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Regional climate prediction comparisons via statistical upscaling and downscaling Peter Guttorp University of Washington Norwegian Computing Center

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Presentation on theme: "Regional climate prediction comparisons via statistical upscaling and downscaling Peter Guttorp University of Washington Norwegian Computing Center"— Presentation transcript:

1 Regional climate prediction comparisons via statistical upscaling and downscaling Peter Guttorp University of Washington Norwegian Computing Center peter@stat.washington.edu

2 Outline Regional climate models Comparing model to data Upscaling Downscaling Results

3 Acknowledgements Joint work with Veronica Berrocal, University of Michigan, and Peter Craigmile, Ohio State University Temperature data from the Swedish Meteorological and Hydrological Institute web site Regional model output from Gregory Nikulin, SMHI

4 Climate and weather Climate change [is] changes in long-term averages of daily weather. NASA: Climate and weather web site Climate is what you expect; weather is what you get. Heinlein: Notebooks of Lazarus Long (1978) Climate is the distribution of weather. AMSTAT News (June 2010)

5 Data SMHI synoptic stations in south central Sweden, 1961-2008

6 Models of climate and weather Numerical weather prediction: Initial state is critical Don’t care about entire distribution, just most likely event Need not conserve mass and energy Climate models: Independent of initial state Need to get distribution of weather right Critical to conserve mass and energy

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8 Regional climate models Not possible to do long runs of global models at fine resolution Regional models (dynamic downscaling) use global model as boundary conditions and runs on finer resolution Output is averaged over land use classes “Weather prediction mode” uses reanalysis as boundary conditions

9 Comparison of model to data Model output daily averaged 3hr predictions on (12.5 km) 2 grid Use open air predictions only RCA3 driven by ERA 40/ERA Interim Data daily averages point measurements (actually weighted average of three hourly measurements, min and max) Aggregate model and data to seasonal averages

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12 Upscaling Geostatistics: predicting grid square averages from data Difficulties: Trends Seasonal variation Long term memory features Short term memory features

13 Long term memory models

14 A “simple” model space-time trend periodic seasonal component noise seasonal variability

15 Looking site by site Naive wavelet-based trend (Craigmile et al. 2004)

16 Seasonal part

17 Seasonal variability Modulate noise two term Fourier series

18 Both long and short memory Consider a stationary Gaussian process with spectral density Examples: B(f) constant: fractionally differenced process (FD) B(f) exponential: fractional exponential process (FEXP) (log B truncated Fourier series) Short term memory Long term memory

19 Estimated SDFs of standardized noise Clear evidence of both short and long memory parts FD FEXP

20 Space-time model Gaussian white measurement error Process model in wavelet space scaling coefficients have mean linear in time and latitude separable space-time covariance trend occurs on scales ≥ 2 j for some j obtained by inverse wavelet transform with scales < j zeroed Gaussian spatially varying parameters

21 Dependence parameters LTM Short term

22 Trend estimates

23 Estimating grid squares Pick q locations systematically in the grid square Draw sample from posterior distribution of Y(s,t) for s in the locations and t in the season Compute seasonal average Compute grid square average

24 Downscaling Climatology terms: Dynamic downscaling Stochastic downscaling Statistical downscaling Here we are using the term to allow data assimilation for RCM point prediction using RCM

25 Downscaling model smoothed RCM (0.91,0.95)

26 Comparisons

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28 Reserved stations Borlänge: Airport that has changed ownership, lots of missing data Stockholm: One of the longest temperature series in the world. Located in urban park. Göteborg: Urban site, located just outside the grid of model output

29 Predictions and data

30 Spatial comparison

31 Annual scale Borlänge Stockholm Göteborg

32 Comments Nonstationarity in mean in covariance Uncertainty in model output ”Extreme seasons” where down- and upscaling agree with each other but not with the model output Model correction approaches


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