2010
DOI: 10.1029/2010jd014532
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Dreary state of precipitation in global models

Abstract: [1] New, definitive measures of precipitation frequency provided by CloudSat are used to assess the realism of global model precipitation. The character of liquid precipitation (defined as a combination of accumulation, frequency, and intensity) over the global oceans is significantly different from the character of liquid precipitation produced by global weather and climate models. Five different models are used in this comparison representing state-of-the-art weather prediction models, state-of-the-art clima… Show more

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Cited by 603 publications
(579 citation statements)
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References 46 publications
(73 reference statements)
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“…The overestimate of reflectivity in the lower troposphere across all latitudes, but most prominent at lower latitudes, suggests too frequent occurrence of rain, leading to reflectivities that are much too high compared with the equivalent reflectivity for non-precipitating cloud (as seen in Figure 12). This is consistent with other studies that show many GCMs, including the IFS, tend to overestimate the occurrence of light rain (Stephens et al, 2010). There is also an issue in representing the PSD for light rain shown by the rain PSD sensitivity experiment in Figure 11, where the reflectivity bias was reduced at low altitudes when a modified PSD more appropriate for light rain was used.…”
Section: Discussionsupporting
confidence: 75%
“…The overestimate of reflectivity in the lower troposphere across all latitudes, but most prominent at lower latitudes, suggests too frequent occurrence of rain, leading to reflectivities that are much too high compared with the equivalent reflectivity for non-precipitating cloud (as seen in Figure 12). This is consistent with other studies that show many GCMs, including the IFS, tend to overestimate the occurrence of light rain (Stephens et al, 2010). There is also an issue in representing the PSD for light rain shown by the rain PSD sensitivity experiment in Figure 11, where the reflectivity bias was reduced at low altitudes when a modified PSD more appropriate for light rain was used.…”
Section: Discussionsupporting
confidence: 75%
“…The shape of the diurnal cycle is a more-regular sinusoid over sea points for all models and, to a lesser extent, for TRMM as well. The fact that the parametrized and explicit convection models become slightly closer to each other in terms of mean precipitation when land points are excluded agrees with the findings in Stephens et al (2010).…”
Section: Mean Precipitationsupporting
confidence: 80%
“…Probability densities are much higher at high rain rates for the 4 km model runs and TRMM, while below about 1 mm h −1 the 12 km param model probability densities are much higher than those of the observations and other models. The fact that the 12 km param model has far too much light rain agrees with many earlier analyses of weather and climate models using convective parametrizations (Dai and Trenberth, 2004;Sun et al, 2006;Wilcox and Donner, 2007;Stephens et al, 2010).…”
Section: Precipitation Distributionssupporting
confidence: 69%
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“…Even light rain and drizzle make significant contributions to global precipitation at the surface (Haynes et al, 2009;Berg et al, 2010;Behrangi et al, 2012), while the vertical profile of precipitation can be used to estimate the transfer of latent heat (Nelson et al, 2016) and microphysical processes . The intensity and drop size distribution (DSD) of rain are subject to persistent errors in weather and climate models, which frequently produce excess drizzle from shallow maritime clouds (Stephens et al, 2010;Abel and Boutle, 2012). Improved instrumentation and retrieval algorithms for the satellite remote sensing of rain are therefore priorities for earth observation, model evaluation, and an understanding of cloud and precipitation processes.…”
Section: Introductionmentioning
confidence: 99%