Title: Introduction of KMA statistic model and ensemble system
1Introduction of KMA statistic model and ensemble
system
- Korea Meteorological Administration
- Numerical Weather Prediction Division
- Joo-Hyung Son
2Statistical models
- PPM (Perfect Prognostic Method)
- Daily Max/Min and midnight temperature
- Probability of Precipitation
- MOS (Model Output Statistics)
- Digital Forecast
- KF(Kalman Filtering)/DLM(Dynamic Linear Model)
- Daily Max/Min Temperature
- 3 hourly temperature
- Daily Max/Min Temperature of 10 days
3Statistical models
Max/Min Temp PoP
PPM
PPM
RDAPS
KF
Max/Min Temp
KF
DLM
3hr Temp
RDLM
GDAPS
Max/Min Temp
DLM
GDLM
4PPM for Max/Min Temp
- Predictant
- 00 UTC 1(00UTC, Max/Min)
- 12UTC 1(Max), 2(00UTC, Min)
- Forecast regions
- 70 sites in Korea
- Model development
- May 1, 1988 Feb 28, 1992 (4 years)
- Regional reanalysis of JMA
- Climate data of 70 weather sites
5PPM Model structure for Max/Min Temp
Forecast equation
- Temp (t) A Bobs(0) Cimodel
predictori(t) - A, B, Ci (i1,2,,n) fixed coefficients
predictor
predictor
1000, 850, 700,500,400,300hPa Wind speed,
direction, Temperature Dewpoint temp, Height et
al. from RDAPS Observation, climate
Forecast eqs for each season, sights
predictant
Max/Min and 00LST temperature of 70 sights
Predictant
6- PPM Predictors
- select a group of predictors which explain
predictant(temperature) well from 44 predictors
ltmethod forward-backward selectiongt - the number of the predictors of each seasonal
and regional forecast equations are ranged from 5
to 10
Main predictors for 12hr Max temp Main predictors for 12hr Max temp Main predictors for 12hr Max temp Main predictors for 12hr Max temp Main predictors for 24hr Max temp Main predictors for 24hr Max temp Main predictors for 24hr Max temp Main predictors for 24hr Max temp
Spring Summer Fall Winter Spring Summer Fall Winter
T850, CLMT, OBS, VOR8 PCWT OBS, CTOP VOR8 RH50, PCWT T85, CLMT, OBS, TTD8, VORS T85, CLMT, OBS, TTDB, VOR8 T85, CLMT, PCWT, VOR8, OBS OBS, VORS, T85, CTOP, RH70 T85, CLMT, TTD8, PCWT, VOR8 T85, CLMT, VOR8, TTD8, 70Q4
Main predictors for 12hr Min temp Main predictors for 12hr Min temp Main predictors for 12hr Min temp Main predictors for 12hr Min temp Main predictors for 24hr Min temp Main predictors for 24hr Min temp Main predictors for 24hr Min temp Main predictors for 24hr Min temp
Spring Summer Fall Winter Spring Summer Fall Winter
CLMT, OBS, T85, KYID, TTD8 OBS, T85, CLMT, VOR8, TTD8 CLMT, OBS, TTD8, VOR8, T85 T85, OBS, TTD8, TAD8, VOR8 CLMT, T85, KYID, TTD8, S70 OBS, T85, CLMT, VOR8, PCWT CLMT, TTD8, PCWT, T85, OBS T85, OBS, TTD8, VOR8, TAD8
- OBS observation, CLMT climate, PCWT virtual
prediction, VOR vorticity, TAD temperature
advection, KYID KY index
7PPM Model structure for PoP
Forecast equation
- Temp (t) A Bobs(0) Cimodeli(t)
- A, B, Ci (i1,2,,n) fixed coefficients
predictor
predictor
1000, 850, 700,500,400,300hPa Wind speed,
direction, Temperature Dewpoint temp, Height et
al. from RDAPS Observation, climate
Forecast eqs for Each region according to warm
and cold season
predictant
PoP of 18 regions
Predictant
8- PPM Predictors
- PoP
- the number of sites observed precipitation in
the region - Total number of sites in the region
- 18 regions
- 24 region by cluster analysis
- (Moon(1990))
- forecast experiment
- the forecast equations are developed according
to the warm(April-September) and
cold(October-March) season and each regions.
principle predictors for PoP principle predictors for PoP
Warm season DWL, VR850, QA700, VV700, S850, RH500
Cold season DWL, VV850, RH850, VR850, S850, 7Q4
- 18 regions for forecast of PoP
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10KF for Max/Min Temp
- Predictant
- 00 UTC 1(Min/Max), 2(Min)
- 12 UTC 1(Max), 2(Min/Max)
- Forecast regions
- 40 in Korea,
- 32 in North Korea, China, Japan
11KF for Max/Min Temp
vtN(0,Vt) observation noise
wtN(0,Wt) process noise
Gt 1
V0 2
4/365 0 0 W0 0
1/365 0 0 0 1/365
1 Ft RDAPS
Latest Obs temp
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13DLM(Dynamic Linear Model)
- DLM
- Improved Kalman Filter algorithm
- Weights(regression coefficient) are modified
according to the prior condition with time.
