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Uncertainties in Water vapor:Uncertainties in Water vapor:Budgets in two versions of CAM(Track 1 and Track 5)( )

C OCécile Hannay, Dave Williamson, Jerry Olson, Rich Neale, Sungsu Park, Phil Rasch*,

Andrew Gettelman and Hugh Morrisson.

National Center for Atmospheric Research, Boulder*Pacific Northwest National Laboratory, Richland

Climate Feedback workshop, Keck Inst

What are Track 1 and Track 5 ?

• Track 1 = cam3.5.1- Deep convection: Neale-Richter (2008)

- Microphysics: Rasch-Kristjansson (1998)

- Boundary layer: Holtslag-Boville (1993)

- Shallow convection: Hack (1993)

- Bulk Aerosol Model (BAM, Barth, Rasch, Mahowald … 2000-2009)

- Radiation: CAMRT (Ramanathan, Kiehl, Collins,…1970s-2006)

T k 5 4• Track 5 = cam4- Deep convection: Neale-Ritcher (2008)

- Microphysics: Morrison and Gettelman (2008)p y ( )

- Boundary layer: Bretherton and Park (2009)

- Shallow convection: Park and Bretherton (2009)

M h i P k R h B th t (2009)-Macrophysics: Park, Rasch, Bretherton (2009)

- Modal Aerosol Model (MAM): Ghan and Liu

- Radiation: RRTMG: Iacono et al (2008)

Water vapor biases

Clear Sky OLR

Model values too lowModel values too lowPartly explained by

Emissions above top of modelmodelDifferences in Sampling methodology btw models and CERESToo much water vapor

Motivation

• Analysis of the budget for temperature, moisture and condensate

• Climate runs:- understand the balance that controls the climate

• Forecast runs:- understand how we attain this balance

Water vapor budget

∂q∂t

= −V •∇q −ω∂q∂p

+ Qphysics

Physics tendencies

∂t ∂pAdvective tendencies

Qpbl + Qdeep convection+ Qshallow convection + Qmacro+micro

Convective mass flux

Shallow convection Evap & Prod of Evaporationflux

Evaporation convective

precipitation

convection tendency

Evaporation

Evap & Prod of condensate

Evaporation falling

precipitation

Evaporation ofprecipitationconvective

precipitationEvaporation of

sedimenting cloud water

Global annual means: q profiles and tendencies

Moisture tendenciesMoisture profile

− Total− Advection− Physics

Track 1 = plainTrack 5 = dash− ERA40

− JRA25− Track 1 Track 1− Track 5

MoisteningDrying

Global annual mean: physics tendencies break-up

Track 1 Track 5Drying of upper troposphere- by Hack in Track 1- by microphysics in Track 5

− PBL− Micro+Macro− Deep− Shallow

In Track 1: MoisteningMoistening by deep convection around 500 mb

Shallow convection is stronger in Track 5

Budget terms in various regimes

•Stratocumulus•Transition•ITCZITCZ•Bay of Bengal•Storm Tracks•Arctic•Continental US•Tropical land

http // cgd car ed /cms/hanna /internal/cam4 de /b dgets/t1 t5/B dget t1 t5 htmlhttp // cgd car ed /cms/hanna /internal/cam4 de /b dgets/t1 t5/B dget t1 t5 htmlhttp://www.cgd.ucar.edu/cms/hannay/internal/cam4_dev/budgets/t1_t5/Budget_t1_t5.htmlhttp://www.cgd.ucar.edu/cms/hannay/internal/cam4_dev/budgets/t1_t5/Budget_t1_t5.html

Stratocumulus

Track 1 Track 5

− PBL− Micro+Macro− Deep

Shallow− Shallow

Shallow convection is stronger in Track 1

PBL moves moisture higher in the atmosphere

Transition region

Track 1 Track 5

− PBL− Micro+Macro− Deep

Shallow− Shallow

Shallow convection is stronger in Track 5Deep convection is

stronger in Track 1

Conclusion and future work

• Budgets help to understand the balance that controls the climate

• Water vapor tendencies are very different in Track 1 and 5• Water vapor tendencies are very different in Track 1 and 5, even when the states in the two tracks are similar.

A major difference is in the shallow convective tendencies, j ,which are globally stronger in Track 5 than Track 1

The drying of the upper troposphere is driven by different processes:- Track1: Hack convection scheme (unrealistic)- Track5: macro+micro (reflects new ice microphysics)

In the stratocumulus regions, there is an unrealistically large contribution from the shallow convection scheme in Track 1

Future work

Next , we will look at :the temperature, liquid and ice budgets forecast runs (CAPT framework):

understand how we attain this balanceallows direct comparison of the parameterized variables (e.g. p p ( gclouds) with observations from field campaigns

How do we use observations to help us understand the balances in the real world for these regimes, and achieve g ,similar balance in models?•