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Luca Brocca
T. Moramarco, S. Barbetta, A. Tarpanelli, S. Camici, C. Massari, G. Zucco,
C. Corradini, P. Maccioni, L. Ciabatta
Research Institute for Geo-Hydrological Protection (IRPI-CNR), Perugia, Italy
50th anniversary symposium:
State of the art measurements of catchment-scale hydrological processes
http://hydrology.irpi.cnr.it
10 th Sept 2015
Soil moisture is a key
variable of the
climate system.
Soil moisture
generally refers to the
amount of water
stored in the
unsaturated soil zone,
although its exact
definition can vary
depending on the
context, i.e. whether
it is defined in
relative, absolute or
indirect terms, and
depending on the
reference storage.
What is soil moisture?
Casentino basin
central Italy
30% increase of soil
moisture produces a
8-fold increase of
peak discharge!
FLOOD
DROUGHT
WEATHER
PREDICTION
CLIMATE
SYSTEM
LANDSLIDES
CROP
PRODUCTION
Why soil moisture?
ANTECEDENT
WETNESS
CONDITIONS
Brocca et al., 2009 JHE;
Massari et al., 2014
HESS; Tramblay et al.,
2012; …
SOIL MOISTURE
SPATIAL-TEMPORAL
VARIABILITY
Brocca et al., 2007 JoH;
2009 GEOD; 2010;
2014 WRR; Zucco et
al., 2014; …
FLOOD FREQUENCY
ANALYSIS
Camici et al., 2011
WRR
SOIL MOISTURE &
LANDSLIDE
PREDICTION
Brocca et al., 2012 RS;
Ponziani et al., 2012
LASL
RAINFALL-RUNOFF
MODELLING
Brocca et al., 2011
HYP; 2013 HESS; Tayfur
et al., 2015 WARM
SOIL MOISTURE
MODELLING
Brocca et al., 2008
HYP; 2014 HYP; Lacava
et al., 2012
SOIL MOISTURE &
DROUGHT
MONITORING
Maccioni et al., 2014
JHE; Rahmani et al.,
2015 JAG
REMOTE SENSING
VALIDATION
Brocca et al., 2011 RSE;
Dorigo et al., 2015 RSE;
Wagner et al., 2013
IEEE TGRS; …
SOIL MOISTURE
DATA ASSIMILATION
Brocca et al., 2010
HESS; 2012 IEEE TGRS;
Massari et al., 2015 RS
GEOPHYSICAL
METHODS
Calamita et al., 2012
JoH; 2015 JoH
SOIL MOISTURE
FOR SOIL EROSION
Todisco et al., 2015
HESS
COSMIC-RAY
NEUTRONS
Franz et al., 2015 GRL
SOIL MOISTURE &
CLIMATE CHANGE
Camici et al., 2014 JHE;
Ciabatta et al., 2015
JoH
NUMERICAL
WEATHER
PREDICTION
Capecchi & Brocca et
al., 2014 METZET
FROM SURFACE TO
ROOT-ZONE
MODELLING
Brocca et al., 2010 RSE;
Manfreda et al., 2014
HESS
SM2RAIN
Brocca et al., 2013
GRL; 2014 JGR;
Massari et al., 2014
AWR; Ciabatta et al.,
2015 JHM; 2015 JAG
10-year of research on soil moisture
Soil moisture
monitoring
with in situ
and remote
sensing
Understanding
the spatial-
temporal
variability of soil
moisture at
different spatial
scales
Assimilation of
in situ and
remote sensing
soil moisture
measurements
into rainfall-
runoff modelling
Detecting
rainfall from the
bottom up:
using soil
moisture
observations for
measuring
rainfall
(SM2RAIN)
Storyline
2014
GRL paper
2010
HESS paper
2007
JoH paper
2005 2015
Soil moisture monitoring
IN SITU
(TDR, FDR, Gravimetric,
Geophysical methods,
COSMOS, GPS)
REMOTE SENSING
(AMSR-E, AMSR2, SAR, Scatterometers,
ASCAT, SMOS, SMAP...)
