Contents 1. Data assimilation in Russian Hydrometcentre at the end of 2003 - Tsyroulnikov M.D., Zaripov R.B., Tolstykh M.A., Bagrov A.N. 2. Development.

Slides:



Advertisements
Similar presentations
GEMS Kick- off MPI -Hamburg CTM - IFS interfaces GEMS- GRG Review of meeting in January and more recent thoughts Johannes Flemming.
Advertisements

Introduction to data assimilation in meteorology Pierre Brousseau, Ludovic Auger ATMO 08,Alghero, september 2008.
V. Shashkin et al. Mass-conservative SL, WWOSC-2104, P&P August 21, 2014 Inherently mass-conservative semi-Lagrangian transport scheme and global hydrostatic.
1 Les règles générales WWOSC August, Montréal, Canada Didier Ricard 1, Sylvie Malardel 2, Yann Seity 1 Julien Léger 1, Mirela Pietrisi 1. CNRM-GAME,
Status and performance of HIRLAM 4D-Var Nils Gustafsson.
COMPARISON OF AIR TEMPERATURE TRENDS BASED ON REANALYSIS DATA, MODEL SIMULATIONS DATA AND AEROLOGICAL OBSERVATIONS V.M. Khan, K.G. Rubinshtain, Hydrometeorological.
Semi-Lagrangian Dynamics in GFS Sajal K. Kar. Introduction Over the years, the accuracy of medium-range forecasts has steadily improved with increasing.
For the Lesson: Eta Characteristics, Biases, and Usage December 1998 ETA-32 MODEL CHARACTERISTICS.
Developments in the dynamical core of the global semi- Lagrangian SL-AV model Mikhail Tolstykh, Vladimir Shashkin Institute of Numerical Mathematics, Russian.
Nesting. Eta Model Hybrid and Eta Coordinates ground MSL ground Pressure domain Sigma domain  = 0  = 1  = 1 Ptop  = 0.
A Semi-Lagrangian Laplace Transform Filtering Integration Scheme Colm Clancy and Peter Lynch Meteorology & Climate Centre School of Mathematical Sciences.
1 NGGPS Dynamic Core Requirements Workshop NCEP Future Global Model Requirements and Discussion Mark Iredell, Global Modeling and EMC August 4, 2014.
Current Status of the Development of the Local Ensemble Transform Kalman Filter at UMD Istvan Szunyogh representing the UMD “Chaos-Weather” Group Ensemble.
Numerical weather prediction: current state and perspectives M.A.Tolstykh Institute of Numerical Mathematics RAS, and Hydrometcentre of Russia.
Numerical Weather Prediction Division The usage of the ATOVS data in the Korea Meteorological Administration (KMA) Sang-Won Joo Korea Meteorological Administration.
Slide 1 Bilateral meeting 2011Slide 1, ©ECMWF Status and plans for the ECMWF forecasting System.
© Crown copyright Met Office Adaptive mesh method in the Met Office variational data assimilation system Chiara Piccolo and Mike Cullen Adaptive Multiscale.
Ensemble-variational sea ice data assimilation Anna Shlyaeva, Mark Buehner, Alain Caya, Data Assimilation and Satellite Meteorology Research Jean-Francois.
Zängl ICON The Icosahedral Nonhydrostatic model: Formulation of the dynamical core and physics-dynamics coupling Günther Zängl and the ICON.
Lecture Oct 18. Today’s lecture Quiz returned on Monday –See Lis if you didn’t get yours –Quiz average 7.5 STD 2 Review from Monday –Calculate speed of.
Development of WRF-CMAQ Interface Processor (WCIP)
Assimilating radiances from polar-orbiting satellites in the COSMO model by nudging Reinhold Hess, Detlev Majewski Deutscher Wetterdienst.
Data assimilation and observing systems strategies Pierre Gauthier Data Assimilation and Satellite Meteorology Division Meteorological Service of Canada.
A cell-integrated semi-Lagrangian dynamical scheme based on a step-function representation Eigil Kaas, Bennert Machenhauer and Peter Hjort Lauritzen Danish.
Soil moisture generation at ECMWF Gisela Seuffert and Pedro Viterbo European Centre for Medium Range Weather Forecasts ELDAS Interim Data Co-ordination.
HIRLAM 3/4D-Var developments Nils Gustafsson, SMHI.
RC LACE 25th EWGLAM Meeting 6-9 October 2003, Lisbon1.
Modern Era Retrospective-analysis for Research and Applications: Introduction to NASA’s Modern Era Retrospective-analysis for Research and Applications:
Recent developments for a forward operator for GPS RO Lidia Cucurull NOAA GPS RO Program Scientist NOAA/NWS/NCEP/EMC NCU, Taiwan, 16 August
Georgia Institute of Technology Initial Application of the Adaptive Grid Air Quality Model Dr. M. Talat Odman, Maudood N. Khan Georgia Institute of Technology.
