... Weather Forecasting. Neil Stringfellow. CSCS Swis - PowerPoint PPT Presentation

About This Presentation
Title:

... Weather Forecasting. Neil Stringfellow. CSCS Swis

Description:

... Weather Forecasting. Neil Stringfellow. CSCS Swiss National Supercomputing ... Not detected by national weather services. Demands for improved forecasting ... – PowerPoint PPT presentation

Number of Views:61
Avg rating:3.0/5.0
Slides: 36
Provided by: neilstri
Category:

less

Transcript and Presenter's Notes

Title: ... Weather Forecasting. Neil Stringfellow. CSCS Swis


1
Alpine Weather Forecasting
  • Neil Stringfellow
  • CSCS Swiss National Supercomputing Centre

2
CSCS Swiss National Supercomputing Centre
  • National Supercomputing Centre since 1992
  • Provides compute facilities and scientific
    support to Swiss research community
  • Federal High Schools, Federal research
    institutes, Universities and University of
    Applied Sciences
  • Switzerland is currently planning its national
    strategy in HPC
  • CSCS also provides facilities to MeteoSwiss for
    operational weather forecasting

3
CSCS User Base
  • Scientists drawn from a large number of
    disciplines
  • Climate research is a major research field

4
Climate Modelling at CSCS
  • One of CSCS ALPS projects awarded to model
    hydrological cycle in Alpine Environment
  • Various software packages are run at CSCS
  • Echam5 Echam5-HAM (Atmosphere Aerosol)
  • CCSM CSM with Carbon Cycle
  • COSMO climate model (regional and local)
  • No non-coupled ocean modelling

5
Economic Importance of Climate Modelling
  • Tourism
  • Important to know long-term effects for planning
    where to locate ski resorts
  • Agriculture
  • Swiss agriculture is expected to benefit from
    modest temperature increases (up to 2C)
  • Electricity generation
  • Hydro power requires precipitation
  • Nuclear power plants require cooling

6
Water and Electricity Generation
  • Swiss electricity generation is carbon neutral!
  • Approx 60 from hydroelectric power plants
  • Most of the rest is Nuclear
  • Need to know precipitation levels for electricity
    generation
  • Cooling of nuclear power plants relies on water,
    and the temperature of that water
  • During the 2003 summer heatwave, electricity
    production from nuclear was reduced by 25

7
Future Climate Scenarios
  • Current prediction is for higher temperatures and
    lower precipitation
  • Glacial melt will increase in near future but
    water available for hydro-generation will reduce
    from present levels by 2050
  • Warmer water will reduce cooling capacity for
    nuclear reactors
  • There is a need for research, and in particular
    numerical simulation

8
MeteoSwiss and CSCS
  • MeteoSwiss is the Swiss federal weather office
  • MeteoSwiss run operational weather forecast model
    at CSCS
  • MeteoSwiss runs the COSMO model from the COSMO
    consortium
  • This is a local (not global) model
  • CSCS provides compute resources and technical and
    scientific services

9
High Resolution Forecasting
  • European Windstorms Lothar and Martin caused
    destruction and loss of life in 1999
  • Not detected by national weather services
  • Demands for improved forecasting
  • Additional requirements for accurate forecasting
    from Nuclear Power Plant operators

Destruction in black forest due to Windstorm
Lothar
10
European Windstorms - background
  • Windstorms occur in Winter, typically December to
    February
  • Sometimes called Winter storms or Orkan
  • Naming system similar to hurricanes
  • Names issued by Free University of Berlin
  • Actually all high and low pressures are named
  • Historically have caused major loss of life
  • Mainly due to dyke breaches in Netherlands
  • Occasionally missed by national weather services
  • 1987 Storm in United Kingdom
  • Lothar in 1990 by Germany (and others inc.
    Switzerland)

11
Features of European Windstorms
  • Dont dissipate quickly over land
  • They sometimes intensify over land
  • Often occur in clusters of 2 or more
  • Daria Herta (Jan 1990)
  • Vivan Wiebke (Feb 1990)
  • Désirée, Esther, Fanny, Hetty (Jan 1998)
  • Lothar Martin (Dec 1999)
  • Wind speeds, insurance losses and fatalities are
    similar to U.S. hurricanes
  • No massive loss of life in modern times to
    compare with Hurricanes Jeanne and Katrina

12
Swiss Topography
  • High mountains and deep valleys lead to extreme
    winds during storms
  • 225 km/h on Aetsch Glacier for Kyrill
  • 285 km/h at Jungfraujoch for Wiebke

13
Insurance Losses
  • European Windstorms are the second highest cause
    of insurance losses
  • Highest losses are caused by U.S. Hurricanes
  • Average annual loss is around 2 Billion
  • 5 of top 20 biggest ever insurance losses are due
    to European Windstorms

14
Losses of Big Storms
affected Switzerland
Combined Lothar/Martin (25th 27th Dec. 1999)
would be 8th largest loss
Source Swiss Re
15
Lothar/Martin December 1999
  • Storm Lothar crossed France, Germany and
    Switzerland on 24th 25th December 1999
  • Storm Martin followed a similar path on 26th
    27th December
  • Many fatalities, billions of dollars of damage
  • Not predicted by National Weather Services