HYDROLOGICAL
MODELLING
VS
A= ~10-1 m2
satellite
pixels ~25 km
~25 km
A = ~109 m2
in-situ
measurements
~50 cm
~50 cm
HOW IS IT POSSIBLE TO
VALIDATE SATELLITE SOIL
MOISTURE ESTIMATES WITH
IN-SITU MEASUREMENTS?
The scale issue (for RS validation)!
25 August 2015
~25 kmsatellite
pixels
Typical catchment
size for hydrological
studies.
HYDROLOGIST
too coarse for
hydrological
applications !
The scale issue (for hydrology)!
Filling the scale gap
COSMOS rover: cosmic-ray neutrons
12 km
12km
22 surveys in 5 months:
~300 measures/5 hours
Also GPS (see Kristine Larson), Geophysics methods (EMI, Resistivity)
What is the relation
between point and area-
averaged soil moisture
measurements?
PLOT SCALE
400-9000 m2
CENTRALITALY
Brocca et al., 2009 (GEOD)
SMALL CATCHMENT
SCALE ~50 km2
20
25
30
35
40
45
50
20 30 40 50
Mean soil moisture (%)"Representative"sitesoilmoisture(%)
Castel Rigone
Casale Belfiore
Val di Rosa
Brocca et al., 2010 (WRR)
CATCHMENT SCALE
~250 km2
Brocca et al., 2012 (JoH)
USA
Cosh et al., 2006 (JoH)
AFRICA
de Rosnay et al., 2009 (JoH)
ASIA
Zhao et al., 2010 (HYP)
Soil moisture temporal stability
Brocca et al., 2010 (WRR)
Soil moisture information content
Simply
matching
mean and
variance
Different land
models show
substantial
differences
“Large differences are typical between soil
moisture estimates from different climate
models […] in modelling studies [], the
temporal anomalies of soil moisture are
usually of greater interest as most of the
informative content of soil moisture data is
not in their absolute values, but in their
temporal dynamics”
Absolute soil moisture vs anomalies
ABSOLUTE SOIL MOISTURE
TEMPORAL MEAN: time-invariant component
TEMPORAL ANOMALIES: time-varying component
ABSOLUTE SM ANOMALIES RELATIVE SM
Absolute soil moisture vs anomalies
For large scale and spatial
heterogeneous soil moisture
network (France, Spain,
Switzerland, Australia) the
time invariant component
(green bar) is the major
contributor to the total
spatial variance.
Australia France
Italy Spain
Switzerland USA
Spain
Total variability
Time invariant comp. (temp. mean)
Time variant comp. (anomalies)
Covariance
Network size between 200 and 150000 km²
Absolute and anomaly soil moisture
data behave very differently.
How to use this understanding for
remote sensing validation and in
hydrological applications (e.g., data
assimilation)?
In situ vs remote sensing
Median correlation ~0.6-0.7
~1500 measurement stations / 40 networks
In situ & RS for RR modelling
Satellite vs modelled soil moisture
In situ soil moisture as initial condition of RR modelling
Tramblay et al., 2012 (HESS)
Brocca et al., 2009 (JHE)
In situ soil moisture
measurement at an
experimental plot are
used to set the initial
conditions of an
event-based rainfall-
runoff model with
successfully results.
Satellite and modelled
soil moisture data are in
good agreement for a
period of 25 years!
137
km²
60
km²
13
km²
R²
A Simplified Continuous RR model
Advantages
1) No need of continuous rainfall and
evapotranspiration datasets.
Good in poorly gauged areas!
2) Parsimony and simplicity.
Good for operational purposes!