26 th EWGLAM & 11 th SRNWP meetings, Oslo, Norway, 4 th - 7 th October 2004 Stjepan Ivatek-Šahdan RC LACE Data Manager Croatian Meteorological and Hydrological.
Use of radar data in ALADIN Marián Jurašek Slovak Hydrometeorological Institute.
The Linear and Non-linear Evolution Mechanism of Mesoscale Vortex Disturbances in Winter Over Western Japan Sea Yasumitsu MAEJIMA and Keita IGA (Ocean.
Operational ALADIN forecast in Croatian Meteorological and Hydrological Service 26th EWGLAM & 11th SRNWP meetings 4th - 7th October 2004,Oslo, Norway Zoran.
Roshydromet’s COSMO-related plans Presenter: Dmitry Kiktev Hydrometcentre of Russia.
The status and development of the ECMWF forecast model M. Hortal, M. Miller, C. Temperton, A. Untch, N. Wedi ECMWF.
Weather forecasting by computer Michael Revell NIWA
EWGLAM Oct Some recent developments in the ECMWF model Mariano Hortal ECMWF Thanks to: A. Beljars (physics), E. Holm (humidity analysis)
DATA ASSIMILATION M. Derkova, M. Bellus, M. Nestiak.
Page 1© Crown copyright 2004 SRNWP Lead Centre Report on Data Assimilation 2005 for EWGLAM/SRNWP Annual Meeting October 2005, Ljubljana, Slovenia.
INTERCOMPARISON – HIRLAM vs. ARPA-SIM CARPE DIEM AREA 1 Per Kållberg Magnus Lindskog.
Introduction of temperature observation of radio-sonde in place of geopotential height to the global three dimensional variational data assimilation system.
Matthias Raschendorfer DWD Recent extensions of the COSMO TKE scheme related to the interaction with non turbulent scales COSMO Offenbach 2009 Matthias.
Bogdan Rosa 1, Marcin Kurowski 1 and Michał Ziemiański 1 1. Institute of Meteorology and Water Management (IMGW), Warsaw Podleśna, 61
HYDROMETCENTRE of RUSSIA Gdaly Rivin STC COSMO September 2008, Krakow, Poland Hydrometeorological centre of Russian Federation.
NCAR April 1 st 2003 Mesoscale and Microscale Meteorology Data Assimilation in AMPS Dale Barker S. Rizvi, and M. Duda MMM Division, NCAR
EGU General assembly 2014, AS 1.5 A three-dimensional Conservative Cascade semi-Lagrangian transport Scheme using the Reduced Grid on the sphere (CCS-RG)
Vincent N. Sakwa RSMC, Nairobi
MODIS Winds Assimilation Impact Study with the CMC Operational Forecast System Réal Sarrazin Data Assimilation and Quality Control Canadian Meteorological.
Global variable-resolution semi-Lagrangian model SL-AV: current status and further developments Mikhail Tolstykh Institute of Numerical Mathematics, Russian.
Instruments. In Situ In situ instruments measure what is occurring in their immediate proximity. E.g., a thermometer or a wind vane. Remote sensing uses.
Performance of a Semi-Implicit, Semi-Lagrangian Dynamical Core for High Resolution NWP over Complex Terrain L.Bonaventura D.Cesari.
An advanced snow parameterization for the models of atmospheric circulation Ekaterina E. Machul’skaya¹, Vasily N. Lykosov ¹Hydrometeorological Centre of.
Federal Department of Home Affairs FDHA Federal Office of Meteorology and Climatology MeteoSwiss Experiments at MeteoSwiss : TERRA / aerosols Flake Jean-Marie.
ALADIN 3DVAR at the Hungarian Meteorological Service 1 _____________________________________________________________________________________ 27th EWGLAM.
OSEs with HIRLAM and HARMONIE for EUCOS Nils Gustafsson, SMHI Sigurdur Thorsteinsson, IMO John de Vries, KNMI Roger Randriamampianina, met.no.
Observational Error Estimation of FORMOSAT-3/COSMIC GPS Radio Occultation Data SHU-YA CHEN AND CHING-YUANG HUANG Department of Atmospheric Sciences, National.
AGU 2008 Highlight Le Kuai Lunch seminar 12/30/2008.
Soil analysis scheme for AROME within SURFEX
National Taiwan University, Taiwan
A Semi-Lagrangian Laplace Transform Filtering Integration Scheme
Tadashi Fujita (NPD JMA)
“Consolidation of the Surface-to-Atmosphere Transfer-scheme: ConSAT
Tuning the horizontal diffusion in the COSMO model
Update on seasonal forecast system based on SL-AV model at Hydrometcentre of Russia. Decadal prediction plans. M.A. Tolstykh (2,1) and D.B.Kiktev (1),
Item Taking into account radiosonde position in verification
Comparison of different combinations of ensemble-based and variational data assimilation approaches for deterministic NWP Mark Buehner Data Assimilation.
COMP60621 Designing for Parallelism
Operational Aladin-Belgium
NWP Strategy of DWD after 2006 GF XY DWD Feb-19.
Presentation transcript:

