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Bin Wang and June-Yi Lee

Predictability of Seasonal Precipitation over Global Tropics in Coupled Climate Models. Bin Wang and June-Yi Lee. IPRC, University of Hawaii, USA. In-Sik Kang, Seoul National University, Korea J. Shukla, George Mason University, USA C.-K. Park and Saji Hameed, APCC, Korea.

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Bin Wang and June-Yi Lee

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  1. Predictability of Seasonal Precipitation over Global Tropics in Coupled Climate Models Bin Wang and June-Yi Lee IPRC, University of Hawaii, USA In-Sik Kang, Seoul National University, Korea J. Shukla, George Mason University, USA C.-K. Park and Saji Hameed, APCC, Korea

  2. CliPAS: Climate Prediction and Its Application to Society The international project, the CliPAS, in support of APCC is aimed at establishing well-validated multi-model ensemble (MME) prediction systems for climate prediction and developing economic and societal applications. Acknowledge contributions from the following CliPAS/APCC Investigators BMRC: O. Alves CES/SNU: I.-S. Kang, J.-S. Kug COLA/GMU: J. Shukla, B. Kirtman, J. Kinter, K. Jin FSU: T. Krishnamurti, S. Cocke, FRCGC/JAMSTEC: J. Luo, T. Yamagata (UT) IAP/CAS: T. Zhou, B. Wang KMA: W.-T. Yun NASA/GSFC: M. Suarez, S. Schubert, W. Lau NOAA/GFDL: N.-C. Lau, T. Rosati, W. Stern NOAA/NCEP: J. Schemm, A. Kumar UH/IPRC/ICCS: B. Wang, J.-Y. Lee, P. Liu, L. X. Fu

  3. Current Status of One-Month Lead MME Seasonal Prediction We have advanced our understanding the current status and challenges of (Multi-Model Ensemble) MME seasonal prediction through assessment of 20 models’ two-decade long hindcast. • We now assured that ENSO, the major source of the Earth climate predictability, can be predicted at a 6-month lead with correlation skill of 0.86. But, forecast of transitional and decaying phases of ENSO remains far less reliable. • Prediction of air temperature is considerably superior to the persistence skill in the warm pool oceans, but not over the continental areas. • The precipitation prediction in Asian-Pacific monsoon region has moderate skill in cold seasons but little skill over the continental summer monsoon regions. • The seasonal march of the thermal equator seems to add predictability to local summer hemisphere and change of the westerly jet location can, to some extents, provide prediction skill by influencing Rossby wave activity. • The CGCM MME captures the first two major modes of precipitation variability of the Asian-Australian monsoon system with high fidelity, superior to the two reanalysis datasets. • Sources of summer monsoon predictability come primarily from ENSO teleconnection, monsoon-warm pool interaction, and possibly land surface-atmosphere interaction.

  4. Questions • How to determine the major modes of variability for precipitation over global Tropics [30S-40N]? • How many modes of interannual variability of global precipitation are predictable in coupled MME system? • How large fractional variance can be accounted for by the “predictable” leading modes? • How good is the prediction skill of the MME in terms of the “predictable” part? Introduction • Climate scientists have made tremendous advances in understanding and modeling the variability and predictability of the climate system. As a result, the prediction of seasonal-to-interannual climate variations and the associated uncertainties using multiple coupled models has become operational. However, how to determine the predictability in the coupled climate system, where no atmospheric lower boundary forcing given, remains an unresolved issue. We propose one method to quantify predictability of global precipitation which relies on identification of the “predictable” leading modes of the observed interannual variations. The predictability is quantified by the fractional variance accounted for by these “predictable” leading modes.

  5. (1) How to determine the major modes of variability for precipitation over global Tropics (30S-40N)? Season-Reliant EOF (SEOF) (Wang and An 2005 (GRL), Wang et al 2007 (Clim Dyn) ) • Physical consideration Anomalous climate (ENSO, monsoon) is regulated by the seasonal march of the solar radiation forcing (annual cycle).Season-Reliant EOF (SEOF) analysis detects seasonal evolving major modes of climate variability. • Method Construct a covariance matrix that consists of a sequence of seasonal anomalies within a “Monsoon year” (Meehl 1987, Yasunari 1991) JJA (0) | SON (0) | DJF (0/1) | MAM (1) IAV in each monsoon year

  6. Forecast Skills of the Leading Modes of AA-M Asian-Australian Monsoon Predictability (Wang et al. 2007 Clim Dyn) S-EOF of Seasonal Mean Precipitation Anomalies The First Mode: 30% The Second Mode: 13% The CGCM MME captures the first two major modes of precipitation variability of the Asian-Australian monsoon system with high fidelity, superior to the two reanalysis datasets.

