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Robin Hogan

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PDFs of humidity and cloud water content from Raman lidar and cloud radar Robin Hogan Ewan O Connor Anthony Illingworth Department of Meteorology, University of ... – PowerPoint PPT presentation

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Title: Robin Hogan


1
PDFs of humidity and cloud water content from
Raman lidar and cloud radar
  • Robin Hogan
  • Ewan OConnor
  • Anthony Illingworth
  • Department of Meteorology, University of Reading
    UK

2
Sub-gridscale structure in GCMs
  • Small-scale structure in GCMs can have large
    scale effects
  • Sub-grid humidity distribution used to determine
    cloud fraction (e.g. in UM)
  • Sub-grid cloud water distribution affects mean
    fluxes (crudely represented in ECMWF, not in UM)
  • We use radar and lidar to make high-resolution
    measurements of water vapour and cloud content
  • Raman lidar provides water vapour mixing ratio
    from ratio of the water vapour and nitrogen Raman
    returns
  • Empirical relationships provide ice water content
    from radar reflectivity
  • Liquid clouds are more tricky!

Chilbolton Raman lidar
Chilbolton cloud radar
3
Mixing ratio comparison 11 Nov 2001
Raman lidar Unified Model, Mesoscale version
Cloud
4
Small-scale humidity structure
  • Correlation between adjacent range gates shows
    that small-scale structure is not random noise
  • Typical horizontal cell size around 500m

Mixing ratio at 720m 6m
500m
Wind speed 6 m/s
5
PDF comparison
12 UTC
15 UTC
1.6 km
  • Agreement is mixed between lidar and model
  • Good agreement at low levels
  • Some bimodal PDFs in the vicinity of vertical
    gradients
  • Further analysis required
  • More systematic study
  • Partially cloudy cases with PDF of liquidvapour
    content

Larkhill sonde
0.8 km
Smith (1990) triangular PDF scheme
0.2 km
6
Ice cloud inhomogeneity
  • Most models assume cloud is horizontally uniform
  • Non-uniform clouds have lower emissivity albedo
    for same mean ? due to curvature in the
    relationships

SHORTWAVE albedo versus visible optical depth
Pomroy and Illingworth (GRL 2000)
LONGWAVE emissivity versus IR optical depth
Carlin et al. (JClim 2002)
7
Ice cloud inhomogeneity
  • Cloud infrared properties depend on emissivity
  • Most models assume cloud is horizontally uniform
  • In analogy to Sc albedo, the emissivity of
    non-uniform clouds is less than for uniform clouds

Pomroy and Illingworth (GRL 2000)
8
Fractional variance
  • We quantify the horizontal inhomogeneity of ice
    water content (IWC) and ice extinction
    coefficient (?) using the fractional variance
  • Barker et al. (1996) used a gamma distribution to
    represent the PDF of stratocumulus optical depth
  • Their width parameter ? is actually the
    reciprocal of the fractional variance for p(?)
    we have ? 1/f? .

9
Deriving extinction IWC from radar
Use ice size spectra measured by the
Met-Office C-130 aircraft during EUCREX to
calculate cloud and radar parameters ?
0.00342 Z0.558 IWC 0.155 Z0.693
  • Regression in log-log space provides best
    estimate of log? from a measurement of logZ (or
    dBZ)

10
For inhomogeneity use the SD line
  • The standard deviation line has slope of
    ?log?/?logZ
  • We calculate SD line for each horizontal aircraft
    run
  • Mean expression ? 0.00691 Z0.841 (note exponent)
  • Spread of slopes indicates error in retrieved f?
    fIWC

11
Cirrus fallstreaks and wind shear
Unified Model
Low shear High shear
12
Vertical decorrelation effect of shear
  • Low shear region (above 6.9 km) for 50 km boxes
  • decorrelation length 0.69 km
  • IWC frac. variance fIWC 0.29
  • High shear region (below 6.9 km) for 50 km boxes
  • decorrelation length 0.35 km
  • IWC frac. variance fIWC 0.10

13
Ice water content distributions
Near cloud base
Cloud interior
Near cloud top
  • PDFs of IWC within a model gridbox can often, but
    not always, be fitted by a lognormal or gamma
    distribution
  • Fractional variance tends to be higher near cloud
    boundaries

14
Vertical decorrelation
  • Variance at each level not enough, need vertical
    decorrelation/overlap info
  • Only radar can provide this information aircraft
    insufficient
  • Decorrelation length is a function of wind shear
  • Around 700m near cloud top
  • Drops to 350m in fall streaks

15
Results from 18 months of radar data
Fractional variance of IWC
Vertical decorrelation length
Increasing shear
  • Variance and decorrelation increase with gridbox
    size
  • Shear makes overlap of inhomogeneities more
    random, thereby reducing the vertical
    decorrelation length
  • Shear increases mixing, reducing variance of ice
    water content
  • Can derive expressions such as log10 fIWC
    0.3log10d - 0.04s - 0.93

16
Distance from cloud boundaries
  • Can refine this further consider shear lt10
    ms-1/km
  • Variance greatest at cloud boundaries, at its
    least around a third of the distance up from
    cloud base
  • Thicker clouds tend to have lower fractional
    variance
  • Can represent this reasonably well analytically

17
Conclusions
  • We have quantified how fractional variances of
    IWC and extinction, and the vertical
    decorrelation, depend on model resolution, shear
    etc.
  • Full expressions in Hogan and Illingworth (JAS,
    March 2003)
  • Expressions work well in the mean (i.e. OK for
    climate) but the instantaneous differences in
    variance are around a factor of two
  • Raman lidar shows great potential for evaluating
    model humidity field
  • Outstanding questions
  • Our results are for midlatitudes what about
    tropical cirrus?
  • What other parameters affect inhomogeneity?
  • What observations could be used to get the high
    resolution vertical and horizontal structure of
    liquid water content?

18
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