16
Advances in Prediction
  • Study of prediction of Lothar/Martin (Walser et.
    al) looked at 3 aspects
  • Moist Singular Vectors
  • Different approach to calculate initial
    perturbations for ensemble forecasts
  • Increased Resolution
  • Ensembles
  • Showed great potential for improved forecasts

17
Forecast storm Lothar max. wind gusts t(42-66)
(1)
opr SVs, ?x80 km
  • Configuration
  • opr SVs, 80 km
  • opr SVs, 10 km, 80 km topo
  • moist SVs, 10 km,80 km topo
  • moist SVs, 10 km
  • moist SVs, 10 km,10 members

18
Forecast storm Lothar max. wind gusts t(42-66)
(2)
opr SVs, ?x10 km, ?x topography 80 km
  • Configuration
  • opr SVs, 80 km
  • opr SVs, 10 km, 80 km topo
  • moist SVs, 10 km,80 km topo
  • moist SVs, 10 km
  • moist SVs, 10 km,10 members

19
Forecast storm Lothar max. wind gusts t(42-66)
(3)
moist SVs, ?x10 km, ?x topography 80 km
  • Configuration
  • opr SVs, 80 km
  • opr SVs, 10 km, 80 km topo
  • moist SVs, 10 km,80 km topo
  • moist SVs, 10 km
  • moist SVs, 10 km,10 members

20
Forecast storm Lothar max. wind gusts t(42-66)
(4)
moist SVs, ?x10 km
  • Configuration
  • opr SVs, 80 km
  • opr SVs, 10 km, 80 km topo
  • moist SVs, 10 km,80 km topo
  • moist SVs, 10 km
  • moist SVs, 10 km,10 members

21
Forecast storm Lothar max. wind gusts t(42-66)
(5)
moist SVs, ?x10 km, 10 members
  • Configuration
  • opr SVs, 80 km
  • opr SVs, 10 km, 80 km topo
  • moist SVs, 10 km,80 km topo
  • moist SVs, 10 km
  • moist SVs, 10 km,10 members

22
Going from 80km to 10km
ECMWF EPS (80 km)
COSMO-LEPS (10 km)
23
Current Situation of MeteoSwiss
  • Forecast runs on a 896 core Cray XT4
  • Runs 8 times per day for 30 mins

24
Need for High Resolution
  • The forecast simulation resolves Switzerland
    using a two-grid refinement
  • coarse 6.6km spacing between grid points
  • 385 x 325 grid, 60 atmospheric levels over
    Western Europe, 72 second time step with
    numerical leapfrog scheme
  • fine simulation uses 2.2km spacing
  • 520 x 350 grid, 60 atmospheric levels over
    Alpine Arc, 20 second time step with
    Runge-Kutta numerical scheme
  • Many features in Switzerland were not resolved at
    the older 7km resolution
  • Few valleys are resolved at this resolution

25
Resolution change 6.6km to 2.2km
COSMO-7 (6.6 km)
COSMO-2 (2.2 km)
26
Example - Magadino Plain
  • Magadino Plain is the lowest part of Switzerland
  • Lowest point is on shore of Lago Maggiore
  • Plane is surrounded by mountains
  • At 6.6km resn it resolves to be a 1km high
    plateau
  • At 2.2km resn it has a valley floor at 200m
    height

27
Parameterisation v Direct Simulation
  • At low resolution many features cannot be
    directly modelled - have to be parameterised
  • Higher resolutions allow more physics
  • 6.6km -gt 2.2km deep convection is computed
    explicitly
  • Higher resolution also allows modelling of valley
    winds

28
Full Suite
  • 7 components
  • Interpolation, assimilation and 24 hour forecast
    on coarse grid
  • Interpolation and assimilation on fine grid
  • Interpolation and 24 hour forecast on fine grid
  • All components have to complete in 20 minutes
  • To allow for data post-processing to complete
    within 30 minutes of start
  • Suite runs every 3 hours
  • Twice per day a 72 hour coarse grid forecast is
    added

29
Model Heirarchy
30
Full Suite Timeline
Time UTC
31
Example of Improvement - Wind
  • South of Zurich Lake
  • Wind field at 6.6km and 2.2km resolution
  • Features only resolved at high resolution

32
Other Extreme Events in Switzerland
  • Summer Flooding
  • Summer floods over central Europe in 2005
  • 38th largest insurance loss 1970-2007 (Swiss Re)
  • Summer Heatwaves
  • European heatwave of 2003 responsible for 35,000
    deaths
  • 8th largest number of deaths from natural
    catastrophe 1970-2007
  • Others, e.g. hailstorms halted Tour de Suisse in
    2007

33
HPC Issues in Climate/Weather
  • What is typical high-end Climate HPC work?
  • Future Modelling in Climate/Weather
  • Higher resolution
  • More physics
  • Ensembles
  • Very complex and large codes
  • Not likely to be an early adopter or new
    languages
  • No compact kernel for accelerators

34
I/O Rate and Storage
  • Many codes use proprietary formats
  • Grib format in European codes
  • No widespread adoption of parallel I/O
  • often I/O is done on one or a few processes
  • Increasing amounts of data being generated
  • reluctance to delete data
  • two-thirds of CSCS archive is used for Climate
    and Weather data

35
Acknowledgements
  • Great many thanks go to Andre Walser and Daniel
    Leuenberger of MeteoSwiss for providing slides
    and answering questions
Write a Comment
User Comments (0)
About PowerShow.com