9. Impact of Time Sale on Ω When all EMs are completely uncorrelated, When all EMs produce the exact same time series, Predictability of Ensemble Weather.

Slides:



Advertisements
Similar presentations
Quantification of Spatially Distributed Errors of Precipitation Rates and Types from the TRMM Precipitation Radar 2A25 (the latest successive V6 and V7)
Advertisements

1 Trend and Year-to-year Variability of Land-Surface Air Temperature and Land-only Precipitation Simulated by the JMA AGCM By Shoji KUSUNOKI, Keiichi MATSUMARU,
Scaling Laws, Scale Invariance, and Climate Prediction
Effects of model error on ensemble forecast using the EnKF Hiroshi Koyama 1 and Masahiro Watanabe 2 1 : Center for Climate System Research, University.
Predictability and Chaos EPS and Probability Forecasting.
Jon Robson (Uni. Reading) Rowan Sutton (Uni. Reading) and Doug Smith (UK Met Office) Analysis of a decadal prediction system:
Determination of Solar Cycle and Natural Climate Variation using both Surface Air/Soil Temperature and Thermal Diffusion Model Xiquan Dong (Atmospheric.
EG1204: Earth Systems: an introduction Meteorology and Climate Lecture 7 Climate: prediction & change.
Statistical Methods for long-range forecast By Syunji Takahashi Climate Prediction Division JMA.
Reflected Solar Radiative Kernels And Applications Zhonghai Jin Constantine Loukachine Bruce Wielicki Xu Liu SSAI, Inc. / NASA Langley research Center.
Potential Predictability of Drought and Pluvial Conditions over the Central United States on Interannual to Decadal Time Scales Siegfried Schubert, Max.
Jae-Heung Park, Soon-Il An. 1.Introduction 2.Data 3.Result 4. Discussion 5. Summary.
Sub-Saharan rainfall variability as simulated by the ARPEGE AGCM, associated teleconnection mechanisms and future changes. Global Change and Climate modelling.
Basic characteristics of stratospheric predictability: Results from 1-month ensemble hindcast experiments for Masakazu Taguchi Aichi University.
SNOPAC: Western Seasonal Outlook (8 December 2011) Portland, OR By Jan Curtis.
Orbit Characteristics and View Angle Effects on the Global Cloud Field
June, 2003EUMETSAT GRAS SAF 2nd User Workshop. 2 The EPS/METOP Satellite.
Preliminary Results of Global Climate Simulations With a High- Resolution Atmospheric Model P. B. Duffy, B. Govindasamy, J. Milovich, K. Taylor, S. Thompson,
Multi-Perturbation Methods for Ensemble Prediction of the MJO Multi-Perturbation Methods for Ensemble Prediction of the MJO Seoul National University A.
Shuhei Maeda Climate Prediction Division
Improved ensemble-mean forecast skills of ENSO events by a zero-mean stochastic model-error model of an intermediate coupled model Jiang Zhu and Fei Zheng.
Meeting of the CCl/OPACE2 Task Team on National Climate Monitoring Products How might NCMPs contribute in future IPCC reports ? Fatima Driouech TT on national.
MedCOF-1, Belgrade Serbia, November 2013 The CNR-ISAC monthly forecasting system D. Mastrangelo, P. Malguzzi, A. Buzzi Bologna, Italy Institute of.
Volcanic Climate Impacts and ENSO Interaction Georgiy Stenchikov Department of Environmental Sciences, Rutgers University, New Brunswick, NJ Thomas Delworth.
1.Introduction Prediction of sea-ice is not only important for shipping but also for weather as it can have a significant climatic impact. Sea-ice predictions.
The climate and climate variability of the wind power resource in the Great Lakes region of the United States Sharon Zhong 1 *, Xiuping Li 1, Xindi Bian.
11 Predictability of Monsoons in CFS V. Krishnamurthy Center for Ocean-Land-Atmosphere Studies Institute of Global Environment and Society Calverton, MD.
1 Motivation Motivation SST analysis products at NCDC SST analysis products at NCDC  Extended Reconstruction SST (ERSST) v.3b  Daily Optimum Interpolation.
Incorporation of Stable Water Isotopes in GSM and Spectrum-Nudged 28-year Simulation Kei YOSHIMURA 1,2 1: Scripps Institution of Oceanography, University.
Motivation Quantify the impact of interannual SST variability on the mean and the spread of Probability Density Function (PDF) of seasonal atmospheric.
The European Heat Wave of 2003: A Modeling Study Using the NSIPP-1 AGCM. Global Modeling and Assimilation Office, NASA/GSFC Philip Pegion (1), Siegfried.
Testing LW fingerprinting with simulated spectra using MERRA Seiji Kato 1, Fred G. Rose 2, Xu Liu 1, Martin Mlynczak 1, and Bruce A. Wielicki 1 1 NASA.
Simulated and Observed Atmospheric Circulation Patterns Associated with Extreme Temperature Days over North America Paul C. Loikith California Institute.