Applications to:
- 35 catchments in Italy for
National Department of
Civil Protection
- in Greece for FLIRE (Life+)
project
0 2 4 6 8 10 12 14 16 18 20 22 24 26 28 30 32 34 36 38
0
10
20
P[mm/h] rainfall
0 2 4 6 8 10 12 14 16 18 20 22 24 26 28 30 32 34 36 38
0
50
100
150
t [h]
Q[m3
/s]
Qobs
QSM
in situ
QSMASCAT
QSMERA-LAND
QMISDc
In rainfall-runoff modelling …
In the last decades a number studies performed data assimilation experiments
and tested different techniques and approaches for soil moisture assimilation
within rainfall-runoff modelling …
In situ soil moisture Satellite soil moisture
Loumagne et al., 2001 (HSJ) Pauwels et al., 2001, 2002 (JoH, HYP)
Aubert et al., 2003 (JoH) Francois et al., 2003 (HSJ)
Anctil et al., 2008 (JoH) Crow et al., 2005 (GRL)
Brocca et al. 2009 (JHE) Brocca et al., 2010, 2012, 2013 (HESS, IEEE TGRS, IGARSS)
Lee et al. 2011 (AWR) Draper et al., 2011 (HESS)
Matgen et al. 2011 (AWR) Chen et al., 2011, 2014 (AWR, JHM)
Massari et al., 2014 (HESS) Matgen et al., 2012 (AWR)
Alvarez-Garreton et al., 2014, 2015 (JoH, HESS)
Wanders et al., 2014 (HESS)
Lievens et al., 2015 (RSE)
Corato et al., 2015 (RSE)
Soil moisture data assimilation
From 2010
However, few studies demonstrated
the value of assimilating real soil
moisture data for improving runoff
prediction and there are still many
controversial issues to be solved…
Data Assimilation ingredients
Bias Handling
1) Variance matching
2) Least square rescaling
3) Cdf matching
4) Triple collocation
Filtering
1) Soil water index
(Swi)
2) Others
3) No filtering
Rainfall runoff
model
1) Lumped
2) Distributed
3) Single layer
4) Multiple layers
Assimilation technique
1) Variational
2) Sequential
Observations
1) In situ
2) Satellite data
3) Land surface model data
Observation error
1) Temporal variability
of the obs. error
2) Spatial correlation
between the
observations
3) Masking
“Cooking” techniques
The problem is often not the
ingredients but the cooking
technique …
Model error
1) Model error covariance estimation (i.e. EnkF: ensemble size)
2) What to perturb. (parameters, inputs, states etc …)
3) How to perturb (amount of perturbation)
A complex recipe?
Bias
handling
Filtering Temporal
variability
Spatial
variability
What to
perturb
Bias
correction
Ensemble
size
Ensemble
verification
Given 1 RR model (e.g., HBV), 1 observation
dataset (e.g., SMOS), and 1 assimilation
technique (e.g., EnKF), we can obtain 2300
different results!!!
The task can be even more
difficult if we consider different
catchments, climatic, soil, land use
conditions, ….
… for a complex topic?
Only changing the cooking techniques
Tiber River Basin
Basin Area (km2)
Tevere at Ponte Felcino 2080
Nestore at Marsciano 725
Chiani at Morrano 457
Topino at Bevagna 440
Marroggia at Azzano 258
Niccone at Migianella 137
Rainfall-runoff
data from 1989 at
hourly time
resolution
6 sub-
catchments
(140-2080 km²)
A systematic study…
…toward data assimilation guidelines
RAINFALL SOIL MOISTURE
The soil moisture variations are strongly related to the amount of rainfall falling into the soil.
Therefore, we can use soil moisture observations for estimating rainfall by considering the “soil
as a natural raingauge”.
Doing hydrology backward
Is it raining?
radar raingauge
Remote
sensing of
rainfall
TOP-DOWN PERSPECTIVE
BOTTOM-UP PERSPECTIVE: CAN WE USE SOIL MOISTURE DATA TO INFER
THE AMOUNT OF WATER FALLING INTO THE SOIL?
“Top down” vs “bottom up”
Ptrue=94 mm
With only two
overpasses the
bottom up approach
provides a better
estimate of the
accumulated rainfall
Pbottom-up=(92-2)= 90 mm
5 0 2 8 The
underestimation is
due to the satellite
overpasses in
period with low
rainfall
Ptop-down=(5+0+2+8)*4= 60 mm
2
92
“Top down” vs “bottom up”
precipitation
surface runoff
evapotranspiration
drainage
soil water
capacity
relative saturation
Inverting for p(t):
= soil depth X porosity
Assuming: + +
during rainfall
Soil water
balance
equation
SM2RAIN algorithm
SM2RAIN dataset from ASCAT, 0.25°, 2007-2013, freely available
SM2RAIN papers … so far!
