Title: Seasonal Climate Prediction
1Seasonal Climate Prediction
- Youmin Tang
- Environmental Science and Engineering, University
of Northern British Columbia
2Contents
- Introduction
- Basic theory and methods for the dynamical
climate prediction system - International activities on the seasonal climate
prediction - Seasonal prediction in Canada
- Climate prediction in UNBC
- Future Challenges
3Three types of predictions
- Weather Prediction
- Prediction of long-term climate change
- Seasonal Prediction
4Prognostic diagnostic Eq.
u, v, T, S
w, p, ?
5(No Transcript)
6Differences
- NWP time evolution of the exact state of the
atmosphere - Long-term prediction gross features of a changed
climate averaged over many years - Seasonal Predictions describe statistic aspects
of atmospheric anomalies over 1-3 months
7Weather prediction
- Goal to forecast the exact state of the
atmosphere from initial conditions, at high time
resolution over several days. - Combination of statistical technique, experience,
and intuition, in the final stage of most
forecast. - Mid-latitude, the limit predictability is usually
considered to be 10-14 days (Lorenz, 1982).
8Weather prediction
- Predictability arises solely from internal
atmospheric dynamics - Accurate atmospheric initial conditions
- Smaller errors in the initial state can grow
rapidly and lead to a poor forecast even with a
perfect model - Slightly different initial conditions are used
for ensemble forecast - Slowly evolving lower boundary conditions are
often assumed to be constant
9Prediction of long-term climate change
- Goal to characterize changes in the long-term
mean atmospheric and oceanic circulation and
especially to characterize mean changes at the
earths surface - Tools a coupled atmosphere-ocean-land-ice model
--- Climate system model - Concern with gross features of a changed climate
averaged over many years
10Seasonal Prediction
- Focus fairly qualitatively on a few key climate
variables - Surface temperature
- Precipitation
- Distinct from both NWP and Climate Simulation in
three aspects - In Purpose
- In Approaches
- In timescale
11The New Challenge Linking Climate to Weather
12Why Seasonal Prediction
Growing demand for reliable seasonal forecasts
energy
13Venezuela
Germany
India
14(No Transcript)
15(No Transcript)
16Use of better Drought forecasts to Improved Dam
and hydropower management for hydroelectric power
generation has enabled the domestic and
manufacturing industries in Kenya and Tanzania to
run at optimum capacity
17Economic Loss caused by 1982/1983 El Nino Event
18Predictability of seasonal prediction
Obs.
Internal chaotic Process
Theoretical limit
Method (model) Quality of IC BC
Potential predictability
Actual predictability
In climate prediction, Potential predictability
is usually regarded as the predictability with
full information of future boundary condition
(e.g., SST). Thus, predictability is varied with
similarity between the response of real
atmosphere and prediction method to the same BC.
From Prof. In-Sik kang
19Why --- limit of Predictability
- The limitation of predictability arises from
- The imperfections of the forecast model
- The nonlinearity of the climate system
- The predictive skill depends on
- The field considered
- The model used for forecast
- The initial state of the system
20Limitation of Predictability
- Any statement about the predictive skill should
include the word for this model - Predictive skill should be calculated for a
large number of situations in order to make the
most general statement possible
21Methods for seasonal prediction
- Statistical Method
- Dynamical Method
- Hybrid Method
22Statistical Methods for seasonal prediction
- Since the beginning of the twentieth century
(e.g., Quayle, 1929) - Based on historical data and employ a
mathematical relationship between predicted and
predictor variables. - SST anomalies (especially over the tropical
Pacific Ocean) are the sole predictor for the
statistical forecasts of seasonal climate
anomalies (e.g., Folland et al., 1991 Ward and
Folland, 1991 Barnston, 1994)
23Statistical Methods for seasonal prediction
- Regression approaches
- e.g., Knaff and Landsea, 1997
- Canonical correlation analysis (CCA)
- e.g., Barnston and Ropelewski, 1992
- Neural network models
- e.g., Sahai et al., 2000 Tanggang et al, 1998,
Tang et al. 2001 2002 2003. -
24Statistical Methods for seasonal prediction
- Limitations
- require a long and accurate data of the earths
climate - require an understanding of the physically based
relationships between predicted and predictor
variables - Unstable relationship (e.g. Krishna Kumar, 1999 )
- No physics
25Dynamical Methods for seasonal prediction
- Since late 80s last century
- Based on mathematical representation of physical
laws governing the behavior of the atmosphere or
the coupled atmosphere-ocean system.
