Group interests RICO data required

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Group interests RICO data in support of studies
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Group interests RICO data required RICO Modeling Studies Group interests RICO data required

Group Activities Microphysical processes on cloud scale (giant aerosol particles, entrainment and mixing-- influence on droplet size distributions and precipitation formation) U. of Illinois U. of Utah NOAA Purdue U. Statistics of cloud ensembles & obs to constrain LES of cloud fields UCLA Obs to constrain regional-scale parameterizations of shallow clouds and interaction with ambient aerosol CSU

RICO Data Needed: Characterizing the Environment Daily (or more frequent) soundings Rawinsonde data incorporated into GTS for inclusion in NWP analyses & forecasts Daily horizontal and vertical mapping of aerosol, CCN, and giant/ultragiant aerosol Temporal evolution of sfc fluxes & state variables at sfc and beneath cloud base State variables at cloud heights but outside cloud, and above cloud Profiles of trace gases and aerosol upshear and downshear of clouds Integrated total water from ship radiometer Detailed measurements of aerosol and winds beneath cloud bases from ship Doppler lidar

RICO Data Needed: Characterizing the Environment Within ship-centered control volumes estimates of surface fluxes and temperature radiative fluxes at the top and bottom of the control volume, i.e., at the surface and at some level some hundreds of meters above the highest clouds profiles of the thermodynamic quantities and horizontal winds through the depth of the boundary layer, extending perhaps to 1km above the highest clouds for the purposes of radiative calculations. turbulent fluxes of heat, moisture and momentum in the sub-cloud layer cloud and environmental statistics at several levels within the cloud layer interface statistics indicating the height and variability of the trade inversion and the transition layer often observed at cloud base.

RICO Data Needed: Characterizing the Clouds Accumulation mode aerosol,CCN, giant/ultragiant aerosol beneath cloud bases Aircraft documentation of cloud base height and thermodynamic properties Radar coverage of cloud properties: cloud top heights and widths, echo evolution from initial stages through precipitation formation Multilevel, in-situ characterization of: Cloud lwc Drop size distributions Temperature Water vapor Winds Dissipation rate of tke

RICO Data Needed: Characterizing the Clouds Raindrop size distributions and rainrate estimates Liquid water paths from ship-based microwave radiometer High-res mapping of in-cloud velocities at different levels in cloud with Wyoming cloud radar