Turbulence-microphysics interactions in boundary layer clouds



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Turbulence-microphysics interactions in boundary layer clouds Wojciech W. Grabowski 1 with contributions from D. Jarecka 2, H. Morrison 1, H. Pawlowska 2, J.Slawinska 3, L.-P. Wang 4 A. A. Wyszogrodzki 1 1 NCAR, Boulder, Colorado, USA 2 University of Warsaw, Warsaw, Poland 3 New York University, New York, USA 4 University of Delaware, Newark, USA

Why shallow convection? 1. Because it plays a critical role in the climate system (together with St). 2. Because this is where radiative sensitivity to microphysics might be the largest 3. Because it will remain parameterized in GCMs for any foreseeable future

Brian Soden, U. of Miami

Resolving macroscopic processes associated with shallow convection requires gridlengths between 10 and 100 m (the Large Eddy Simulation approach). Since such resolutions are unlikely to be used in atmospheric GCMs any time soon, development of sophisticated parameterizations, guided by observations and modeling studies, is badly needed

Turbulence-microphysics interactions in shallow ice-free convective clouds (cumulus, stratocumulus): - Turbulent entrainment affects spectrum of cloud droplets (mean size, concentrations); relevant processes concern incloud activation, homogeneity of parameterized subgridscale mixing, etc. - Turbulence affects growth of cloud droplets and formation of drizzle/rain. Warm-rain microphysics: - double-moment scheme (Morrison and Grabowski, JAS 2007, 2008) -bin microphysics (Grabowski et al. Atoms. Res. 2011)

Double-moment warm-rain microphysics of Morrison and Grabowski (2007, 2008): - Prediction of concentrations and mass of cloud droplets and rain drops (4 variables); - Prediction of in-cloud supersaturation and thus relating the concentration of activated cloud droplets to local value of the supersaturation; additional variable (concentration of activated CCN) needed; - Allows various mixing scenarios for subgrid-scale mixing (from homogeneous to extremely inhomogeneous).

Cloud droplets Drizzle/rain drops Bin warm-rain microphysics of Grabowski et al. (2011): - Prediction of the spectral shape of cloud droplets and drizzle/rain; 112 bins - Prediction of supersaturation and thus relating the concentration of activated cloud droplets to local value of the supersaturation; additional variable (concentration of activated CCN) needed;

Gerber et al. JMSJ 2008 Arabas et al. GRL 2009 RICO (Rain in Cumulus over Ocean) field project observations

The Barbados Oceanographic and Meteorological Experiment (BOMEX) case (Holland and Rasmusson 1973) JAS 2003

How is it possible that the dilution of the cloud water content is NOT accompanied by the dilution of the droplet concentration?

How is it possible that the dilution of the cloud water content is NOT accompanied by the dilution of the droplet concentration? In-cloud activation (i.e., activation above the cloud base)!

gray cloud water; dark gray positive activation tendency Activation not allowed above 700m Activation always on Wyszogrodzki et al. ( Acta Geophysica 2012)

Conditionally-sampled activation tendency Activation not allowed above 700m Activation always on Wyszogrodzki et al. ( Acta Geophysica 2012)

Activation not allowed above 700m Activation always on Slawinska et al. (J. Atmos. Sci. 2012) Wyszogrodzki et al. (Acta Geophysica 2012) Droplet concentrations with and without in-cloud activation

Brenguier and Grabowski (JAS 1993)

Brenguier and Grabowski (JAS 1993)

traditional view view suggested by model simulations

Conclusions (for the 1 st part): Activation of cloud droplets above the cloud base is essential for realistic simulation of cloud microphysics. In simulations reported here, about 40% of cloud droplets is activated above the cloud base. Only with incloud activation, key features of observed shallow cumuli can be simulated (e.g., constant or increasing mean concentration of cloud droplets with height) Activation seems to mimic entrainment-related activation observed in higher-resolution cloud simulation.

