using
wavelet filtering properties (Varella et al 2011 a,b, Prevassemble project).
Initialisation of M.F. ensemble prediction (PEARP) by EnVar, since 2009 :
PEARP is based on 35 members, T538 c2.4 L65, EnVar+SVs and 10 physics.
Inflation of ensemble B / model error contributions,to be replaced by on-line inflation of perturbations in 2012.
Estimation of model error and its representation in EnDA
(Raynaud et al 2011)
Methodology :
1. Variances of « total » forecast error V[ M ea + em] from obs-forecast departures (after filtering of obs errors).
2. Comparison with ensemble spread V[ M ea ] and estimation of inflation factor .
3. Inflation of forecast perturbations (by
Estimation of model error and its representation in EnDA
(Raynaud et al 2011)
Vertical profilesof standard deviation estimates
of forecast errors (K)
Estimate from AEARP, when
model error is neglected
Estimate from AEARP, when
model error is represented
Estimate from obs-forecast