Measures of Estimating Uncertainty of Seasonal Climate Prediction Information-based vs...
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Measures of Estimating Uncertainty of Seasonal Climate Prediction
Information-based vs signal-to-noise based metrics
Youmin Tang
University of Northern British Columbia, Canada
State Key Laboratory of Satellite Ocean Environment Dynamics, The second Institute of Oceanography, China
Potential Predictability
Rowell, D. P. (1998), Assessing potential seasonal predictability with an ensemble of multidecadal GCM simulations, J. Clim., 11, 109–120.
Peng, P., A. Kumar, W. Wang (2009), An analysis of seasonal predictability in coupled model forecasts, Clim. Dyn., 36, 637-648.
Information Entropy--- Uncertainty measure
dxxpxpxH )(ln)()(
dvvpvpdvvpvpPI )]|(ln[)|()](ln[)(
dv
vp
vpvpRE
)(
)|(ln)|(
Relative Entropy ( RE), Predictable Information(PI),
Climatology Distribution , Initial (Boundary) condition
)(p
.
Mutual Info. MI
.
])()(
),(ln[),(
pvp
vpvpMI
Relative Entropy ( Gaussian)
.
Yang, D. Tang, Y and Zhang, Y and Yang X, 2012: JGR-Atmosphere, doi:10.1029/2011JD016775
)2exp(1 MIACMI
t)coefficien ( ncorrelatioperfectSTRACMI
Also equivalent to the correlation of the signal component to the prediction target itself 。
Principal prediction component analysis (PrCA) and Maximum SNR
Denoting by S and N signal and noise, PrCA, or maximum of SNR, looks for a vector q, which can maximize the ratio of the variance of signal and noise that are projected onto the vector, namely,
2
2
;* ;*
N
s
r
r
TN
Ts
SNR
NqrSqr
Maximum
qqSNR
NT
ST
Multiple Model Ensemble
ENSEMBLES project stream-2 Hindcasts (1-tier forecast) http://ensembles.ecmwf.int/thredds/ensembles/stream2/seasonal/atmospheric/monthly.html
UKMO, ECMWF, MF, CMCC_INGV, IFM_GEOMAR
Time Period: January, 1969 to December, 2001.
Domain: 210E-300E; 20N-80N (NA: Northern America)
Ensemble size: 9
Multiple ensemble: 5*9=45
Prediction target: seasonal mean temperature of NA for MAM, JJA, SON and DJF 。
Yan, X , Tang, Y., 2012: An analysis of multi-model ensemble for seasonal climate predictions, Quarterly Journal of the Royal Meteorological Society, 15 OCT 2012 | DOI: 10.1002/qj.2019
MI-based potential predictability and its difference from SNR-based measure
Signal and Noise
For 2-seasons prediction (the calendar season is the target time of prediction, such as MAM meaning the prediction starting from Nov.
The most predictable pattern of the NA TAS at the lead of one season for different seasons (prediction target)
Predictable Component Analysis ( PrCA)
PI Maximum ; SNR Maximum
The time series of PrCA mode 1 and mode 2
The SST patterns associated with the PrCA mode 1 and mode 2 of TAS.
The 500mb height pattern associated with the PrCA TAS mode 1
The PrCA mode 1 (left) and mode 2 (right) for SSTA
Schematic diagram of teleconnection of ENSO to NA SAT Predictability
Correlation RMSE
The predicted time series of the first PrCA mode against the observation counterpart.
Same as above but for the prediction of the first principal component.
Conclusions
Signal-to-noise ratio (SNR) is a special case of information-based predictability measure. When the ensemble spread changes with initial condition, SNR often underestimates the potential predictability.
The most predicable component (PrCA) of the Northern America climate (temperature) is the interannual mode and a long-term trend (the global warming). The most predicable interannual variability, characterized by a dipole structure, is highly related to the ENSO and PNA. When El Nino occurs, a strong positive phase of PNA prevails in the middle-high latitude in spring and winter via the tele-connection, leading to warming in the northwestern Canada and cooling in the southeastern US.
The PrCA has potential benefits to the improvement of seasonal climate prediction.