Towards the assessment of the role of cloud turbulence in warm-rain processes W. W. Grabowski 1, A. A. Wyszogrodzki 1, L.-P. Wang 2, and O. Ayala 2 1 National Center for Atmospheric Research, Boulder, Colorado 2 University of Delaware, Newark, Delaware

Growth by collision/coalescence: nonuniform distribution of droplets in space affects droplet collisions NB: insignificant impact on growth by the diffusion of water vapor ; reversible vs irreversible growth (Grabowski and Wang; ARFM 2013).

Three basic mechanisms of turbulent enhancement of gravitational collision/coalescence: -Turbulence modifies local droplet concentration (preferential concentration effect) -Turbulence modifies relative velocity between colliding droplets (e.g., small-scale shears, fluid accelerations) - Turbulence modifies hydrodynamic interactions when two droplets approach each other

Three basic mechanisms of turbulent enhancement of gravitational collision/coalescence: -Turbulence modifies local droplet concentration (preferential concentration effect) geometric collisions (no hydrodynamic interactions) -Turbulence modifies relative velocity between colliding droplets (e.g., small-scale shears, fluid accelerations) - Turbulence modifies hydrodynamic interactions when two droplets approach each other

Three basic mechanisms of turbulent enhancement of gravitational collision/coalescence: -Turbulence modifies local droplet concentration (preferential concentration effect) -Turbulence modifies relative velocity between colliding droplets (e.g., small-scale shears, fluid accelerations) - Turbulence modifies hydrodynamic interactions when two droplets approach each other collision efficiency

Enhancement factor for the collision kernel (the ratio between turbulent and gravitation collision kernel in still air) including turbulent collision efficiency; ε = 100 and 400 cm 2 s 3.

without turbulence with turbulence, ε = 400 cm 2 s -3 01-Feb-13 25

The Barbados Oceanographic and Meteorological Experiment (BOMEX) case (Holland and Rasmusson 1973) JAS 2003

dissipation rate (cm 2 s -3 )

Rain formation depends critically on the CCN concentration, so we consider a range : 30, 60, 120, 240 mg -1

Before considering LES of a cloud field, lets consider a simple (2D, idealized) single cloud simulation: a bubble (thermal) rising in a stratified environment using the same EULAG bin model For reasons that will become obvious in the discussion, lets consider two cases: - 2-layer system: bubble s rise is stopped by an inversion; - 1-layer system: bubble can rise unobstructed towards the upper boundary. Compare simulations with a gravitation collection kernel and with a turbulent kernel assuming ε = 100 cm 2 s -3.

Rising bubble simulation with an inversion at 2.5 km (2 layers) ε = 100 cm 2 s -3 ε = 0 Rising bubble simulation without an inversion (1 layer) ε = 100 cm 2 s -3 ε = 0

Rising bubble simulation with an inversion at 2.5 km (2 layers) ε = 100 cm 2 s -3 ε = 0 Microphysical enhancement ~40% Rising bubble simulation without an inversion (1 layer) ε = 100 cm 2 s -3 ε = 0 Dynamical enhancement ~100%

Domain-averaged cloud water mixing ratio 30 60 120 240 Gravitational kernel Turbulent kernel

Domain-averaged rain water mixing ratio 30 60 120 240 Gravitational kernel Turbulent kernel

Cloud water Rain water

Domain-averaged liquid water path (LWP, cloud water only) and rain water path (RWP) 30 60 120 240

Domain-averaged liquid water path(lwp, cloud water only) and rain water path (RWP) 30 60 Microphysical + dynamical enhancement 120 240 Microphysical enhancement

Surface rain accumulation from cloud field: Gravitational kernel Turbulent kernel

Seifert et al. QJRMS 2010 (double-moment microphysics)

Seifert et al. QJRMS 2010 (double-moment microphysics)

Summary (for the 2 nd part): Small-scale turbulence appears has a significant effect on collisional growth of cloud droplets and delopment of warm rain in shallow cumuli. Not only rain tends to form earlier in a single cloud, but also turbulent clouds seem to rain more. This is a combination of microphysical and dynamical effects. The (perhaps surprising) magnitude of this effect calls for further observational and modeling studies to provide more support for these findings.