calibration validation
0.75<R<0.95
In situ soil moisture observations
R
fRMSE fRMSE
R
Application to in situ observations …
Correlation map between 5-day rainfall
from GPCC and the rainfall product
obtained from the application of
SM2RAIN algorithm to ASCAT, AMSR-E
and SMOS data plus TMPA 3B42RT
(VALIDATION period 2010-2011)
… and to satellite data: global scale
 2007-2009
 ERA-Interim
as benchmark
 5-day
cumulated
The correlation
is 25% higher
than TMPA real
time rainfall
product
0.504  0 .640
Integration of multiple datasets
SM2RAIN (ASCAT+QUIKSCAT)
TMPA (3B42RT)
Median correlation (+/- 50° lat. band) = 0.640
Median correlation (+/- 50° lat. band) = 0.504 TOP-DOWN
BOTTOM-UP
Time step: 1-day
Bottom up + Top down
TOP-DOWN
BOTTOM-UP TOP-DOWN
BOTTOM-UP
Central Italy: R=0.86
Future directions …
Improving, testing, and integrating NEW monitoring
techniques able to provide soil moisture measurements at
catchment scale: COSMOS, GPS, Electromagnetic induction,
Remote sensing (e.g., SMAP), …
Investigating the assimilation of in situ and satellite soil
moisture observations in rainfall-runoff modelling for
different basins, climates, …
… also in contrast with conventional hydrological approaches
(e.g., assimilation of river discharge)
SM2RAIN: from research to operational applications, thanks
to funding from new research project starting in September:
ESA SMOS+rainfall, ESA CCI, EUMETSAT H-SAF
… and open issues
How to reduce the spatial scale gap between in situ
measurements, modelling, and remote sensing?
What is the role of soil moisture spatial variability? Absolute
soil moisture or temporal anomalies? Spatial or temporal
variability? Surface or root-zone measurements?
How much improvement can we expect from using in situ and
satellite soil moisture observations in hydrological
applications?
Is it really useful? What is the role of soil moisture spatial
variability?
Are we able to model/simulate soil moisture spatial
variability?
Models usually provide good simulation for soil moisture
temporal evolution, but not in space
This presentation is available for download at:
http://hydrology.irpi.cnr.it/repository/public/presentations/2015/ Wageningen-l.-brocca
FOR FURTHER INFORMATION
URL: http://hydrology.irpi.cnr.it/people/l.brocca
URL IRPI: http://hydrology.irpi.cnr.it

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SOIL MOISTURE: A key variable for linking small scale catchment hydrology to global scale applications

  • 1. Luca Brocca T. Moramarco, S. Barbetta, A. Tarpanelli, S. Camici, C. Massari, G. Zucco, C. Corradini, P. Maccioni, L. Ciabatta Research Institute for Geo-Hydrological Protection (IRPI-CNR), Perugia, Italy 50th anniversary symposium: State of the art measurements of catchment-scale hydrological processes http://hydrology.irpi.cnr.it 10 th Sept 2015
  • 2. Soil moisture is a key variable of the climate system. Soil moisture generally refers to the amount of water stored in the unsaturated soil zone, although its exact definition can vary depending on the context, i.e. whether it is defined in relative, absolute or indirect terms, and depending on the reference storage. What is soil moisture?
  • 3. Casentino basin central Italy 30% increase of soil moisture produces a 8-fold increase of peak discharge! FLOOD DROUGHT WEATHER PREDICTION CLIMATE SYSTEM LANDSLIDES CROP PRODUCTION Why soil moisture?