- Be able to estimate uncertainty of prediction
- through Ensemble prediction.
- High potential to improve skill in the future
26Seasonal-to-interannual prediction
- The Basis for all predictions at timescales
longer than a month is the hypothesis that, on
these timescales, the atmospheric statistics are
in equilibrium with the surface boundary
conditions - A prediction of Surface Boundary conditions will
lead to some statistical knowledge of the
atmosphere
27Seasonal-to-interannual prediction
- Slowly varying boundary conditions, impose a slow
variation of atmospheric statistics - Sea surface temperature
- Soil moisture
- Sea ice extent
- Surface albedo
28Boundary conditions
- Strong interact with the atmosphere
- Soil moisture --- rainfall evaporation
- Albedo --- Snow and ice extent
- SST --- fluxes of heat and momentum from
atmosphere - Evolve with their own dynamics
- A climate system model is needed
29(No Transcript)
30(No Transcript)
31(No Transcript)
32(No Transcript)
33 Operational prediction-Two tiers
34Ensemble Prediction
- The Ensemble prediction simulates possible
initial uncertainties by adding, to the original
analysis, small perturbations within the limits
of uncertainty of the analysis. From these
alternative analyses, a number of alternative
forecasts are produced
35Ensemble runs? How to optimally perturb system?
- The model dimensionality is large, typically
106. -
- We must perturb the system wisely such that we
can use affordable perturbation members for
ensemble predictions. - We need to find the optimal perturbation
patterns? singular vectors or breeding vectors of
the linearized operator of the original system.
36(No Transcript)
37- The growth (forecast error) of perturbation (or
initial error) in the time interval can be
expressed in the form -
38(No Transcript)
39- The vector of the small perturbation
- that maximizes is the
- first eigenvector of ,i.e, the
singular vector of A. where A is the ad joint
operator of A. -
40International Research Activities on the
dynamical Seasonal prediction
41 Prediction and predictability
42International Projects
- CLIVAR (Study of CLImate VARiability and
Predictability) - SMIP ( Seasonal Prediction Model Intercomparison
Project --- Phase I Phase II ) - NSIPP (NASA Seasonal to Interannual Prediction
Project) - PROVOST (PRediction Of Climate Variation On
Seasonal to interannual Time scale) - DEMETER(Development of a European Multimodel
Ensemble system for Seasonal to interannual
prediction) - APCN Multi-model Ensemble Project
-
43Development of a European Multi-Model Ensemble
System for Seasonal to Interannual
Prediction (http//www.ecmwf.int/research/demeter
/general/index.html)
44Multi-Model Ensemble System
- DEMETER system 6 coupled global circulation
models
9 member ensembles ERA-40 initial conditions
SST and wind perturbations 4 start dates per
year 6 months hindcasts
Hindcast production for 1987-1998 (1958-2001)
45APCN Multi-Model Ensemble System
46Participating Models
Member Economies Acronym Organization Model Resolution
Australia POAMA Bureau of Meteorology Research Centre T47L17
Canada MSC Meteorological Service of Canada 1.875 ? ? 1.875 ? L50
China NCC National Climate Center/CMA T63L16
China IAP Institute of Atmospheric Physics 4 ? ? 5 ? L2
Chinese Taipei CWB Central Weather Bureau T42L18
Japan JMA Japan Meteorological Agency T63L40
Korea GDAPS/KMA Korea Meteorological Administration T106L21
Korea GCPS/KMA Korea Meteorological Administration T63L21
Korea METRI/KMA Meteorological Research Institute 4 ? ? 5 ? L17
Russia MGO Main Geophysical Observatory T42L14
Russia HMC Hydrometeorological Centre of Russia 1.125 ? ? 1.40625 ? L28
USA COLA Center for Ocean-Land-Atmosphere Studies T63L18
USA IRI International Research Institute for Climate Prediction T42L18
USA NCEP NCEP Coupled Forecast System T62L64
USA NSIPP/NASA National Aeronautics and Space Administration 2 ? ? 2.5 ? L34
47Research Institutions
- International Research Institute for Climate
Prediction (IRI) (Initiated in 1994) - Climate Prediction Center(CPC/NCEP)
- ECMWF (Initiated in 1995)
- UK Met office (Initiated in 1987, Ward and
Folland, 1991)) - CCCma (Canada)
- RPN (Canada)
- BMRC (Australia)
- Experimental climate prediction center(ECPC),
Scripps Institute of Oceanography - Korea Meteorology Administration (KMA)
- Japan Meteorology Administration (JMA)
-
48Seasonal Prediction in Canada
- Since September 1995, the Canadian Meteorological
Centre has been producing 0-3 month outlooks for
Canada. - The seasonal forecast results from an ensemble of
12 model runs 6 runs from a Global Environmental
Multiscale model (GEM) of RPN, that has a
horizontal resolution of 1.875 degrees with 50
vertical levels, and 6 runs from a Climate model
(GCM2) of the CCCma.
