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Remote Sensing Based Soil Moisture
Detection
Sanaz Shafian, Stephan J. Maas
Department of Plant and Soil Science
Texas Tech University
Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Introduction


Soil moisture influences




Monitoring of plant water requirements
Water resources and irrigation management
Surface energy partitioning between the sensible and
latent heat flux

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Introduction


Challenges of directly soil moisture measurement



Expensive
Necessity of using surface meteorological observations




Not readily available over large areas
Produce point type measurements
Restricted to specific locations

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Statement of problem


Satellite remote sensing offers a means of measuring soil
moisture





Across a wide area
Continuously

Key variables in soil moisture estimation



Vegetation cover
Surface temperature

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Statement of problem


Most current soil moisture estimation methods require





Additional ancillary data
Precise calibration of the surface temperature
 Expensive
 Time consuming
Using NDVI in soil moisture estimation


NDVI is a greenness index does not have physical
interpretation

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Objectives






To demonstrate how Landsat and other similar data may
be used to estimate temporal and spatial patterns of soil
moisture status
To investigate the potentials of using a combination of
multiple GCTIR spectral signatures to estimate soil
moisture from space and to find the algorithm that will
be best-suited for monitoring soil moisture
To compare the results with soil moisture from direct
measurements

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Literature review






The Concept of using data from TIR band to monitor
canopy water stress was originally proposed by
Jackson(1977)
Carlson (1989) studied the TsVI feature space
properties and discovered that changes in soil moisture
could be described within the TsVI ‘triangle’
Moran et al. (1994) introduced a concept termed the
‘vegetation index–temperature (VIT) trapezoid’ for the
estimation of LE fluxes using the TsVI domain in
areas of partial vegetation cover

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Literature review




Gillies and Carlson (1995) introduced a method for the
retrieval of spatially distributed maps of soil moisture
availability (Mo), which they termed the ‘triangle’
method
Sandholt et al. (2002) suggested a temperature
vegetation dryness index (TVDI) for each pixel in
trapezoid based on defining slope of dry edge

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

GCTIR Space


Observed properties of the GCTIR Space


There is a relationship between ground cover (GC) and
surface thermal emittance (TIR) of a given region


Shape of the relationship is a truncated triangle or a
trapezoid

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

GCTIR Space


Observed properties of the GCTIR Space


GC increases along the y-axis




Bare soil signal is gradually masked by vegetation
contribution

For a given GC, when TIR increases soil moisture will
decrease

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

GCTIR Space


Observed properties of the GCTIR Space




Minimum TIR value at the wet edge (maximum soil moisture)
Maximum TIR value at the dry edge (Minimum soil moisture)
The relative value of soil moisture at each pixel can be defined
in terms of its position within the trapezoid /or triangle

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Description of the PSMI Method


Modeling the trapezoid  triangle


Image processing


Produce ground cover images by using PVI method
• Red and NIR bands

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Description of the PSMI method


Modeling the trapezoid  triangle


Image processing




Produce GCTIR scatter plot for each image
Normalizing TIR between 0 and 1
Produce Normalized GCTIR scatter plot

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Description of the PSMI method






Decrease atmospheric effect
Normalized TIR can be compared with normalized
surface temperature
Different scatter plots in
different times can be
compared
GC and TIR are in the
same range

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Description of the PSMI method


Modeling the trapezoid  triangle


Consider the line that passes through the origin as the
reference of soil moisture






GC = 0
TIR = 0
Slope = - 45°

Calculate perpendicular
distance from each
pixel from this line

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Description of the PSMI method


Modeling the trapezoid  triangle


Normalizing the distance between 0 and 1



Considering the effect of GC

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Description of the PSMI method


Calculate PSMI

So, as PSMI goes from
0 to 1, you go from low
to high soil moisture.

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Materials


Study area




Measuring soil moisture using TDR probe in 19 different
fields

Satellite Imagery




6 images from Landsat 7(ETM+)( 2012 and 2013
growing season)
4 images from Landsat 8(LCDM)( 2013 growing season)

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Results
 GC/TIR space is well defined in all cases

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Results


Comparison between measured and estimated soil
moisture

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Results


Comparison between measured and estimated soil
moisture

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Results


Creating soil moisture map


Spatial variation of soil moisture using PSMI

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Conclusions








GCTIR space can be used instead VITs space to
estimate soil moisture
GCTIR space is well defined in all cases
PSMI is always between 0 and 1
PSMI describes distribution of soil moisture in
GCNormalized TIR space
PSMI is closely related to measured soil moisture
PSMI and measured soil moisture have similar spatial
pattern

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Future work





Using more data to test the robustness of the method
over large areas
Using different sets of satellite imagery (e.g. AVHRR) to
derive PSMI
Use of PSMI for driving, updating, and validating
hydrological models

Beyond Diagnostics: Insights and Recommendations from Remote Sensing
Texas Tech University

Acknowledgment




This project was funded by Texas Alliance Water
Conservation (TAWC)
We would like to thank John Deere Company for
sharing soil moisture data

Beyond Diagnostics: Insights and Recommendations from Remote Sensing

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Remote Sensing Based Soil Moisture Detection