  • 4. ANTECEDENT WETNESS CONDITIONS Brocca et al., 2009 JHE; Massari et al., 2014 HESS; Tramblay et al., 2012; … SOIL MOISTURE SPATIAL-TEMPORAL VARIABILITY Brocca et al., 2007 JoH; 2009 GEOD; 2010; 2014 WRR; Zucco et al., 2014; … FLOOD FREQUENCY ANALYSIS Camici et al., 2011 WRR SOIL MOISTURE & LANDSLIDE PREDICTION Brocca et al., 2012 RS; Ponziani et al., 2012 LASL RAINFALL-RUNOFF MODELLING Brocca et al., 2011 HYP; 2013 HESS; Tayfur et al., 2015 WARM SOIL MOISTURE MODELLING Brocca et al., 2008 HYP; 2014 HYP; Lacava et al., 2012 SOIL MOISTURE & DROUGHT MONITORING Maccioni et al., 2014 JHE; Rahmani et al., 2015 JAG REMOTE SENSING VALIDATION Brocca et al., 2011 RSE; Dorigo et al., 2015 RSE; Wagner et al., 2013 IEEE TGRS; … SOIL MOISTURE DATA ASSIMILATION Brocca et al., 2010 HESS; 2012 IEEE TGRS; Massari et al., 2015 RS GEOPHYSICAL METHODS Calamita et al., 2012 JoH; 2015 JoH SOIL MOISTURE FOR SOIL EROSION Todisco et al., 2015 HESS COSMIC-RAY NEUTRONS Franz et al., 2015 GRL SOIL MOISTURE & CLIMATE CHANGE Camici et al., 2014 JHE; Ciabatta et al., 2015 JoH NUMERICAL WEATHER PREDICTION Capecchi & Brocca et al., 2014 METZET FROM SURFACE TO ROOT-ZONE MODELLING Brocca et al., 2010 RSE; Manfreda et al., 2014 HESS SM2RAIN Brocca et al., 2013 GRL; 2014 JGR; Massari et al., 2014 AWR; Ciabatta et al., 2015 JHM; 2015 JAG 10-year of research on soil moisture
  • 5. Soil moisture monitoring with in situ and remote sensing Understanding the spatial- temporal variability of soil moisture at different spatial scales Assimilation of in situ and remote sensing soil moisture measurements into rainfall- runoff modelling Detecting rainfall from the bottom up: using soil moisture observations for measuring rainfall (SM2RAIN) Storyline 2014 GRL paper 2010 HESS paper 2007 JoH paper 2005 2015
  • 6. Soil moisture monitoring IN SITU (TDR, FDR, Gravimetric, Geophysical methods, COSMOS, GPS) REMOTE SENSING (AMSR-E, AMSR2, SAR, Scatterometers, ASCAT, SMOS, SMAP...) HYDROLOGICAL MODELLING
  • 7. VS A= ~10-1 m2 satellite pixels ~25 km ~25 km A = ~109 m2 in-situ measurements ~50 cm ~50 cm HOW IS IT POSSIBLE TO VALIDATE SATELLITE SOIL MOISTURE ESTIMATES WITH IN-SITU MEASUREMENTS? The scale issue (for RS validation)! 25 August 2015
  • 8. ~25 kmsatellite pixels Typical catchment size for hydrological studies. HYDROLOGIST too coarse for hydrological applications ! The scale issue (for hydrology)!
  • 9. Filling the scale gap COSMOS rover: cosmic-ray neutrons 12 km 12km 22 surveys in 5 months: ~300 measures/5 hours Also GPS (see Kristine Larson), Geophysics methods (EMI, Resistivity)
  • 10. What is the relation between point and area- averaged soil moisture measurements? PLOT SCALE 400-9000 m2 CENTRALITALY Brocca et al., 2009 (GEOD) SMALL CATCHMENT SCALE ~50 km2 20 25 30 35 40 45 50 20 30 40 50 Mean soil moisture (%)"Representative"sitesoilmoisture(%) Castel Rigone Casale Belfiore Val di Rosa Brocca et al., 2010 (WRR) CATCHMENT SCALE ~250 km2 Brocca et al., 2012 (JoH) USA Cosh et al., 2006 (JoH) AFRICA de Rosnay et al., 2009 (JoH) ASIA Zhao et al., 2010 (HYP) Soil moisture temporal stability Brocca et al., 2010 (WRR)
  • 11. Soil moisture information content Simply matching mean and variance Different land models show substantial differences “Large differences are typical between soil moisture estimates from different climate models […] in modelling studies [], the temporal anomalies of soil moisture are usually of greater interest as most of the informative content of soil moisture data is not in their absolute values, but in their temporal dynamics”
  • 12. Absolute soil moisture vs anomalies ABSOLUTE SOIL MOISTURE TEMPORAL MEAN: time-invariant component TEMPORAL ANOMALIES: time-varying component
  • 13. ABSOLUTE SM ANOMALIES RELATIVE SM Absolute soil moisture vs anomalies For large scale and spatial heterogeneous soil moisture network (France, Spain, Switzerland, Australia) the time invariant component (green bar) is the major contributor to the total spatial variance. Australia France Italy Spain Switzerland USA Spain Total variability Time invariant comp. (temp. mean) Time variant comp. (anomalies) Covariance Network size between 200 and 150000 km² Absolute and anomaly soil moisture data behave very differently. How to use this understanding for remote sensing validation and in hydrological applications (e.g., data assimilation)?
