seasonal prediction research and development at the australian bureau of meteorology
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Seasonal Prediction Research and Development at the Australian Bureau of Meteorology. Guomin Wang With contributions from Harry Hendon, Oscar Alves, Eun-Pa Lim and Claire Spillman Centre for Australian Weather and Climate Research: A partnership between the Bureau of Meteorology and CSIRO. - PowerPoint PPT PresentationTRANSCRIPT
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Seasonal Prediction Research and Development at the Australian
Bureau of Meteorology
Guomin Wang
With contributions from Harry Hendon, Oscar Alves, Eun-Pa Lim and Claire Spillman
Centre for Australian Weather and Climate Research:A partnership between the Bureau of Meteorology and CSIRO
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Outline
POAMA (Predictive Ocean Atmosphere Model for Australia)
Australian Rainfall Prediction
Leeuwin Current Prediction
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POAMA Overview
•The Bureau Dynamical Seasonal Prediction System POAMA
•First version went operational in 2002
•A new version (POAMA1.5) became operational recently and a newer version is in development
•POAMA development evolves as part of Australian Earth System Modelling project ACCESS
•Webpage POAMA.BOM.GOV.AUPOAMA.BOM.GOV.AU
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POAMA Model Components
Atmospheric ModelBAM T47L17 -> T63L17 -> ACCESS(UKMO+LSM)
Ocean ModelACOM2 lat/lon/lev=0.5~1.5/2/25 -> AusCOM
3h
OASIS Coupler10( )surfacef U u
Heat flux, P-E
, surfaceSST u
time
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Hindcasts Design
• Control run initialized at 00Z on the first day of each
month, 1980-2006
• Extra 9 members initialized prior to control run initial
time in progressively 6 hours interval
• Each hindcast is integrated for 9 months (lead 1-9)
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Skill Assessment: ACC for SST and Heat Content
+1
+3
+5
SST H300
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Nino3.4 IOD
ACC
RMS
Skill Assessment: ACC for SST Pacific & Indian Ocean Indices
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Wang and Hendon (2007)
Correlation between Australian drought index and SST
1997 2002
El Nino Vintage and Impact on Australian Rainfall
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• Classic El Nino Nino 3 Index – SSTA
over the Nino3 region (210E-270E, 5S-5N)
• El Nino Modoki EMI = [SSTA]Central –
(0.5[SSTA]East + 0.5[SSTA]West)
(from Weng et al. 2007)
El Nino: Classic vs Modoki
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Nino 3
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6
Lead Time (months)
Co
rr.
Co
eff.
POAMA
Persistence
EMI
0
0.2
0.4
0.6
0.8
1
0 1 2 3 4 5 6
Lead Time (months)
Co
rr.
Co
eff.
POAMA
Persistence
El Nino Skill: Classic vs Modoki
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NINO3
-3
-2
-1
0
1
2
3
4
OBS
POAMA LT1
POAMA LT3
EMI
-3.5
-2.8
-2.1
-1.4
-0.7
0
0.7
1.4
2.1
OBS
POAMA LT1
POAMA LT3
• El Nino Modoki events (EMI >= 0.7 STD): 86, 90, 91, 93, 94, 02, 04
• Classic El Nino events: 82, 87, 97
R ~ 0.86 at LT1
R ~ 0.83 at LT1
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OBS (SON)
POAMA LT 1 (1st Sep Start)
POAMA LT 3 (1st Jun Start)
SST Forecast CompositesClassic El Nino El Nino Modoki
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OBS (SON)
Australian Rainfall Forecast CompositesClassic El Nino El Nino Modoki
POAMA LT 1
POAMA LT 3
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Cases 1997 vs 2002
1997 2002
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Seasonal Prediction of the Leeuwin Current: Observed Features
Freemantle sea level (FSL) is indicative of volume transport variation of the leeuwin current (M. Feng).
Use FSL as a proxy for Leeuwin Current strength.
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90ºE 120ºE
Eq
20ºS
40ºS
POAMA SST and UV300 clim 1982-2003
90ºE 120ºE
GODAS SST and UV300 clim 1982-2003 ECOR SST and UV300 clim 1982-2003
Annual Mean of SST & top 300m Currents from Reanalyses
90ºE 120ºE POAMA GOGAS/NCEP ODA/ECMWF
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Fremantle Sea Level and Ocean Heat Content Observation vs Forecast Skill
Obs relationship between H300 and SLA at Freo
H300 ACC Skill at leadtime=7
HCNW = 15-25ºS,112-120ºE
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Fremantle Sea Level and SST Observation vs Forecast Skill
N34 = 5ºS-5ºN; 170º-120ºW
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Downscaling POAMA Forecasts to Fremantle SLA
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Nino4NWHCBoth CombinedPersist
Skill of Fremantle SLA Prediction from Downscaling Scheme
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82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 00 01 02 03 04 05 06
Years
FSLA ObsFSLA Lead 3FSLA Lead 6FSLA Lead 9
FSLA Forecasts 1982-2006
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Summary
• Introduction of The Australian Bureau’s Dynamical
Seasonal Prediction System POAMA.
• POAMA has higher skill for SST in Pacific and for heat
content along NW Australia.
• POAMA can predict short term El Nino vintage and
respective Australian rainfall responses.
• Using POAMA forecasts a downscaling scheme
shows useful seasonal forecast skill for Leeuwin
Current strength.
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Summary• Each El Nino event has different flavour
• The impact of the central Pacific warming El Nino (represented by El Nino Modoki Index) is as important as the traditional eastern Pacific warming El Nino for Australian rainfall
• POAMA has good skill to predict:
- the occurrence and the detailed SST structure of the central Pacific El Nino and the traditional El Nino events
- the Australian rainfall difference affected by these two types of El Nino events
- 97 and 02 El Nino events and associated Australian rainfall the skill stems from the improved the skill stems from the improved atmospheric initial conditions by ALI and the model’s atmospheric initial conditions by ALI and the model’s atmosphere-ocean coupling ability.atmosphere-ocean coupling ability.