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Title: Mission Impossible: Episode


1
Mission Impossible Episode23, Snowing when it
shouldnt
Douglas Miller UNC Asheville
2
Collaborators
  • L. Baker Perry, Appalachian State University,
  • Sandra Yuter, North Carolina State University,
  • Laurence Lee, NOAA/NWS, Greer, SC,
  • Stephen Keighton, NOAA/NWS, Blacksburg, VA
  • David Hotz, NOAA/NWS, Morristown, TN

3
Many students
4
Outline
  • Butterflies and snow
  • On the large (synoptic-) scale
  • On the medium (meso-) scale
  • On the micro-scale
  • What chance have we?

5
Butterflies and snow
  • Lorenz chaos theory

6
Butterflies and snow
BACKGROUND
  • An accidental discovery...and a coffee cup is
    involved
  • Ran a simple computer weather model, got a
    forecast
  • Re-ran portion of integration
  • Coffee break
  • New forecast was completely different from the
    original forecast

Edward Lorenz
http//en.wikipedia.org/wiki/Edward_Lorenz
Initial round-off errors were the culprit
http//www.exploratorium.edu/complexity/CompLexico
n/lorenz.html
TRY THIS? http//www.exploratorium.edu/complexity/
java/lorenz.html
7
Butterflies and snow
BACKGROUND
  • Read Ray Bradburys A Sound of Thunder for the
    first mention of the butterfly effect

HERE? http//www.sba.muohio.edu/snavely/415/thunde
r.htm
http//www.vision.caltech.edu/feifeili/101_ObjectC
ategories/butterfly/
http//en.wikipedia.org/wiki/ImageRaybradbury.gif
8
Butterflies and snow
  • Fundamental theorem of predictability as a
    result
  • Even if the computer weather forecast model is
    perfect, and even if the initial conditions are
    known almost perfectly, the atmosphere has a
    finite limit of predictability

http//wwwt.emc.ncep.noaa.gov/mmb/mmbpll/mmbverif/
9
Butterflies and snow
  • Fundamental theorem of predictability
    implications
  • Small errors in the coarser (resolvable)
    structure of the weather pattern tend to double
    in about 2-3 days

http//www.nws.noaa.gov/im/pub/wrta8604.pdf
10
Butterflies and snow
  • Fundamental theorem of predictability
    implications
  • Small errors in the coarser structure
  • Every time we cut obs error in half, we extend
    the range of acceptable prediction by three days
  • Could make good forecasts several weeks in advance

http//www.nws.noaa.gov/im/pub/wrta8604.pdf
11
Butterflies and snow
  • Fundamental theorem of predictability
    implications
  • Small errors in the finer (unresolvable)
    structure of the weather pattern tend to double
    in hours or less

Ahrens (2005)
12
Butterflies and snow
  • Fundamental theorem of predictability
    implications
  • Errors in the finer structure of the weather
    pattern tend to produce errors in the coarser
    structure
  • This appreciable error in the coarse structure
    will grow and inhibit extended range forecasting

Ahrens (2005)
13
Butterflies and snow
  • Fundamental theorem of predictability
    implications
  • Errors in the finer structure of the weather
    pattern tend to produce errors in the coarser
    structure
  • Cutting obs error of fine structure in half would
    extend coarse structure forecasts only by hours
    or less

Ahrens (2005)
hopes for predicting two weeks or more in advance
are greatly diminished.
14
On the large (synoptic-) scale
  • Snowing when it shouldnt

15
On the large (synoptic-) scale
http//ww2010.atmos.uiuc.edu/guides/mtr/cyc/gifs/s
at1.gif
http//www.atmos.umd.edu/meto200/4_3_03_lecture_f
iles/v3_slide0044_image025.jpg
16
On the large (synoptic-) scale
  • Cloud structure of Fronts
  • Norwegian school (Bjerknes and Solberg 1922)

17
On the large (synoptic-) scale
  • Cold Season precipitation amount
  • Snow ingredients
  • Cold air
  • Moisture
  • Lift

http//blogs.trb.com/news/weather/weblog/wgnweathe
r/weather_snap_shots/full/
18
On the large (synoptic-) scale
  • Northwest Flow Snowfall (NWFS)
  • Snow
  • Cold air
  • Moisture
  • Lift

1500 UTC 9 Jan 2007
http//www.erh.noaa.gov/gsp/localdat/cases/9-10Jan
2007NWFS/9-10Jan2007NWFS.html
19
On the large (synoptic-) scale
  • NWFS
  • Snow
  • Cold air
  • Moisture
  • Lift

0000 UTC 10 Jan 2007
http//www.erh.noaa.gov/gsp/localdat/cases/9-10Jan
2007NWFS/9-10Jan2007NWFS.html
20
On the large (synoptic-) scale
  • NWFS
  • Snow
  • Cold air
  • Moisture
  • Lift

1600 UTC 10 Jan 2007
http//www.erh.noaa.gov/gsp/localdat/cases/9-10Jan
2007NWFS/9-10Jan2007NWFS.html
21
On the medium (meso-) scale
  • Mountains and convection

