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Water from the mountains, The Fourth Paradigm, and the color of snow Jeff Dozier University of California, Santa Barbara

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Page 1: Dozier 2011 Microsoft LATAM

Water from the mountains, The Fourth Paradigm, and the color of snow

Jeff DozierUniversity of California, Santa Barbara

Page 2: Dozier 2011 Microsoft LATAM

1/5th of Earth’s population gets water from snow and ice

(Barnett et al., 2005)Changes in the Qori Kalis Glacier, Quelccaya Ice Cap, Peru

(L. Thompson)

SierraNevada

1978

2002

Page 3: Dozier 2011 Microsoft LATAM

http://fourthparadigm.org

Jim Gray, 1944-2007

• Thousand years ago —experimental science• Description of natural phenomena

• Last few hundred years —theoretical science• Newton’s Laws, Maxwell’s

Equations . . .• Last few decades — computational

science• Simulation of complex phenomena

• Today — data-intensive science• Model/data integration• Data mining• Higher-order products, sharing

Page 4: Dozier 2011 Microsoft LATAM

Snow is one of nature’s most colorful materials (Landsat Thematic Mapper snow & cloud)

Bands 3 2 1 RGB(0.66, 0.57, 0.48 μm)

Bands 5 4 2(1.65, 0.83, 0.57 μm)

Page 5: Dozier 2011 Microsoft LATAM

Automated measurement with snow pillow• Measures the

snow water equivalent (SWE)• amount of water that

would result if the snow melted

• snow depth = kg m–2 (mass/area)

• (snow depth)/water = depth of water equivalent

• 1 kg m–2 = 1 mm depth(R. Julander)

Page 6: Dozier 2011 Microsoft LATAM

Snow-pillow data for Leavitt Lake, 2929 m, Sierra Nevada

Page 7: Dozier 2011 Microsoft LATAM

Manual measurement started in the Sierra Nevada in 1910

Page 8: Dozier 2011 Microsoft LATAM

February March April May0.0

0.5

1.0

1.5

2.0

2.5

3.0

3.5

April

-July

fore

cast

, km

3

historical maxupper bound

historical min

historical avg

lower bound

April-July 2011 forecast, Tuolumne River

Page 9: Dozier 2011 Microsoft LATAM

(R. Rice, UC Merced)

Distribution of errors in the April-July forecast

Page 10: Dozier 2011 Microsoft LATAM

[Chapman & Davis,2010]

Historical record during a period of climate change

Page 11: Dozier 2011 Microsoft LATAM

[D. Marks]

Page 12: Dozier 2011 Microsoft LATAM

Sierra Nevada, trends in 220 long-term snow courses(> 50 years, continuing to present)

Page 13: Dozier 2011 Microsoft LATAM

Optical properties of ice and water

𝐼 𝑠𝐼 0

=exp (− 4𝜋𝑘𝑠𝜆 )

Page 14: Dozier 2011 Microsoft LATAM

[Erbe et al., 2003]

“Snowflakes are hieroglyphs sent from the sky”

UkichiroNakaya

Page 15: Dozier 2011 Microsoft LATAM

Snow spectral reflectivity (albedo) is sensitive to the absorption coefficient of ice

[Wiscombe & Warren, 1980]

Page 16: Dozier 2011 Microsoft LATAM

Dust

(M. Skiles)

algae

Page 17: Dozier 2011 Microsoft LATAM

Spectral reflectivity of dirty snow and snow with red algae (Chlamydomonas nivalis)

[Painter et al., 2001]

Page 18: Dozier 2011 Microsoft LATAM

Seasonal solar radiation (Mammoth Mtn, 2005)

Page 19: Dozier 2011 Microsoft LATAM

Terra satellite 705 km altitudeorbit 98 minutes

MODIS instrument sees all of Earth’s surface in 2 days (almost all in 1 day)

Path of Satellite

Page 20: Dozier 2011 Microsoft LATAM

(moderate resolution imaging spectroradiometer)MODIS spectral bands

Page 21: Dozier 2011 Microsoft LATAM

Spectra with 7 MODIS “land” bands(500 m resolution, daily coverage)

Page 22: Dozier 2011 Microsoft LATAM

MODIS image

100% Snow100% Vegetation100% Rock/Soil

Page 23: Dozier 2011 Microsoft LATAM

Fractional snow-covered area, Sierra Nevada (MODIS images available daily)

Page 24: Dozier 2011 Microsoft LATAM

Not just snow cover, but also its reflectivity

Page 25: Dozier 2011 Microsoft LATAM

Spatially distributed snow water equivalentSWE,

mm

04/10/05

10600

1300190025004500

(N. Molotch)

Page 26: Dozier 2011 Microsoft LATAM

• Interpolation• statistical 3D interpolation from snow pillows and snow

courses, constrained by remotely sensed snow-covered area

• SNODAS – the U.S. “national snow model”• assimilate numerical weather & snowmelt models with

surface data & remote sensing• Reconstruction (after the snow is gone)• from remotely sensed snow cover, estimate rate of

snowmelt from energy input, and back-calculate how much snow there was.

Three independent ways

Page 27: Dozier 2011 Microsoft LATAM

Snow redistribution and drifting

(D. Marks)

Page 28: Dozier 2011 Microsoft LATAM

Reconstruction of heterogeneous snow in a grid cell

Daily potential melt

z

fSCA

xy

Reconstructed SWE

A. Kahl

[Homan et al., 2010]

Page 29: Dozier 2011 Microsoft LATAM

Solar radiation at 1 hr time steps – details

Painter et al., 2009;Dozier et al., 2008Link and Marks, 1999;

Garren and Marks, 2005

Dozier and Frew, 1990Erbs et al., 1982;Olyphant et al., 1984Dubayah and Loechel., 1997

Cosgrove et al., 2003;Pinker et al., 2003;Mitchell et al., 2004

Page 30: Dozier 2011 Microsoft LATAM

Comparison of modeled and observed SWE, April 1, 2006

Page 31: Dozier 2011 Microsoft LATAM

“All models are wrong, but some are useful” – G. Box

Interpolation SNODAS Reconstruction2006 April May June July August

Page 32: Dozier 2011 Microsoft LATAM

km3mm

Interpolation

SNODAS

Reconstruction

Page 33: Dozier 2011 Microsoft LATAM

Persistent, high-elevation snowpack not measured by surface stations

Page 34: Dozier 2011 Microsoft LATAM

http://fourthparadigm.org

Data Acquisitio

n & Modeling

Analysis & Data

Mining

Collaboration &

Visualizatio

n

Dis

sem

inat

ion

& S

hari

ng Archiving & Preservatio

n

(J. Frew, T. Hey)

Page 35: Dozier 2011 Microsoft LATAM

Information about water is more useful as we climb the value ladder

MonitoringCollation

Quality assurance

Aggregation

AnalysisReporting

Forecasting

Distribution

Done poorly,but a few notablecounter-examples

Done poorly to moderately,not easy to find

Sometimes done well,generally discoverable and available,

but could be improved

>>> Increasin

g value

>>>Integration

Data >>> Informatio

n >>>

Insight

(I. Zaslavsky & CSIRO, BOM, WMO)

Page 36: Dozier 2011 Microsoft LATAM

(MOD for Terra/MYD for Aqua)

Page 37: Dozier 2011 Microsoft LATAM

Finis“the author of all books”

– James Joyce, Finnegan’s Wake

http://www.slideshare.net/JeffDozier

Page 38: Dozier 2011 Microsoft LATAM