  • 14. In situ vs remote sensing Median correlation ~0.6-0.7 ~1500 measurement stations / 40 networks
  • 15. In situ & RS for RR modelling Satellite vs modelled soil moisture In situ soil moisture as initial condition of RR modelling Tramblay et al., 2012 (HESS) Brocca et al., 2009 (JHE) In situ soil moisture measurement at an experimental plot are used to set the initial conditions of an event-based rainfall- runoff model with successfully results. Satellite and modelled soil moisture data are in good agreement for a period of 25 years! 137 km² 60 km² 13 km² R²
  • 16. A Simplified Continuous RR model Advantages 1) No need of continuous rainfall and evapotranspiration datasets. Good in poorly gauged areas! 2) Parsimony and simplicity. Good for operational purposes! Applications to: - 35 catchments in Italy for National Department of Civil Protection - in Greece for FLIRE (Life+) project 0 2 4 6 8 10 12 14 16 18 20 22 24 26 28 30 32 34 36 38 0 10 20 P[mm/h] rainfall 0 2 4 6 8 10 12 14 16 18 20 22 24 26 28 30 32 34 36 38 0 50 100 150 t [h] Q[m3 /s] Qobs QSM in situ QSMASCAT QSMERA-LAND QMISDc
  • 17. In rainfall-runoff modelling … In the last decades a number studies performed data assimilation experiments and tested different techniques and approaches for soil moisture assimilation within rainfall-runoff modelling … In situ soil moisture Satellite soil moisture Loumagne et al., 2001 (HSJ) Pauwels et al., 2001, 2002 (JoH, HYP) Aubert et al., 2003 (JoH) Francois et al., 2003 (HSJ) Anctil et al., 2008 (JoH) Crow et al., 2005 (GRL) Brocca et al. 2009 (JHE) Brocca et al., 2010, 2012, 2013 (HESS, IEEE TGRS, IGARSS) Lee et al. 2011 (AWR) Draper et al., 2011 (HESS) Matgen et al. 2011 (AWR) Chen et al., 2011, 2014 (AWR, JHM) Massari et al., 2014 (HESS) Matgen et al., 2012 (AWR) Alvarez-Garreton et al., 2014, 2015 (JoH, HESS) Wanders et al., 2014 (HESS) Lievens et al., 2015 (RSE) Corato et al., 2015 (RSE) Soil moisture data assimilation From 2010 However, few studies demonstrated the value of assimilating real soil moisture data for improving runoff prediction and there are still many controversial issues to be solved…
  • 18. Data Assimilation ingredients Bias Handling 1) Variance matching 2) Least square rescaling 3) Cdf matching 4) Triple collocation Filtering 1) Soil water index (Swi) 2) Others 3) No filtering Rainfall runoff model 1) Lumped 2) Distributed 3) Single layer 4) Multiple layers Assimilation technique 1) Variational 2) Sequential Observations 1) In situ 2) Satellite data 3) Land surface model data Observation error 1) Temporal variability of the obs. error 2) Spatial correlation between the observations 3) Masking “Cooking” techniques The problem is often not the ingredients but the cooking technique … Model error 1) Model error covariance estimation (i.e. EnkF: ensemble size) 2) What to perturb. (parameters, inputs, states etc …) 3) How to perturb (amount of perturbation) A complex recipe?