  7. 13 Coupled Climate Models

  8. (2) How many modes are predictable? SEOF Modes for Precipitation over Global Tropics (1981-2001) [0-360E, 30S-40N] Percentage Variance Prediction skill of each mode 54.3% (CMAP) 83% (MME) • The first two SEOF modes are very well predicted. The third are also reasonably well predicted. But all other higher modes are not predictable as shown by the insignificant correlation skill in the spatial structures and temporal variation. • We defined the first three modes are predictable part of the interannual variation using the current coupled MME prediction system.

  9. Lead/lag correlation with Nino3.4 SSTA PC time series PC Spectra MMEs underestimate QB Peak and total variances MMEs are highly correlated with CMAP MME capture ENSO-MNS relation S-EOF1 concurs with ENSO 0.98 SEOF2 leads ENSO 1 year 0.93 0.74 It is found that those predictable modes are significantly related with ENSO variability with different lead-lag relationship, especially in the 1st and 2nd modes.

  10. Eigenvectors of SEOF/ Precipitation S-EOF 1 of CMAP: 33% Quasi-Biennial (QB) S-EOF 2 of CMAP: 15% Quasi-Quadrennial (QQ)

  11. (3) How large fractional variance can be accounted for by the “predictable” leading modes? Fractional variance accounted for by the “predictable” part • The fractional variance is obtained from the ratio of the variance associated with a single SEOF mode to the total variance (Wang and An 2005). • If we take these three predictable modes together, about 53% of the total variance can be captured by those observational modes. • In observation, the fractional variance accounted for by the “predictable part” exhibits large spatial and seasonal variance. The MME prediction exaggerates the fractional variance of predictable modes, suggesting that the MME does not capture the higher modes.

  12. (4) How good is the prediction skill of the MME in terms of the “predictable” part? (a) (b) (c) JJA SON DJF MAM • Figure b shows the correlation skill for the reconstructed precipitation just by using the three predictable modes of MME prediction. The similarity between (a) and (b) indicates that the MME prediction skill basically comes from the first three leading modes of seasonal precipitation.

  13. Predictability in Coupled Models Upper limit of predictability if there is no other prediction source in MME system We can quantify the “predictability” by the fractional variance that is accounted for by the “predictable” leading modes in the observations. Such “predictable” modes can be determined by examining models’ hindcast results

  14. Summary How to measure the predictability in coupled climate system, where no atmospheric lower boundary forcing given, is an open issue. We have shown that the prediction skill of the coupled model MME basically comes from the skill in prediction of the first three major modes of interannual variations in the global tropical precipitation 1 The three modes together account for about 53% of the total interannual variance averaged over the tropics in observations. This portion of the variation may be considered as practically predictable part of the precipitation variability, because the MME can capture these three major modes reasonably well but cannot capture the rest higher modes 2 This result leads to a new approach to estimate the practical predictability of the tropical seasonal precipitation in the coupled climate models; i.e., we can quantify the “predictability” by the fractional variance that is accounted for by the “predictable” leading modes in the observations. Such “predictable” modes can be determined by examining models’ hindcast results 3

  15. Thank You !

  16. Predictability Contour: 50% Contour: 0.6 Contour: 1 • The ratio multi-model ensemble variance to intermodel variance : the first kind potential predictability • The sum of the fractional variances of the first four leading S-EOF modes in observation : the second kind potential predictability • The temporal correlation skill of 10-model MME prediction

  17. Summary Upper limit for predictable part if there is no other prediction source Upper limit for total field if there is no other prediction source

  18. Fractional variance and correlation skill in predictable modes • Sum of the fractional variances of first three and fifth modes in MME prediction and correlation skill between both predictable modes in observation and MME prediction.

  19. Summary Upper limit if

  20. Variance/ Precipitation • Variance of observed precipitation for 21 years • Mean of variances of each individual model ensemble predictions: The models intrinsically underestimate the precipitation variability. • Variance of MME prediction • Inter-model variance from multi-model ensemble mean (model spread): It is shown that the intermodel variances vary with season

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