Assess Observation Impacts in the Hybrid GSI-EnKF Data Assimilation Systems for NCEP Global Forecast System Model Through OSE and Ensemble Based Observation.
1. Introduction 2. The model and experimental design 3. Space-time structure of systematic error 4. Space-time structure of forecast error 5. Error growth.
SeaWiFS Highlights April 2002 SeaWiFS Views Bright Water in the Rio de la Plata of South America Gene Feldman, NASA GSFC, Laboratory for Hydrospheric Processes,
Local Predictability of the Performance of an Ensemble Forecast System Liz Satterfield and Istvan Szunyogh Texas A&M University, College Station, TX Third.
Modes of variability and teleconnections: Part II Hai Lin Meteorological Research Division, Environment Canada Advanced School and Workshop on S2S ICTP,
This study compares the Climate System Forecast Reanalysis (CFSR) tropospheric analyses to two ensembles of analyses. The first ensemble consists of 12.
Predictability of daily temperature series determined by maximal Lyapunov exponent Jan Skořepa, Jiří Mikšovský, Aleš Raidl Department of Atmospheric Physics,
One-year re-forecast ensembles with CCSM3.0 using initial states for 1 January and 1 July in Model: CCSM3 is a coupled climate model with state-of-the-art.
Indo-Pacific Sea Surface Temperature Influences on Failed Consecutive Rainy Seasons over Eastern Africa** Andy Hoell 1 and Chris Funk 1,2 Contact:
Discussions  Observationally, the two leading principal modes of ISCCP high clouds are highly correlated with MEI and EMI (Fig 3) and the spatial patterns.
A Random Subgrouping Scheme for Ensemble Kalman Filters Yun Liu Dept. of Atmospheric and Oceanic Science, University of Maryland Atmospheric and oceanic.
Yuiko Ichikawa and Masaru Inatsu Hokkaido University, Japan 1 Systematic bias and forecast spread in JMA one-month forecast projected on the MJO phase.
Predictability of Monthly Mean Temperature and Precipitation: Role of Initial Conditions Mingyue Chen, Wanqiu Wang, and Arun Kumar Climate Prediction Center/NCEP/NOAA.
The impact of lower boundary forcings (sea surface temperature) on inter-annual variability of climate K.-T. Cheng and R.-Y. Tzeng Dept. of Atmos. Sci.
Impact of OMI data on assimilated ozone Kris Wargan, I. Stajner, M. Sienkiewicz, S. Pawson, L. Froidevaux, N. Livesey, and P. K. Bhartia   Data and approach.
29th Climate Diagnostic and Prediction Workshop 1 Boundary and Initial Flow Induced Variability in CCC-GCM Amir Shabbar and Kaz Higuchi Climate Research.
1/39 Seasonal Prediction of Asian Monsoon: Predictability Issues and Limitations Arun Kumar Climate Prediction Center
Observational Error Estimation of FORMOSAT-3/COSMIC GPS Radio Occultation Data SHU-YA CHEN AND CHING-YUANG HUANG Department of Atmospheric Sciences, National.
CES/SNU AGCM Intercomparison Project WCRP/CLIVAR Predictability of SST forced signals in ensemble simulations of multiple AGCMs during El Niño.
SCSL SWAP/LYRA workshop
Mingyue Chen, Wanqiu Wang, and Arun Kumar
Spatial downscaling on gridded precipitation over India
Jeffrey Anderson, NCAR Data Assimilation Research Section
WCRP Workshop on Seasonal Prediction
Instrumental Surface Temperature Record
ATMS790: Graduate Seminar, Yuta Tomii
Instrumental Surface Temperature Record
Leo Separovic, Ramón de Elía, René Laprise and Adelina Alexandru
Modeling the Atmos.-Ocean System
Seasonal Predictions for South Asia
Assimilation of Global Positioning System Radio Occultation Observations Using an Ensemble Filter in Atmospheric Prediction Models Hui Liu, Jefferey Anderson,
Atlantic Ocean Forcing of North American and European Summer Climate
Application of Stochastic Techniques to the ARM Cloud-Radiation Parameterization Problem Dana Veron, Jaclyn Secora, Mike Foster, Christopher Weaver, and.
How can an improved model yield higher RMS errors?
Volcanic Climate Impacts and ENSO Interaction
Opening Activity: Jan. 28, 2019 Grab a computer and log in – go to our class website to link on “communities take charge”. When done…. How do patterns.
