Robin Hogan - PowerPoint PPT Presentation

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Robin Hogan

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Clouds processes and climate Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Ewan O Connor Kevin Pearson – PowerPoint PPT presentation

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Title: Robin Hogan


1
Clouds processes and climate
  • Robin Hogan
  • Anthony Illingworth
  • Andrew Barrett
  • Nicky Chalmers
  • Julien Delanoe
  • Lee Hawkness-Smith

Ewan OConnor Kevin Pearson Nicola Pounder Jon
Shonk Thorwald Stein Chris Westbrook
2
Cloud feedbacks
IPCC (2007)
  • Main uncertainty in climate prediction arises due
    to the different cloud feedbacks in models
  • Very difficult to resolve is NERC funding any
    research on this precise problem at the moment?
  • Starting point is to get the right cloud
    radiative forcing in the current climate...

3
Overview
  • Radiative transfer and clouds
  • Cloud inhomogeneity, overlap and 3D radiation
    (Shonk, Hogan)
  • Evaluating and improving clouds in models
  • Cloud microphysics (Westbrook, Illingworth)
  • Evaluation of simulated clouds from space
    (Delanoe, Pounder)
  • Single column models (Barrett, OConnor)
  • Challenges
  • Clouds feedbacks associated with specific cloud
    types
  • Analogues for global warming

4
Cloud structure and radiation
Current models Plane-parallel
TOA Shortwave CRF
TOA Longwave CRF
Fix only overlap
Fix only inhomogeneity
New Tripleclouds scheme fix both!
  • What is radiative effect of cloud structure?
  • Fast method for GCMs (Shonk Hogan 2008)
  • Global effects (Shonk Hogan 2009)
  • Interaction in climate model (nearly completed)

5
Evaluating models from space
AMIP massive spread in model water content
  • Global evaluation of ice water content in models
  • Variational CloudSat-Calipso retrieval (Delanoe
    Hogan 2008/9)
  • ESANERC funding for EarthCARE preparation
  • Devleopment of unified cloud, aerosol and
    precipitation from radar, lidar and radiometer
    (Hogan, Delanoe Pounder)

6
Ice cloud microphysics
Wilson Ballard
Fix density and size distribution
Fix ice density
Radar reflectivity (dBZ)
Unified Model
Doppler velocity (m s-1)
  • Ice fall-speed controls how much cirrus present
  • Radar obs reveal factor-of-two error in current
    Unified Model
  • New theories for fall speed of small ice
    (Westbrook 2008) and large ice (Heymsfield
    Westbrook 2010)
  • Ice capacitance controls growth rate by
    deposition
  • Spherical assumption used by all current models
    overestimates growth rate by almost a factor of
    two (Westbrook et al 2008)
  • Ongoing work in APPRAISE-CLOUDS...

7
NWP and SCM testbeds
  • Cloudnet project
  • NWP model evaluation from ground-
  • based radar lidar revealed various
  • problems in clouds of seven models
  • (Illingworth et al, BAMS 2007)
  • US Dept of Energy FASTER project (2009-2014)
  • We are implementing Cloudnet processing at ARM
    sites
  • Rapid testing of new cloud parameterizations run
    many single-column models for many years with
    different physics
  • Barrett PhD similar approach to target
    mixed-phase clouds

8
Key cloud feedbacks
  • Should we target the feedback problem directly?
  • Boundary-layer clouds
  • Many studies show these to be most sensitive for
    climate
  • Not just stratocumulus cumulus actually cover
    larger area
  • Properties annoyingly dependent on both
    large-scale divergence and small-scale details
    (entrainment, drizzle etc)
  • Mid-level and supercooled clouds
  • Potentially important negative feedback (Mitchell
    et al. 1989) but their occurrence is
    underestimated in nearly all models
  • Mid-latitude cyclones
  • Expect pole-ward movement of storm-track but even
    the sign of the associated radiative effect is
    uncertain (IPCC 2007)
  • Deep convection and cirrus
  • climateprediction.net showed that convective
    detrainment is a key uncertainty lower values
    lead to more moisture transport and a greater
    water vapour feedback (Sanderson et al. 2007)
  • But some ensemble members unphysical (Rodwell
    Palmer 07)

9
Analogues for global warming
Models with most positive cloud feedback under
climate change
  • A model that predicts cloud feedbacks should also
    predict their dependence with other cycles, e.g.
    tropical regimes
  • Tropical boundary-layer clouds in suppressed
    conditions cause greatest difference in cloud
    feedback
  • IPCC models with a positive cloud feedback best
    match observed change to BL clouds with increased
    T (Bony Dufresne 2005)
  • Apply to other cycles (seasonal, diurnal, ENSO
    phase)?
  • Can we use such analysis to find out why BL
    clouds better represented?
  • Novel compositing methods?
  • Can we throw out bad models?

Observations
Other models
Convective
Suppressed
Bony and Dufresne (2005)
10
Summary and some challenges
  • Summary
  • Complex cloud fields starting to be represented
    for radiation
  • Much work required to exploit new satellite
    observations
  • Large errors in cloud microphysics still being
    found in GCMs
  • SCM-testbed promising to develop new cloud
    parameterizations
  • Challenges
  • Observational constraints on aerosol-cloud
    interaction
  • How can we improve convection parameterization
    based on high-resolution simulations and new
    observations?
  • Observational constraint on water vapour
    detrained from convection, e.g. combination of
    AIRS and CloudSat?
  • Is there any hope of getting a reliable long-term
    cloud signal from historic datasets (e.g.
    satellites)?
  • How do we get cloud feedback due to storm-track
    movement?
  • Coupling of clouds to surface changes, e.g. in
    the Arctic?
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