Impact of entrainmnet and mixing on optical properties of boundary layer clouds Wojciech W. Grabowski, Hugh Morrison, NCAR, Boulder, Colorado, USA Joanna.

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Presentation transcript:

Impact of entrainmnet and mixing on optical properties of boundary layer clouds Wojciech W. Grabowski, Hugh Morrison, NCAR, Boulder, Colorado, USA Joanna Slawinska, Dorota Jarecka, Hanna Pawlowska, Institute of Geophysics, University of Warsaw, Poland

Shallow convective clouds are strongly diluted by entrainment… Siebesma et al. JAS 2003

…but the effects of entrainment and mixing on the spectrum of cloud droplets is far from being understood (the homogeneous versus inhomogeneous mixing). The assumptions concerning homogeneity of mixing has been shown to have a significant impact on the 1 st indirect effect (the Twomey effect). Chosson et al JAS 2007; Grabowski JClimate 2006; Slawinska et al. JClimate 2008.

Observations… In-situ data from one flight during RICO (Arabas et al. GRL in review) Remotely sensed data from ARM Tropical Western Pacific Nauru site (McFarlane and Grabowski, GRL 2007)

Microphysical transformations during sub-grid mixing with 2-moment bulk microphysics Flexibility to treat any mixing scenario from homogeneous to extremely inhomogeneous.  = 1: extremely inhomogeneous  = 0: homogeneous N – droplet concentration q – cloud water mixing ratio N i, q i – initial (i.e., after mixing) N f, q f – final (i.e., after mixing and microphysical adjustment) Morrison and Grabowski 2008

JAS 2003

BOMEX two-moment scheme homogeneous mixing intermediate mixing extremely inhomogeneous mixing

Evolution of the number of droplets N and their mean volume radius r v, both normalized by the initial values DNS simulations of microscale homogenization of initially separate filaments of cloudy and cloud-free air. The percentage represents the initial volume fraction of cloudy air. Andrejczuk et al JAS 2006

homogeneousextremely inhomogeneous Andrejczuk, et al. (JAS, accepted)

DNS simulation of cloud-clear air interfacial mixing (decaying turbulence setup; Andrejczuk et al. JAS 2006) α ~ 1 Evolution of spatial scale λ of the filaments of a passive scalar during turbulent mixing (Broadwell and Breidenthal 1982):

Grabowski JAS 2007 Jarecka et al., JAS, (accepted)

Application of the λ equation into LES model: Outside cloud: λ=0 Inside homogeneous cloud: λ=Λ S λ ensures transitions between cloud-free to cloudy (initial condensation) or between inhomogeneous to homogeneous cloudy volume (see Grabowski 2007 for details).

Need to predict the fraction of gridbox covered by cloud, the sub-grid cloud fraction, β… Jarecka et al., JAS (accepted)

Vertical velocity versus Adiabatic Fraction (AF) – comparison of models λ-β λ-β bulk 0 – 300 m 300 – 600 m 600 – 900 m 900 – 1200 m

Vertical velocity versus Adiabatic Fraction (AF) – comparison with RICO experiment λ-β λ-β bulk RICO experiment

Conclusions: Representation of microphysical transformations due to entrainment and mixing (essentially, homogeneous versus inhomogeneous mixing) has significant impact on the evaluation of the 1 st indirect effect (the Twomey effect) in shallow convective clouds. Aircraft observations and ground-based remote sensing suggest a complicated (and to some extent inconsistent) picture of the entrainment-related microphysical processes in these clouds. A new approach is being developed to represent locally homogeneity of mixing (i.e., the parameter α in Morrison and Grabowski 2008 double moment scheme) based on the predicted scale of subgrid-scale filaments λ, mean droplet size, grid-averaged relative humidity, and TKE.