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Estimating SMOS error structure using triple collocation Delphine Leroux, CESBIO, France Yann Kerr, CESBIO, France Philippe Richaume, CESBIO, France 1
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Estimating SMOS error structure using triple collocation.ppt

Jan 25, 2015

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Page 1: Estimating SMOS error structure using triple collocation.ppt

Estimating SMOS error structure using triple

collocation

Delphine Leroux, CESBIO, FranceYann Kerr, CESBIO, FrancePhilippe Richaume, CESBIO, France

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Page 2: Estimating SMOS error structure using triple collocation.ppt

Soil moisture products at global scale

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AMSR-E (NSIDC)

ERS-ASCAT

(TU Wien)

Model output

(ECMWF)

AMSR-E

(VUA)

TMI (VUA)

SSM/I (VUA)

Aquarius

SMAP

How to evaluate SMOS ???

SMOS?

Page 3: Estimating SMOS error structure using triple collocation.ppt

Inter comparison between SMOS soil moisture and …

o Ground measurements (point scale)

o Other global products (point scale)

3

Statistics -> triple collocationo Global scale ?

Page 4: Estimating SMOS error structure using triple collocation.ppt

Structure

1. Triple Collocation method-> Theory and requirements

2. Chosen datasets-> Characteristics and differences

3. Global maps of relative errors-> Maps of errors-> Maps of bias and scale factors

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Page 5: Estimating SMOS error structure using triple collocation.ppt

Triple Collocation – theory (Caires et al., 2003)

Starting equation

Taking the anomalies

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Final equation

Maps of the std of the errors

Maps of the bias Maps of the scale factors

1) Triple Collocation

Theory Requirements

r: bias s: scale factor ε: error

Page 6: Estimating SMOS error structure using triple collocation.ppt

Triple Collocation - requirements

oStrong assumptions : Mutually independent errors

(ε) No systematic bias between

the datasets

o Requirements : 100 common dates

(Scipal et al., IGARSS 2010)

o Results : Relative errors

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-> choose properly the 3 datasets-> TC applied to the anomalies and not to the variables directly

-> including the 6 closest grid nodes

1) Triple Collocation

Theory Requirements

Page 7: Estimating SMOS error structure using triple collocation.ppt

Datasets

Frequency (GHz)

Incidence angle (°)

Instrument resolution (km)

Crossing time (A/D)

Grid resolution (km)

SMOS 1.4 0-55 40 6am / 6pm

15

AMSR-E 6.9 – 10.7 - …

55 57-6.25 1:30pm/ 1:30am

25

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AMSR-E soil moisture derived with the VUA algorithm (Vrije University of Amsterdam)

ECMWF product from SMOS Level 2 product (at SMOS resolution and crossing time)

2) Datasets Chosen datasets Number of triplets

Page 8: Estimating SMOS error structure using triple collocation.ppt

Number of triplets for 2010

82) Datasets Chosen datasets Number of triplets

Difficulties for regions with mountains, forests, wetlands, …

Page 9: Estimating SMOS error structure using triple collocation.ppt

Std of SMOS errors

93) Global maps of …

relative errors bias scaling factors

Good results in North America, North Africa, Middle East, Australia.Land contamination in Asia (Richaume et al., RAQRS, 2010).

Page 10: Estimating SMOS error structure using triple collocation.ppt

Std of AMSR-E(VUA) errors

103) Global maps of …

relative errors bias scaling factors

Good results in the same areas as SMOS.

Page 11: Estimating SMOS error structure using triple collocation.ppt

Std of ECMWF errors

113) Global maps of …

relative errors bias scaling factors

Page 12: Estimating SMOS error structure using triple collocation.ppt

Comparison over continents

123) Global maps of …

relative errors bias scaling factors

RELATIVE ERRORS!

SMOS is often between or close to the two values except in Asia

Page 13: Estimating SMOS error structure using triple collocation.ppt

133) Global maps of …

relative errors bias scaling factors

Bias : AMSR-E(VUA) - SMOS

Very high bias for high latitudes (mainly due to the vegetation)Mean bias around 0.1

Page 14: Estimating SMOS error structure using triple collocation.ppt

143) Global maps of …

relative errors bias scaling factors

Bias : ECMWF - SMOS

High bias for high latitudes but more homogeneousMean bias around 0.2-0.3

Page 15: Estimating SMOS error structure using triple collocation.ppt

Scale factor AMSR-E(VUA)

153) Global maps of …

relative errors bias scaling factors

Scale >1 higher dynamic than SMOSScale <1 lower dynamic than SMOS

Page 16: Estimating SMOS error structure using triple collocation.ppt

Scale factor ECMWF

163) Global maps of …

relative errors bias scaling factors

Unlike the bias maps, there is no obvious structure for the scale factor

Page 17: Estimating SMOS error structure using triple collocation.ppt

Conclusions

o As part of the validation process, triple collocation compares 3 different datasets at a global scale : SMOS, AMSR-E/VUA and ECMWF

o SMOS and AMSR-E/VUA have the same performance areas, but ECMWF and VUA give the best results

o SMOS algorithm is still improving and it can be considered as a good start

o Further work : apply triple collocation to other triplets (SMOS-NSIDC-ASCAT, etc…) and apply it with 2011 data

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Page 18: Estimating SMOS error structure using triple collocation.ppt

Thank you for your attention

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Any questions ?