Contents 1. Data assimilation in Russian Hydrometcentre at the end of Tsyroulnikov M.D., Zaripov R.B., Tolstykh M.A., Bagrov A.N. 2. Development of data assimilation system in Zaripov R.B., Bagrov A.N., Tsyroulnikov M.D., Tolstykh M.A. 3. Development of the INM RAS-Hydrometcentre semi- Lagrangian SL-AV model in Tolstykh M.A. 4. The evaluation of forecast quality using observations - Bagrov A.N.

Presenter: Mikhail Tolstykh Institute of Numerical Mathematics Russian Academy of Sciences, and Russian Hydrometeorological Research Centre Moscow Russia

Data assimilation in Russian Hydrometcentre at the end of 2003 Tsyroulnikov M.D., Zaripov R.B., Bagrov A.N., Tolstykh M.A.

RHMC Data assimilation system - 1

RHMC Data assimilation system - 2 Sequential assimilation of different observation types : 1. Surface analysis 1.1 Surface pressure analysis 1.2 Temperature analysis at 2m (lowermost model levels are affected) 1.3 Surface temperature analysis using hypothesis that  T s =0.5  T 2m 1.4 Dew point temperature analysis at 2m 1.5 Snow water equivalent analysis

RHMC Data assimilation system - 3 Sequential assimilation of different observation types: 2. Upper-air analysis with twice coarser horizontal resolution 1.44x1.8 degrees lat/lon: 2.1 Multivariate 3D analysis for geopotential and wind fields at standard pressure levels 2.2 Univariate 2D analysis for dew point temperature at standard pressure fields

RHMC Data assimilation system - 4 Incremental preprocessing for upper-air fields to interpolate analysis increments from analysis grid (pressure levels and twice coarser horizontal grid) to model grid (sigma levels) Details in (M.D.Tsyroulnikov, M.A.Tolstykh, A.N.Bagrov, R.B.Zaripov, Russian Meteorology and Hydrology, 2003). Piecewise-constant interpolation in vertical (changed to linear in 2004).

The data assimilation system consists of following program units: Observations quality control; Surface data analysis; Upper-air analysis; Sea-surface temperature; Incremental preprocessnig; Atmospheric forecast model; Postprocessing.

First-guess errors for geopotential vs radiosondes: RMS (solid) and bias (dash)

First-guess errors for wind vs radiosondes: RMS (solid) and bias (dash)

You will not hear here that: M.D.Tsyroulnikov plans to work on 3D variational assimilation (3D-var) in collaboration with DWD; Unlike current OI scheme, 3D-var allows to assimilate indirect satellite measurements of radiances etc.; In 3D-var, all observations influence the analysis at any grid point, while the special hypotheses are introduced in the OI to select the number of influencing observations. This gives much smoother analyses

Development of data assimilation system in 2004 ( Zaripov R.B., Bagrov A.N., Tsyroulnikov M.D., Tolstykh M.A.) Operational implementation at RHMC on a 4- processor node of Itanium2 16-procs cluster, including retrieval of observations from new remote database containing much more data, and writing the resulting analyses and forecasts to the database on another computer. Increase of buffers size for observations handling Some corrections and improvements, including replacement of piecewise constant interpolation by linear one in incremental preprocessing.

Development of data assimilation system in 2004 (continued) Preparation of technology for variable resolution version of the model. Currently, it is launched using interpolation of analyses from the constant resolution version of the model. Later, full assimilation cycle is planned. Now the analyses and SL-AV model 5-days forecasts (constant resolution version) are available from Hydrometcentre ftp-server (ftp://ftp. hydromet.ru) for research purposes for free. Later, variable resolution version analyses and forecasts will be placed on this server.