49Surface Air Temperature Forecast
- an average of the daily temperature as predicted
by the models. - The climatologies of the models are then
subtracted from the mean forecast seasonal
temperatures to derived the forecast anomalies of
each model. The anomalies of the two models are
then normalized and combined using an arithmetic
average. - The anomalies are divided in three categories
(above, near and below the normal).
50Precipitation Forecast
- The forecasts are made using the total
accumulated water precipitation over the season.
The precipitation predicted is the total liquid
and includes all types snow, rain, ice pellets,
etc. The climatology of the models is subtracted
from the total precipitation forecast to derive
the anomalies. The anomalies of the two models
are then combined using a simple normalized
average. Finally the precipitation anomalies are
divided in three categories (above, near and
below the normal) as is done for the temperature
anomaly forecast.
51Skill of Summer T
52Skill of Winter T
53Skill of Summer P
54Skill of Winter P
55The prediction is issued operationally
- http//meteo.ec.gc.ca/saisons/index_e.htmlclimato
logy
56Prediction and Predictability of the Global
Atmosphere-Ocean Systemfrom Days to Decades
- A Five-Year Network in Canada funded by
Canadian foundation of Climate and Atmospheric
Sciences.
57(No Transcript)
58Climate Prediction and Predictability in UNBC
- Dr. Youmin Tang (group leader)
- Dr. Ziwang Deng
- Dr. Xiaobing Zhou
- Peter Mills
- Jasion Ambadan
- YangJie Cheng
- Zhiyu Wang
59Ocean model
- OPA8.1 OGCM
- 25 layers in the vertical direction with 17
concentrated in the top 250m of the ocean. - Model domain 30N - 30S and 120E - 75W.
- Resolution 1 degree in the zonal direction in
the meridional direction, the resolution is 0.5
degree within 5 degree of the equator, smoothly
increasing up to 2.0 degree at 30N and 30S. - Time step is 1.5 hour.
-
-
60Atmospheric models
- Model1 Statistical model. ? HCM1
- Model2 Intermediate complexity dynamical
- model ? HCM2
-
- Tang et al. 2004, J. Geophy. Res (ocean),
109, C05014) - Tang et al. 2004, Geophy. Res. Letters, Vol.
30, No. 13, 1694 - Tang et al. 2004, J Phys. Oceangr. Vol 34,
No. 3, 623-642.
61(No Transcript)
62(No Transcript)
63(No Transcript)
64(No Transcript)
65(No Transcript)
66(No Transcript)
67(No Transcript)
68Future Challenges
- Extending the geographical range of SST
predictions - Model initialization
- Land data assimilation system
- Oceanic data assimilation system
- Ensemble runs
- Multi-model ensemble technique
- Model development
- Progress in dynamical seasonal prediction in the
future depends critically on improvement of
coupled ocean-atmosphere-land models
69(No Transcript)
70Krishnamurti et al.(2000)
71Multi-model hindcasts
ACC for Niño3 SST for Multimodel, ECMWF, MetFr,
MetOf, and LODYC