Figure 2 Atlantic sector of the first rotated EOF of non-ENSO global SST variability for 1870–2000 referred to as the “Atlantic multidecadal mode” (38,
Presentation transcript:

9. Impact of Time Sale on Ω When all EMs are completely uncorrelated, When all EMs produce the exact same time series, Predictability of Ensemble Weather Forecasts with a Newly Derived Similarity Index Tomohito YAMADA 1 ), Shinjiro KANAE 2 ), Taikan OKI 1 ), and Randal D. KOSTER 3 ) 1) Institute of Industrial Science, The University of Tokyo 2) Research Institute for Humanity and Nature 3) NASA Goddard Space Flight Center 1. Introduction 2. Existing Evaluation Method of Ensemble Forecast 3. Similarity Index Ω Fig types of variances for Ω calculation. Tomohito Yamada Discovery of atmospheric chaotic behavior (Lorenz 1963). Subtle perturbation of initial condition or computational error grows large discrepancy of prediction (Fig.1-2). Chaotic behavior constrains the use of individual forecasts of instantaneous weather patterns to about 10 days (Lorenz 1982). Ensemble forecast that includes several initial conditions for which values have been slightly perturbed can gauge and reduce the numerical errors that arise from chaotic behavior. (a). Anomaly correlation Coeff. (b). Standard deviation Evaluate time series of anomaly correlation coeff. among ensemble members (EMs). Evaluate time series of standard deviation among EMs. m: ensemble members, n: time periods (1)(2) (3) Ω has been introduced as a similarity index (Koster et al. 2000) Koster et al (2000) and some Ω related studies have not revealed the detail mathematical structure of Ω. (4) 4. Mathematical Structure of Similarity Index Ω Derived Ω is expressed as Ω can be expressed as (5) (6) Here in Eq.(6), Eq.(7) can be written as (7) where, k, l: arbitrary number of EM : anomaly correlation coefficient (A) (B) Mathematical characteristics of Ω, which are related to similarity in both the phase (A) and shape (B) of the ensemble time series, show the index to be more robust than other statistical indices. Ω is the index to quantify that all EMs have identical time series or not. To clarify the impact of phase and shape similarity on Ω, we introduce 2 new statistical indices, shown in below. (A) Average value of Anomaly Correlation Coefficient (B) Average value of Variance Ratio 5. Experimental Design 6. Grid Scale 7. Zonal Scale Climate Model : CCSR/NIES AGCM5.6 Period : Dec – Jan SST : AMIP2 Ensemble member : 16 Initial Conditions: Every 1 hour data on December 1st. Fig time series of temperature at 500hPa height (57°N, 135°E). Fig Evaluation method for predictability using Ω (A) (B) (A) (B) Decrease of phase similarity mainly induces decrease of Ω. Decrease of both phase and shape similarity induces decrease of Ω. 8. Global Scale 10. Summary Fig Butterfly attractor of Lorenz model. Individual method with (a) or (b) can only evaluate one aspect of predictability. Therefore, the predictability with each method is not practical. However, unified or comprehensive method has not been suggested. (Mean values or amplitudes are same among EMs.) (There is no phase discrepancy among EMs.) ※ Murphy, 1988 Fig 2-1. Time series of predictability of ensemble forecast. There are mainly 2 types for the decrease of predictability. In cases of long time scale for recognition (5, 7 days), Ω shows large increase on around 22 nd and 32 nd. Time scale of 5 and 7 days includes low-frequency atmospheric variation in the mathematical concept of similarity. Mathematical structure of Ω was revealed. Ω is the average value of anomaly correlation coefficient (ACCC) among ensemble members weighted by average value of variance ratio (AVR). Ω is the statistical index to show both phase (correlation) and shape (mean value and amplitude) similarities. We proposed a new method to evaluate predictability of ensemble weather forecast using Ω. 2 types of predictability, such phase and shape was introduced from the mathematically derived Ω. We introduced the low-frequency atmospheric variation in the mathematical concept of similarity by changing the time scale for recognition. Fig Chaotic behavior of atmosphere in ensemble simulations. According to Fig. 3-1 (a),According to Fig. 3-1 (b), When the time scale for recognition is small (Black line), Ω rapidly loses its value. This shows the difficulty of daily weather forecast. Fig Global distributions of Ωon Dec. 10 th. (Similarity predictability) At middle latitude, the predictability is the highest for Ω, ACCC, and AVR. Global distributions of Ω is similar as ACCC. Fig Predictability of temperature at 500hPa height in 3 latitudes. AVR becomes almost stable after decrease of predictability. This is the climatologically value of AVR after losing the impact of initial condition. Fig Time series of Ω of temperature at 500hPa over a grid cell for 4 cases of time periods. Predictability : Large (a) (b). Fig types of similarity (phase and shape) in Ω. (A): Phase (correlation), (B): Mean value and Amplitude Fig Global distributions of ACCC on Dec. 10 th. (Phase predictability) Fig Global distributions of AVR on Dec. 10 th. (Shape predictability) (A)(B) ※ 0.05 is 92% significance level. (8) (9) Fig Reliable forecast day in 3 latitudes. Reliable forecast day is about 10 to 13 days in the mathematical concept of similarity. Ω is smaller than ACCC for all latitudes. This is caused by the increase of shape discrepancy among EMs. Day Ω: Similarity predictability, ACCC: Phase predictability, AVR: Shape Predictability ※ Yamada et al in preparation ※ Koster et al 2002