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Tropical Biases in Next-Generation Climate Models Stefan Tulich 1 and George Kiladis 2 1 CIRES, University of Colorado, Boulder CO, USA 2 NOAA ESRL, Boulder CO, USA
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Coupled climate models are known to suffer from biases Kim et al. (2008) “High” = 1-2 deg. horizontal grid spacing (5 models)
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Coupled climate models are known to suffer from biases Kim et al. (2008) “High” = 1-2 deg. horizontal grid spacing (5 models)
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Uncoupled models too 12 CMIP3 AGCMs run in AMIP mode
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Uncoupled models too 12 AGCMs run in AMIP mode (CMIP3 Archive)
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Tropical variability also poorly simulated Lin et al. (2004)
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Focus of this talk Mean climate and variability of 3 “next- generation” climate models: 1)WRF tropical channel model (36-km, 45S-45N, Kain- Fritsch, AMIP-type run: 2000-2005) 2)GFDL AM2.1 (0.5-deg, global, relaxed AS, SST = climatological ann. cycle, courtesy of G. Lau) 3)SP-CAM (2.5-deg, global, 2D CRM, AMIP-type run, courtesy of M. Khairoutdinov)
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Annual Rainfall Bias SPCAM WRF AM2.1
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Annual Rainfall Bias SPCAM WRF AM2.1
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Annual Rainfall Bias SPCAM WRF AM2.1
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Annual Rainfall Bias SPCAM WRF AM2.1
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Annual Rainfall Bias SPCAM WRF AM2.1
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Annual Rainfall Bias SPCAM WRF AM2.1
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Annual Rainfall Bias SPCAM WRF AM2.1
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Basic Question How do these mean rainfall biases (e.g., too much rain off the equator/too little rain near the equator) relate to the space-time variability of rainfall?
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Rainfall Spectra (Symmetric) TRMM WRFAM2.1 SPCAM
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Rainfall Spectra (Symmetric) TRMM WRFAM2.1 SPCAM
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Rainfall Spectra (Symmetric) TRMM WRFAM2.1 SPCAM
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Rainfall Spectra (Symmetric) TRMM WRFAM2.1 SPCAM
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Rainfall Spectra (Symmetric) TRMM WRFAM2.1 SPCAM
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Rainfall Spectra (Antisym.) TRMM WRFAM2.1 SPCAM
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Rainfall Spectra (Antisym.) TRMM WRFAM2.1 SPCAM
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Summary thus far: Kelvin waves generally too weak or non-existent; n = 0 EIG wave non- existent Westward-moving waves better represented, but generally too active, especially in a relative sense: Westward Power (PW) /Eastward Power (PE)
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Ratio of westward- to eastward- moving variance (k =1-25) SPCAM WRF AM2.1 1053.32.5
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Maps of westward- minus eastward-moving rainfall variance (k=1-25, 2-96 day) TRMMSPCAM WRF AM2.1
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Maps of westward- minus eastward-moving rainfall variance (k=1-25, 2-96 day) TRMMSPCAM WRF AM2.1
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Maps of westward- minus eastward-moving rainfall variance (k=1-25, 2-96 day) TRMMSPCAM WRF AM2.1
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Maps of westward- minus eastward-moving rainfall variance (k=1-25, 2-96 day) TRMMSPCAM WRF AM2.1
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Maps of westward- minus eastward-moving rainfall variance (k=1-25, 2-96 day) TRMMSPCAM WRF AM2.1
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Summary Results of this study indicate a linkage between biases in simulated time-mean rainfall and its variability: –Too much rain at off-eq. latitudes –Too strong coupling between convection and westward-propagating (rotational) wave disturbances
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Open questions Is the westward bias in convective wave activity a consequence or a cause of time-mean biases in rainfall? What determines the degree of coupling between convection and rotational (Rossby) vs. divergent (Kelvin, n = EIG wave modes)?
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Proposal A test case for measuring the strength of coupling between convection and rotational vs. divergent circulation anomalies Basic idea: perturb a large-domain model by imposing 3D rotational vs. divergent circulations anomalies (i.e., a step beyond SCM approaches) –Parameterized vs. explicit –Coarse vs. fine resolution
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