  • 1. Remote Sensing Based Soil Moisture Detection Sanaz Shafian, Stephan J. Maas Department of Plant and Soil Science Texas Tech University Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 2. Texas Tech University Introduction  Soil moisture influences    Monitoring of plant water requirements Water resources and irrigation management Surface energy partitioning between the sensible and latent heat flux Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 3. Texas Tech University Introduction  Challenges of directly soil moisture measurement   Expensive Necessity of using surface meteorological observations    Not readily available over large areas Produce point type measurements Restricted to specific locations Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 4. Texas Tech University Statement of problem  Satellite remote sensing offers a means of measuring soil moisture    Across a wide area Continuously Key variables in soil moisture estimation   Vegetation cover Surface temperature Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 5. Texas Tech University Statement of problem  Most current soil moisture estimation methods require    Additional ancillary data Precise calibration of the surface temperature  Expensive  Time consuming Using NDVI in soil moisture estimation  NDVI is a greenness index does not have physical interpretation Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 6. Texas Tech University Objectives    To demonstrate how Landsat and other similar data may be used to estimate temporal and spatial patterns of soil moisture status To investigate the potentials of using a combination of multiple GCTIR spectral signatures to estimate soil moisture from space and to find the algorithm that will be best-suited for monitoring soil moisture To compare the results with soil moisture from direct measurements Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 7. Texas Tech University Literature review    The Concept of using data from TIR band to monitor canopy water stress was originally proposed by Jackson(1977) Carlson (1989) studied the TsVI feature space properties and discovered that changes in soil moisture could be described within the TsVI ‘triangle’ Moran et al. (1994) introduced a concept termed the ‘vegetation index–temperature (VIT) trapezoid’ for the estimation of LE fluxes using the TsVI domain in areas of partial vegetation cover Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 8. Texas Tech University Literature review   Gillies and Carlson (1995) introduced a method for the retrieval of spatially distributed maps of soil moisture availability (Mo), which they termed the ‘triangle’ method Sandholt et al. (2002) suggested a temperature vegetation dryness index (TVDI) for each pixel in trapezoid based on defining slope of dry edge Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 9. Texas Tech University GCTIR Space  Observed properties of the GCTIR Space  There is a relationship between ground cover (GC) and surface thermal emittance (TIR) of a given region  Shape of the relationship is a truncated triangle or a trapezoid Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 10. Texas Tech University GCTIR Space  Observed properties of the GCTIR Space  GC increases along the y-axis   Bare soil signal is gradually masked by vegetation contribution For a given GC, when TIR increases soil moisture will decrease Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 11. Texas Tech University GCTIR Space  Observed properties of the GCTIR Space    Minimum TIR value at the wet edge (maximum soil moisture) Maximum TIR value at the dry edge (Minimum soil moisture) The relative value of soil moisture at each pixel can be defined in terms of its position within the trapezoid /or triangle Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 12. Texas Tech University Description of the PSMI Method  Modeling the trapezoid triangle  Image processing  Produce ground cover images by using PVI method • Red and NIR bands Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 13. Texas Tech University Description of the PSMI method  Modeling the trapezoid triangle  Image processing    Produce GCTIR scatter plot for each image Normalizing TIR between 0 and 1 Produce Normalized GCTIR scatter plot Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 14. Texas Tech University Description of the PSMI method     Decrease atmospheric effect Normalized TIR can be compared with normalized surface temperature Different scatter plots in different times can be compared GC and TIR are in the same range Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 15. Texas Tech University Description of the PSMI method  Modeling the trapezoid triangle  Consider the line that passes through the origin as the reference of soil moisture     GC = 0 TIR = 0 Slope = - 45° Calculate perpendicular distance from each pixel from this line Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 16. Texas Tech University Description of the PSMI method  Modeling the trapezoid triangle  Normalizing the distance between 0 and 1  Considering the effect of GC Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 17. Texas Tech University Description of the PSMI method  Calculate PSMI So, as PSMI goes from 0 to 1, you go from low to high soil moisture. Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 18. Texas Tech University Materials  Study area   Measuring soil moisture using TDR probe in 19 different fields Satellite Imagery   6 images from Landsat 7(ETM+)( 2012 and 2013 growing season) 4 images from Landsat 8(LCDM)( 2013 growing season) Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 19. Texas Tech University Results  GC/TIR space is well defined in all cases Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 20. Texas Tech University Results  Comparison between measured and estimated soil moisture Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 21. Texas Tech University Results  Comparison between measured and estimated soil moisture Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 22. Texas Tech University Results  Creating soil moisture map  Spatial variation of soil moisture using PSMI Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 23. Texas Tech University Conclusions       GCTIR space can be used instead VITs space to estimate soil moisture GCTIR space is well defined in all cases PSMI is always between 0 and 1 PSMI describes distribution of soil moisture in GCNormalized TIR space PSMI is closely related to measured soil moisture PSMI and measured soil moisture have similar spatial pattern Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 24. Texas Tech University Future work    Using more data to test the robustness of the method over large areas Using different sets of satellite imagery (e.g. AVHRR) to derive PSMI Use of PSMI for driving, updating, and validating hydrological models Beyond Diagnostics: Insights and Recommendations from Remote Sensing
  • 25. Texas Tech University Acknowledgment   This project was funded by Texas Alliance Water Conservation (TAWC) We would like to thank John Deere Company for sharing soil moisture data Beyond Diagnostics: Insights and Recommendations from Remote Sensing