Transcript
Page 1: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

Robin HoganRobin Hogan

Anthony IllingworthAnthony Illingworth

Andrew BarrettAndrew Barrett

Nicky Chalmers Nicky Chalmers

Julien DelanoeJulien Delanoe

Lee Hawkness-Smith Lee Hawkness-Smith

Clouds processes Clouds processes and climateand climate

Ewan O’Connor Ewan O’Connor

Kevin PearsonKevin Pearson

Nicola PounderNicola Pounder

Jon ShonkJon Shonk

Thorwald SteinThorwald Stein

Chris WestbrookChris Westbrook

Page 2: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

Cloud feedbacks

• 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...

IPCC (2007)

Page 3: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

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, O’Connor)

• Challenges– Clouds feedbacks associated with specific cloud types– “Analogues” for global warming

Page 4: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

Cloud structure and radiationTOA Shortwave CRF TOA Longwave CRF

Current models:Plane-parallel

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)

• 3D radiative effects– Global effects to be calculated

using a new fast method in a current NERC project

Page 5: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

Evaluating models from

spaceAMIP: massive spread in model water content

90N 80 60 40 20 0 -20 -40 -60 -8090S

0.05

0.10

0.15

0.20

0.25

Latitude

Ver

tical

ly in

tegr

ated

cl

oud

wat

er (

kg m

-2)

• Global evaluation of ice water content in models– Variational CloudSat-Calipso retrieval (Delanoe & Hogan 2008/9)

• ESA+NERC funding for EarthCARE preparation– Devleopment of “unified” cloud, aerosol and precipitation from

radar, lidar and radiometer (Hogan, Delanoe & Pounder)

Page 6: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

Ice cloud microphysics

• 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”...

Rad

ar re

flect

ivity

(dB

Z)

Doppler velocity (m s-1)

Wilson & Ballard Fix ice density Fix density and size distribution

UnifiedModel

Page 7: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

NWP and SCM testbeds• Cloudnet project

– NWP model evaluation from ground-based radar & lidar revealed variousproblems 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

Page 8: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

Key cloud feedbacksShould 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)

Page 9: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

“Analogues” for global warming

• 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?

Convective Suppressed

Bony and Dufresne (2005)

Models with most positive cloud

feedback under climate change

Other models

Observations

Page 10: Robin Hogan Anthony Illingworth Andrew Barrett Nicky Chalmers Julien Delanoe Lee Hawkness-Smith Clouds processes and climate Ewan OConnor Kevin Pearson

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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