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CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie Clifford, Adam Winstral

CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

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Page 1: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

CURRENT STATE OF SNOW

REMOTE SENSING

OBSERVATIONS, FUTURE

DIRECTION AND REMAINING

CHALLENGES1

Thanks to: Nick Rutter, Ian Davenport, Debbie Clifford, Adam Winstral

Page 2: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Outline

• VIS / NIR observations

– Extent

– Grain size

– Snow mass (LIDAR)

• Microwave observations

– Historical algorithms

– Snow heterogeneity

– Physics-based modelling

• Summary

• Future mission?

2

Page 3: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

VIS / NIR

3

Page 4: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Snow – cloud discrimination

4

Page 5: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

VIS / NIR Remote sensing of snow

Nolin, A., J. Dozier (2000), A hyperspectral method for remotely sensing the grain size of snow, Rem. Sens. Env., 74 (2), 207–

216

Surface /

near

surface

Page 6: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Airborne Snow Observatory

http://www.jpl.nasa.gov/images/earth/california/20131209/AS

O_AGUPressRelease_9Dec2013_vF.pdf

Page 7: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

http://www.jpl.nasa.gov/images/earth/california/20131209/ASO_AGUPressRelease_9

Dec2013_vF.pdf

$3.9m

Page 8: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Isnobal Density

underestimation

overestimation

Absolute

value is

important!

Page 9: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

SNOW MASS FROM MICROWAVE

9

SWE = 4.77 * (18H - 37H)

February

climatology

Page 10: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

The basis of the Chang Algorithm

Chang et. al. (1987) Ann. Glaciol. 9: 39-44

Snow Water Equivalent (cm)

Bri

ghtn

ess tem

pe

ratu

re (

K)

SWE = 4.77 * (18H - 37H)

Microwave emission (Tb) vs snow mass (SWE) is

derived using the Mie Scattering model

melt…

SWE (depth)

Page 11: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Sensitivity of snow mass algorithm to grain size

Relationship between Chang SWE and actual SWE

for different grain sizes

(snow density = 300 kg m^-3)

0

100

200

300

400

500

600

700

800

0 200 400 600 800 1000 1200

SWE in HUT forward model (mm)

Cha

ng-d

erived

SW

E (

mm

)

0.2mm 0.4mm

0.6mm 0.8mm

1.0mm 1.2mm

1.4mm 1.6mm

1.8mm 2.0mm

1:1 line

Other parameters must be known!

SWE = 4.77 * (18H - 37H)

Page 12: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Other

approaches

12

SD = b (∆TB)2 + c

∆TB

b, c: ƒ(deff, ρ)

SWE = 4.77 * (18H -

37H)

Page 13: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

GlobSnow

13

Page 14: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

GlobSnow

14

• Snow density 240 kg

m-3

• Single layer

Page 15: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Stratigraphy

Courtesy Nick

Rutter

Page 16: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Snow metamorphism

16

Electron and Confocal Microscopy Laboratory, Agricultural Research Service, U.

S. Department of Agriculture.

Growth is driven by density, temperature and

temperature gradient: snow models

Page 17: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Snow mass data assimilation system

Page 18: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Snow microwave emission model

Variables – temperature, density, liquid

water content, grain size, salinity.

TB d-,q( ) = TB 0+,q( ) e- ke-qks( )secq d

+kaTs

ke - qks1- e

- ke-qks( )secq d( )

Includes multiple scattering within the

snow layer, scattering and reflectivity via

Fresnel equations

ATMOSPHERE, mostly transparent

SNOW

GROUND

Page 19: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Accuracy of emission models

19

Bias: 36-

68K

Page 20: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

A note on snow microstructure

20

Dmax

vs Dopt

vs Deff

A range of

length

scales!

Page 21: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

ASMEx

21

More data

needed…

Page 22: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Summary

• Snowpack information is valuable

• Sensors have different benefits and assumptions

• Other information is required to give snow mass

estimates (stratigraphy, density, grain size….)

• Snowpack evolution models can give snow

parameters

• Microwave emission models need further development

• Know which direction to go in but….

22

Without a snow mission there will be minimal

funding for algorithm and model development

Page 23: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

The future….CoReH20?

• Dual-band SAR

(9.65 / 17.25GHz)

• 6am / pm overpass

• Revisit: 3 / 15 days

• Resolution:

few 100m

• Launch in 2019?

What do we want?

past

Page 24: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Mission Requirements

• What depth of snow is important and accuracy (c.f. 4%

soil moisture)

• Spatial resolution

• Repeat cycle

• Melt state

• Regional or global

Email me: [email protected]

24

Your opportunity – planning has started for next

ESA / NASA mission concepts

Page 25: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Airborne Snow Observatory

25

Page 26: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

26

Page 27: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Correlation function

27

A(x) = exp(-x / pex)

Autocorrelation function may be a different shape

Get rid of

empirical

corrections!

Page 28: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Absorption and Scattering Within Snow

28

• Sensitive to the snow grain size (and density)

• Scattering mostly in the forward direction (96%)

• Wet snow highly absorptive, near blackbody

Page 29: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

Capabilities

• Evaluate against time series of microstructure and

temperature profiles, and temporal TB

• Use other microwave models, and examine

microstructure metric relationships

• Can we go further?

29

Page 30: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

JIM

• Contains all major snow parameterisations

• 1701 Unique model combinations

• 63 model subset:

– Compaction parameterisation (3)

– Thermal conductivity (3)

– Fresh snow density (3)

– Snow hydrology (3)

• This has now been coupled with 3 of 5 microstructure

evolution functions: MOSES, SNICAR, SNTHERM

30

Page 31: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

JIM subset: Sodankylä

31

MOSES

SNICAR

SNTHERM

Page 32: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

JIM subset: DMRTML

32

MOSES

SNICAR

SNTHERM

Page 33: CURRENT STATE OF SNOW REMOTE SENSING ......CURRENT STATE OF SNOW REMOTE SENSING OBSERVATIONS, FUTURE DIRECTION AND REMAINING CHALLENGES 1 Thanks to: Nick Rutter, Ian Davenport, Debbie

JIM subset: DMRTML-SNTHERM

33

Physical

Empirical

None