22
On the medium (meso-) scale
Localized nature of NWFS accumulations
http//www.erh.noaa.gov/gsp/localdat/cases/27Feb20
08NWFS/26-28_february_2008.gif
23
On the medium (meso-) scale
24
On the medium (meso-) scale
Portable meteorological station near the crest of
Poga Mountain at 1137 m.
25
On the medium (meso-) scale
Pluvio weighing precipitation gauge, Parsivel
disdrometer, and vertically-pointing Micro Rain
Radar (L to R) at 1018 m.
26
Snow streak
Knoxville
Mt. Mitchell
Asheville
Jan. 3, 2008 1145 EST
Courtesy Grant Goodge
27
Mt. Mitchell
Asheville
Jan. 2, 2008 1330 EST
Courtesy Grant Goodge
28
On the medium (meso-) scale
  • Diurnal convective mode

late afternoon
early morning
Mesoscale snowbands persisting downstream of the
southern Appalachians during northwest flow
upslope events - James Hudgins - 2008, 33rd
National Weather Association Annual Meeting,
Louisville, KY.
29
On the medium (meso-) scale
Vertically-pointing radar (MRR) data for 27-28
February 2008 (Storm total 21.1 cm, 47 kg m-3).
30
On the medium (meso-) scale
very shallow moist layer
Poga Mountain sounding initiated at 1244 UTC 27
Feb 2008.
31
On the micro-scale
  • How do we make a snowflake?
  • Vertical bias

32
On the micro-scale
  • How do we make a snowflake?
  • Ice nuclei (difficult to find in nature)
  • Mixed cloud ice particles and supercooled liquid
    water

33
On the micro-scale
  • (a) Growth from the vapor phase (vapor
    deposition)
  • The difference between the saturated vapor
    pressures over water and ice is a maximum near a
    temperature of about -14oC
  • Ice crystals growing by vapor deposition in mixed
    clouds increase in mass most rapidly at
    temperatures around -14oC

34
On the micro-scale
  • The shape of vapor-to-ice ice crystals

(B. Perry)
Vapor deposition results in shapes (habits) that
are either platelike or prismlike
35
On the micro-scale
  • Preferred vapor-to-ice habits

4.23(a)
4.23(b)
4.23(c,d)
4.23(b)
36
On the micro-scale
  • (b) Growth by riming
  • Ice particles increase mass by colliding with
    supercooled droplets which then freeze onto them
    (riming)
  • When riming proceeds beyond a certain stage it
    becomes difficult to discern the original shape
    of the ice crystal rimed particle is then
    referred to as graupel

37
(B. Perry)
38
On the micro-scale
  • (c) Growth by aggregation
  • Growth in clouds caused by ice particles
    colliding and aggregating with one another
  • Mechanism works if terminal fall speeds of ice
    particles are different
  • Unrimed prismlike ice crystals have greater
    terminal fall speeds for longer crystals
  • Unrimed platelike crystals have terminal fall
    speeds that are independent of diameter
  • Collisions of ice particles in clouds are greatly
    enhanced if some riming has taken place

39
On the micro-scale
  • (c) Growth by aggregation one ice particles
    collide, will they adhere together (aggregate)?
    The answer depends on
  • Habit (shape) of ice particles
  • Dendrites tend to adhere
  • Two solid plates tend to rebound
  • The temperature of the ice particles
  • Probability of adherence increases with
    increasing temperature

40
On the micro-scale
  • (c) Growth by aggregation examples

41
On the micro-scale
  • Conclusion
  • the growth of ice crystals, first by deposition
    from the vapor phase in mixed clouds and then by
    riming and/or aggregation, can produce
    precipitation-sized particles in reasonable time
    periods ( 40 minutes)

42
On the micro-scale
  • Clouds in which growth by riming is important
  • Overseeding can eliminate supercooled droplets
    and growth by riming significantly reduced
  • In absence of riming, ice particles grow by
    deposition, fall speeds are reduced, and wind
    carries them farther across the mountain
  • Can be used to divert snowfall from windward to
    leeward slopes

43
On the micro-scale
  • Vertical bias
  • Growth by riming and aggregation is typically
    parameterized in models by assuming a
    distribution of particle sizes and terminal fall
    speeds
  • Implies the deeper the cloud, the higher the
    precipitation rate for a mixed cloud having
    heterogeneous-sized particles ? low accumulations
    in NWFS (shallow clouds)

44
On the micro-scale
  • Vertical bias
  • Recent research (Dr. Bart Geerts, Univ. of
    Wyoming) suggests an extended horizontal path for
    the ice particles in a cloud may also yield high
    precipitation rates
  • Hailstone analogy (hail diameter related to time
    spent spiraling about cloud)

45
On the micro-scale
(a)
(b)
Number of snow events by (a) wind direction and
(b) snow density.
46
On the micro-scale
(a)
(b)
Plots of (a) new snowfall density by event type
and (b) new snowfall density vs. surface
temperature.
47
On the micro-scale
48
What chance have we?
  • Computer model results

49
What chance have we?
  • Computer model results
  • Conventional Wisdom (CW)
  • If you get the large (synoptic-) scale
    prediction correct, you have a better chance of
    predicting the medium (meso-) and micro-scales
    correctly.
  • Is the CW true?