14DLM(Dynamic Linear Model)
vtN(0,Vt)
wtN(0,Wt)
- Use the updating algorithm to estimate Wt with
time - Find appropriate Wt increasing discount
factor(0ltdeltalt1) from 0.01 to 1 with interval
0.01 - the discount factor is selected when RMSE between
observation and forecast is the lowest
15DLM(Dynamic Linear Model)
- RDLM(Regional DLM)
- 3hourly forecast up to 48hr
- RDAPS
- 38 sites
- GDLM(Global DLM)
- Max/Min temp for 10 days
- GDAPS
- 38 sites
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17- Ensemble Prediction System
18 KMA Ensemble Prediction System
GBEPS 1.1.1 GBEPS 1.2.1 GBEPS 2.1.1 GBEPS 2.3.1 GBEPS 2.3.1.1 GBEPS 2.3.1.2
Operation period 2001.3.12003.10.31 From 2003.11.1 From 2005.2.
Data assimilation 2dOI ? 3dOI 3dOI ? 3dVar 3dVar
Model GDAPS T106L21 GDAPS T106L30 GDAPS T106L30
Vertical resolution 21 levels 30 levels 30 levels
Perturbation method Breeding Breeding ? Breeding Factor Rotation Breeding ? Breeding Factor Rotation
Target area (BV) Global Northern Hemisphere Northern Hemisphere
Lead time 10 days 8 days 8 days
Ensemble members 17 (16 members 1 control) 17 (16 members 1 control) 17 members
19Schematic diagram
- The global spectral model T106L30 with the
slightly different initial conditions run 17
times. - Both perturbed analysis and control analysis
are projected to 24hours with the model, and
departures from the control analysis at 24hours
are scaled down to the norm of initial
perturbations
20Schematic diagram
D day
D day 12hr
D1 day
D1 day 12hr
- 17members could be similar each other because
they are generated from the identical model, so
this is to make different perturbation among the
members manually. - In the new system, the factor rotation was
added every alternative step.
212005. 6. 11
old(cray-before)
NEW (cray-frot)
222005. 6. 11
old(cray-before)
NEW (cray-frot)
23 EPS products (http//190.1.20.56)
24Mean and Spread
25 Spaghetti
26 Spaghetti ( with ensemble spread)
5520m
5640m
27 Stamp map
display the global model, mean and standard
deviation and spaghetti as well as each member.
28 Categorical PoP
- 12-hour precipitation gt given thresholds
- 1, 5, 10mm for winter season
- 1, 10, 50mm for other seasons
- The probability
- These probability maps are used for the early
warning guidance of severe weather.
29 Categorical PoP
30 Probability of Surface Max Wind
- Surface maximum wind gt 10m/s, 14m/s
- The probability
- Â
- These probability maps are used for the early
warning guidance of severe weather.
31 Probability of Surface Max Wind
32 Time series of Probability
- Precipitation
- 12hr accumul gt 1mm
- 12hr accumul gt 10mm
- 12hr accumul gt 50mm
- Surface Max Wind
- sfc wind gt 10m/s
- sfc wind gt 14m/s
- Principle cities
- Seoul, Daegu, Daejeon
- Busan et al.
33 EPSgram
Time series of primary cities
34Ensemble Plumes
Time series of 8-day forecast at cities The
dispersion of members with forecast evolution
Variable Pmsl, 500H, 850 T
35Hwangsa (yellow sand) trajectory
36Typhoon Strike Probability Map by EPS
37Thank you
38 Factor analysis
- Factor analysis
- Factor analysis is a statistical technique to
explain the most of the variability among a
number of observable random variables in terms of
a smaller number of unobservable random variables
called factors - Factor rotation
- Factor rotation is to find a parameterization in
which each variable has only a small number of
large loadings. That is, each variable is
affected by a small number of factors, preferably
only one. This can often make it easier to
interpret what the factors represent.