  • 19. Bias handling Filtering Temporal variability Spatial variability What to perturb Bias correction Ensemble size Ensemble verification Given 1 RR model (e.g., HBV), 1 observation dataset (e.g., SMOS), and 1 assimilation technique (e.g., EnKF), we can obtain 2300 different results!!! The task can be even more difficult if we consider different catchments, climatic, soil, land use conditions, …. … for a complex topic? Only changing the cooking techniques
  • 20. Tiber River Basin Basin Area (km2) Tevere at Ponte Felcino 2080 Nestore at Marsciano 725 Chiani at Morrano 457 Topino at Bevagna 440 Marroggia at Azzano 258 Niccone at Migianella 137 Rainfall-runoff data from 1989 at hourly time resolution 6 sub- catchments (140-2080 km²) A systematic study…
  • 22. RAINFALL SOIL MOISTURE The soil moisture variations are strongly related to the amount of rainfall falling into the soil. Therefore, we can use soil moisture observations for estimating rainfall by considering the “soil as a natural raingauge”. Doing hydrology backward
  • 23. Is it raining? radar raingauge Remote sensing of rainfall TOP-DOWN PERSPECTIVE BOTTOM-UP PERSPECTIVE: CAN WE USE SOIL MOISTURE DATA TO INFER THE AMOUNT OF WATER FALLING INTO THE SOIL? “Top down” vs “bottom up”
  • 24. Ptrue=94 mm With only two overpasses the bottom up approach provides a better estimate of the accumulated rainfall Pbottom-up=(92-2)= 90 mm 5 0 2 8 The underestimation is due to the satellite overpasses in period with low rainfall Ptop-down=(5+0+2+8)*4= 60 mm 2 92 “Top down” vs “bottom up”
  • 25. precipitation surface runoff evapotranspiration drainage soil water capacity relative saturation Inverting for p(t): = soil depth X porosity Assuming: + + during rainfall Soil water balance equation SM2RAIN algorithm
  • 26. SM2RAIN dataset from ASCAT, 0.25°, 2007-2013, freely available SM2RAIN papers … so far!
  • 27. calibration validation 0.75<R<0.95 In situ soil moisture observations R fRMSE fRMSE R Application to in situ observations …
  • 28. Correlation map between 5-day rainfall from GPCC and the rainfall product obtained from the application of SM2RAIN algorithm to ASCAT, AMSR-E and SMOS data plus TMPA 3B42RT (VALIDATION period 2010-2011) … and to satellite data: global scale
  • 29.  2007-2009  ERA-Interim as benchmark  5-day cumulated The correlation is 25% higher than TMPA real time rainfall product 0.504  0 .640 Integration of multiple datasets SM2RAIN (ASCAT+QUIKSCAT) TMPA (3B42RT) Median correlation (+/- 50° lat. band) = 0.640 Median correlation (+/- 50° lat. band) = 0.504 TOP-DOWN BOTTOM-UP
  • 30. Time step: 1-day Bottom up + Top down TOP-DOWN BOTTOM-UP TOP-DOWN BOTTOM-UP Central Italy: R=0.86
  • 31. Future directions … Improving, testing, and integrating NEW monitoring techniques able to provide soil moisture measurements at catchment scale: COSMOS, GPS, Electromagnetic induction, Remote sensing (e.g., SMAP), … Investigating the assimilation of in situ and satellite soil moisture observations in rainfall-runoff modelling for different basins, climates, … … also in contrast with conventional hydrological approaches (e.g., assimilation of river discharge) SM2RAIN: from research to operational applications, thanks to funding from new research project starting in September: ESA SMOS+rainfall, ESA CCI, EUMETSAT H-SAF
  • 32. … and open issues How to reduce the spatial scale gap between in situ measurements, modelling, and remote sensing? What is the role of soil moisture spatial variability? Absolute soil moisture or temporal anomalies? Spatial or temporal variability? Surface or root-zone measurements? How much improvement can we expect from using in situ and satellite soil moisture observations in hydrological applications? Is it really useful? What is the role of soil moisture spatial variability? Are we able to model/simulate soil moisture spatial variability? Models usually provide good simulation for soil moisture temporal evolution, but not in space
  • 33. This presentation is available for download at: http://hydrology.irpi.cnr.it/repository/public/presentations/2015/ Wageningen-l.-brocca FOR FURTHER INFORMATION URL: http://hydrology.irpi.cnr.it/people/l.brocca URL IRPI: http://hydrology.irpi.cnr.it