Development of a detailed ice melting scheme within bin microphysics in a 3D cloud model: An analysis based on an idealized simulation case C. Planche.

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Development of a detailed ice melting scheme within bin microphysics in a 3D cloud model: An analysis based on an idealized simulation case C. Planche (1,2), W. Wobrock (1,2) and A. I. Flossmann (1,2) (1)Clermont Université, Université Blaise Pascal, Laboratoire de Météorologie Physique, F Clermont-Ferrand, France (2)CNRS, INSU, UMR 6016, LaMP, F Aubière, France. Bibliography Clark, T.L., W.D. Hall and J.L. Coen (1996). Source code documentation for the Clark-Hall cloud-scale model. Code version G3CH01. NCAR/TN-426+STR, NCAR Technical note, Boulder, CO. Flossmann, A.I., and W. Wobrock (2010). A review of our understanding of the aerosol cloud interaction from the perspective of a bin resolved cloud scale modelling. Atmos. Res., 97, 478–497 Mason, B.J. (1956). On the melting of hailstones. Quart. J. Roy. Meteor. Soc., 82, Rasmussen, R., and H.R. Pruppacher (1982). A wind tunnel and theoretical study of the melting behavior of atmospheric ice particles. Part I: A wind tunnel study of frozen drops of radius < 500µm. J. Atmos. Sci., 39, Zängl, G., A. Seifert and W. Wobrock (2010). Modeling stable orographic precipitation at small scales: The impact of the autoconversion scheme. Meteor. Zeit., 19, Laboratoire de Météorologie Physique, IUGG 2011 Detailed scheme DESCAM (Detailed scavenging model, Flossmann and Wobrock, 2010) coupled with the 3D meso-scale dynamical model (Clark et al., 1996) Warm microphysical processes : aerosol particle growth and activation, droplet de- activation, growth of drops by condensation and collision-coalescence, break up. Cold microphysical processes : homogeneous and heterogeneous nucleation, growth by vapor deposition, riming. New microphysical processes : aggregation, continuous melting and collision between droplets and melting hydrometeors. f d : drop number f i : ice crystal number f AP : wet aerosol particle number g AP,d : aerosol mass inside drops g AP,i : aerosol mass inside ice crystals g wir : water ice mass ratio of ice crystals Objective : Improve the ice particles representation to facilitate interpretation of the radar observations and to better describe the ice influence in the accumulate precipitation on the ground in the future. Development of the melting parameterization based on the theory of Mason (1956) and the observations of Rasmussen and Pruppacher (1982) Assumptions: 1- the overall radius b of the melting particle remains constant 2- the melting ice particle is spherical and remains so at all times 3- the ice core remains spherical and concentric with the outer boundary of the melting particle at all times 4- internal circulation in the melt water thin layer is not important Critical conditions at which an ice sphere does/does not melt Parameterization: with: dm i /dt: melting rate (g s -1 ) e ice : ice mass in crystal (g) RH: relative humidity of the air a(T),b(T): polynomial functions depending on the temperature 1- The melting rate is mainly function of T and RH (confirming the result of Rasmussen and Heymsfield,1987) 2- Various tests on the influence of T and RH have been performed and showed that the parameterized melting times are in average only 10% greater than in Rasmussen and Pruppacher (1982). Parameterization: Based on the experiment of Rasmussen and Pruppacher (1982) The parameterized critical conditions are the same than the observations. Set-up of the idealized case study - Domain : 150 × 73 × 20 km 3 dx = dy = 750 m variable dz winter sounding of Zängl et al. (2010) idealized topography : bell-shape mountain and continuous slope. Simulation results Acknowledgement : C. Planche thanks IAMAS and Auvergne Regional assemblies and the doctoral school of the Blaise Pascal university for the research grunts to attend the IUGG conference. The calculations for this study have been done on computer facilities of IDRIS, CNRS at Orsay and CINES in Montpellier, under the project The authors acknowledge with gratitude the hours of computer time and the support provided. Conclusions - Objective : formation of ice phase stratiform situation to observe the melting layer. ice phase exists in area with positive temperatures the melting layer has a depth of ≈ 250 m the 0°C altitude level falls where the melting process is more effective in both cases, precipitation is caused mainly by melting, while the structure of rainwater content is quite different between them, because melting occurs over a layer of finite depth below the freezing level in the detailed scheme as in the real atmosphere. a detailed melting scheme was introduced in the DESCAM 3D model the melting process slightly influences the structure of the rainwater content the latent heat consumes in the melting process cools the local environment and slightly modify the vertical motions the study of the melting layer will able to examine the evolution of the radar bright band observations will understand the complex microphysical interactions in the bright band altitudes Radar bright band mixed hydrometeors like drops reproduction of the radar bright band ρ = 0.9g cm -3 ρ = 0.7g cm -3 ρ = 0.5g cm -3 Vertical profil at 150 min variation of the ice density  intensity of the bright band next step : Study the influence of the mixed hydrometeors and evolution of the radar bright band in a study case.