50
What chance have we?
700 am EST 27 Feb 2008
500
SLP
850
700
51
What chance have we?
700 am EST 27 Feb 2008
Composite reflectivity for NWFS event over the
TN/NC region valid 1158 UTC 27 Feb 2008.
52
What chance have we?
(a)
(b)
Poga Mountain observations of (a) average blue
and maximum pink wind speed m s-1, (b)
relative humidity , and (c) air temperature
oF over the period 0000 UTC 27 Feb - 0000 UTC
28 Feb 2008.
(c)
53
What chance have we?
  • Methodology
  • macro ensembles WRF (v2.1.1)
  • 36, 12, 4 km domains, 50 vertical levels
  • Initial conditions
  • NARR (29 lvls, 32km), NAM (38 lvls, 12km), or
    GFS (22 lvls, 1o)
  • Physics options
  • Control (ctrl) Betts-Miller-Janjic CPS, YSU PBL,
    and Lin et al. microphysics
  • CPS (exp1) Kain-Fritsch CPS
  • PBL (exp2) Mellor-Yamada-Janjic PBL
  • micro ensembles microphysics tests

54
What chance have we?
WRF nested domains.
WRF topography (m).
55
What chance have we?
500
SLP
Blue NARR Green NAM Red GFS
700
850
56
What chance have we?
  • Results
  • Macro ensembles winner (Table 2)
  • NARR initialization, exp1 physics
  • Micro ensembles winner (Table 3)
  • mp1, no CPS in innermost domain Hong et al.
    (2004), WSM 3-class scheme

57
What chance have we?
Table 2
best synoptic-scale simulation
Accumulated precipitation (In.) liquid equivalent
statistics for the macro WRF experiments for
the 60-h period 1200 UTC 26 Feb 0000 UTC 29
Feb 2008.
58
What chance have we?
Table 3
Accumulated precipitation (In.) liquid equivalent
statistics for the micro WRF experiments for
the 60-h period 1200 UTC 26 Feb 0000 UTC 29
Feb 2008.
59
What chance have we?
Blue NARR Green NAM Red GFS
Vertical T, Td oC profile forecasts of the
macro simulations valid 0300 UTC 27 Feb 2008.
60
What chance have we?
Vertical T, Td oC profile forecasts of the
NARR/exp1 mp1 simulations valid 1500 UTC 27 Feb
2008.
61
What chance have we?
Zoomed WRF topography (m) at 4 km.
62
What chance have we?
(a)
(b)
Wind
Wind
Vertical cross section (location given in Fig.
15) of q contours, K and water mixing ratio
x10-5 kg/kg through Poga Mountain at 1500 UTC
27 February 2008 for the (a) NARR/exp1 and (b)
mp1 simulations for domain 3 (4 km).
63
What chance have we?
(a)
(b)
Accumulated precipitation (liquid equivalent,
Inches) over the 60-h period 1200 UTC 26 Feb
0000 UTC 29 Feb 2008 for the (a)NARR/ exp1 and
(b) mp1 simulations of domain 3 (4 km).
64
What chance have we?
(a)
Accum. precip. error (In) over the 60-h period
1200 UTC 26 Feb 0000 UTC 29 Feb 2008 for the
(a) NARR/exp1 and (b) mp1 simulations of domain 3
(4 km).
(b)
65
What chance have we?
Backward trajectories ending at Poga Mountain at
1500 UTC 27 Feb 2008 for the outermost (36 km)
NARR/exp1 simulation.
66
What chance have we?
(a)
(b)
Backward trajectories ending at Poga Mountain at
1500 UTC 27 Feb 2008 for the (a) NARR/exp1 and
(b) mp1 simulations for domain 3 (4 km).
67
What chance have we?
  • Results (continued)
  • Miscellaneous
  • Modest differences between NARR/exp1 and mp1
    simulations in
  • vertical T, Td profile
  • mountain wave response
  • trajectory forecast
  • ? lead to significant differences in accumulated
    precipitation forecasts

68
What chance have we?
Table 2
best synoptic-scale simulation
Accumulated precipitation (In.) liquid equivalent
statistics for the macro WRF experiments for
the 60-h period 1200 UTC 26 Feb 0000 UTC 29
Feb 2008.
69
What chance have we?
  • Conclusions and future work
  • best synoptic-scale simulation does not assure
    best model acc precip fcst (Table 2)
  • contrary to CW
  • a probabilistic approach appears as the only way
    to predict the range of realistic potential
    outcomes
  • what role sub-grid scale convection (e.g. cloud
    rolls) and mountain waves?

70
Acknowledgements
  • Funded by a UNC-GA Research Competitiveness grant
    (2007, 2008)
  • Funded by RENCI (2008, 2009)
  • East Tennessee State University and Prof. Gary
    Henson
  • Naval Postgraduate School and Dick Lind for use
    of a sounding base unit and rawinsondes
  • NERSC (DOE) for computing resources

71
End
72
What chance have we?
(a)
(b)
Water species schematics for the (a) NARR/ctrl
and (b) mp1 experiments.
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