Development of the INM RAS-Hydrometcentre semi-Lagrangian SL-AV model in 2004 Tolstykh M.A. Changes in dynamics, upgrade of parameterizations Parallel implementation and porting to different computer systems Variable resolution version with the horizontal resolution above Russia

SL-AV model (semi-Lagrangian absolute vorticity) Shallow water constant-resolution version demonstrated the accuracy of a spectral model for most complicated tests from the standard test set (JCP 2002 v. 179, ) 3D constant-resolution version (Russian Meteorology and Hydrology, 2001, N4) passed quasioperational tests at RHMC 3D dynamical core passed Held-Suarez test

Changes in dynamics in 2004 Implementation of the SETTLS scheme (Hortal, QJ 2003) with 2nd order uncentering instead of classical 2-time-level semi-Lagrangian scheme Change of some high-order differencing and averaging operators in the horizontal plane Additional orography filtering in some mountains (e.g. Alaska, Andes) Result: reduction of the false orographic resonance, possibility to reduce the horizontal diffusion coefficient for vorticity (contributing to cold bias reduction)

500 hPa height field over Alaska(72h forecast from 26/10/03 (color isolines – old version, white isolines – new version)

Changes in parameterizations in 2004: Upgrade of the gravity-wave drag parameterization developed in Meteo-France Introduction of the mesospheric drag parameterization acting mainly at the uppermost vertical model level Result: Contribution to cold bias reduction, extended stability at the top of the model atmosphere

Averaged bias of 72h geopotential forecasts over Russia starting from 00 UTC (october 2003) (Blue line – old version, red line – new version)

Parallel implementation (MPI+OpenMP)

Parallel implementation for version 0.225ºх0.18ºх28

Parallel implementation (MPI+OpenMP) 2 Theoretical scalability is limited to N lat ; for future 0.25°x0.18°x60 version this gives 1000 processors High efficiency of the code in single CPU mode: 21% from peak performance on scalar Itanium 2 1.3GHz CPU; ~45-55% on modern vector machines For 0.9°x0.72°x28 version, 24h forecast takes 5.5 min on one 4-processor node of the Myrinet 16 Itanium2 processor Hydrometcentre’s cluster Successfully ported to SGI Altix, NEC SX6 and Cray X1

Extension to the case of variable resolution in latitude  Discrete coordinate transformation (given as a sequence of local map factors), subject to smoothness and ratio constraints. This requires very moderate changes in the constant resolution code (introduction of map factors in computation of gradients, semi-implicit scheme etc) and also allows to preserve all compact differencing and its properties intact.  Some changes in the semi-Lagrangian advection - interpolations and search of trajectories on a variable mesh.  Details in Tolstykh, Russian J. Num. An. & Math. Mod., 2003, V.18, N4,

Latitudinal resolution (in radians) vs. latitude (in degrees)

Averaged (January 2005) H500 RMS scores for 12 UTC forecasts over Russia: constant and variable resolution versions

Averaged (January 2005) MSLP RMS scores for 12 UTC forecasts over Russia: constant and variable resolution versions

Averaged (January 2005) T850 RMS scores for 12 UTC forecasts over Russia: constant and variable resolution versions

Averaged (January 2005) H500 anomaly correlation scores for 12 UTC forecasts over Russia: constant and variable resolution versions

The evaluation of forecast quality using observations data A.N. Bagrov

Brief characteristics of the method Radiosondes (TEMP) and near-surface observations (SYNOP) first pass quality check Root-mean-squared error (RMS) and tendencies correlation coefficient (RKT) are calculated fixing the number of observations used for forecasts evaluation Averaged monthly scores

The models compared: 1.EXE -Exeter, UKMO model 2. SMA - RHMC Eulerian spectral model; initial data from RHMC operational analyses 3. SLM – SL-AV model; initial data from assimilation system analyses described in parts 1-2

RMS scores of 500 hPa geopotential vs radiosondes. 00UTC forecasts. February Europe

RMS scores of MSLP field vs SYNOP data. 00UTC forecasts. February Europe

RMS scores of 850 hPa temperature vs radiosondes. 00UTC forecasts. February Europe

RMS scores of 250 hPa wind vs radiosondes. 00UTC forecasts. February Europe

Tendencies correlation for 500 hPa geopotential vs radiosondes. 00UTC forecasts. February Europe

RMS scores of 500 hPa geopotential vs radiosondes. 00UTC forecasts. February Central Russia

RMS scores of MSLP field vs SYNOP data. 00UTC forecasts. February Central Russia

RMS scores of 850 hPa temperature vs radiosondes. 00UTC forecasts. February Central Russia

RMS scores of 250 hPa wind vs radiosondes. 00UTC forecasts. February Central Russia

Future work Implementation of the reduced grid in the model and in the assimilation (see the poster of R. Fadeev) Implementation of the ISBA scheme developed in Meteo-France for soil parameterization and assimilation of soil variables Work on configuration with rotated poles Further plans to implement nonhydrostatic dynamical core