SlideShare une entreprise Scribd logo
1  sur  20
Télécharger pour lire hors ligne
DIGITAL SOIL
MAPPING FOR
HYDROLOGICAL
MODELLING George van Zijl
Johan van Tol
Eddie Riddell
Daniel Fundisi
Hard rock C horizon showing redox mottling
Prismatic impermeable horizon Permeable soil horizon
CONCEPTUAL HYDROLOGICAL RESPONSE MODEL
HYDROPEDOLOGY
?
?
Soil Map
AIMS
Create a soil map of area with DSM
Use soil map to create CHRM map
Use CHRM map to configure ACRU
Assess model outputs
HYPOTHESIS
Soil Information will improve model accuracy
STEVENSON HAMILTON RESEARCH SUPERSITE
• Geology: Granite
• MAP: 537 mm/a
• Vegetation: Savannah
• Land Use: Natural veld
MATERIAL AND METHODS
• Soil Map
– SoLIM rule based
– Expert knowledge approach
– Environmental covariates
• Satellite imagery (SPOT + Landsat)
• DEM - SUDEM (van Niekerk, 2012)
• Remotely sensed Biomass and ET (eLEAF)
– 119 Observations
– Functional soil class map
– 73% validation point accuracy
MATERIAL AND METHODS
• Soil Map
MATERIAL AND METHODS
• Soil Map
• Hillslopes
MATERIAL AND METHODS
• Soil Map
• Hillslopes
• CHRM
MODELLING
ACRU CONFIGURATIONS
• Lumped
– Average soil values for catchment
• ACRU 2000
– 2 Soil layers
– Groundwater store
• ACRUint
– 2 Soil Layers
– Int-ermediate vadoze zone
– Groundwater store
ACRU CONFIGURATION
THREE QUESTIONS
• Does the soil info improve the modelling?
– ACRU lumped vs ACRU 2000 and ACRUint
• Does the introduction of intermediate vadoze zone (IVZ)
improve modelling?
– ACRU 2000 vs ACRUint
• What is optimal scale for modelling?
– Stream Orders
– Time Series
STREAMFLOW MODEL OUTPUTS – 3RD ORDER
0
20
40
60
80
100
120
0
1
2
3
4
5
Rainfall
(mm)
Q
(mm
day
-1
)
Rainfall ACRU_lumped ACRU2000 ACRU_int Observed
0
100
200
300
400
500
600
0
20
40
60
80
100
120
140
160
2012/11/15
2012/11/22
2012/11/29
2012/12/06
2012/12/13
2012/12/20
2012/12/27
2013/01/03
2013/01/10
2013/01/17
2013/01/24
2013/01/31
2013/02/07
2013/02/14
2013/02/21
2013/02/28
2013/03/07
2013/03/14
Cum.
Rainfall
(mm)
Cum.
flow
(mm)
DOES SOIL INFO IMPROVE MODEL?
Catchment
Model run (level of
detail) R2 NS RMSE
1
st
order
ACRU_Lumped 0.49 -7.62 6.21
ACRU2000 0.57 -0.51 6.22
ACRU-Int 0.51 -0.71 6.62
2
nd
order
ACRU_Lumped 0.57 0.52 2.10
ACRU2000 0.83 0.72 1.55
ACRU-Int 0.87 0.79 1.36
3
rd
order
ACRU_Lumped 0.82 0.67 2.89
ACRU2000 0.90 0.72 2.68
ACRU-Int 0.91 0.73 2.63
DOES SOIL INFO IMPROVE MODEL?
Catchment
Model run (level of
detail) R2 NS RMSE
1
st
order
ACRU_Lumped 0.49 -7.62 6.21
ACRU2000 0.57 -0.51 6.22
ACRU-Int 0.51 -0.71 6.62
2
nd
order
ACRU_Lumped 0.57 0.52 2.10
ACRU2000 0.83 0.72 1.55
ACRU-Int 0.87 0.79 1.36
3
rd
order
ACRU_Lumped 0.82 0.67 2.89
ACRU2000 0.90 0.72 2.68
ACRU-Int 0.91 0.73 2.63
CONCLUSIONS
• Soil map for large area could be created with DSM
methods
• Soil map used to create hillslope based CHRM’s
• CHRM map could be used to configure ACRU
CONCLUSIONS
• Indications are:
• Soil info improved modelling
• Introduction of IVZ improved modelling
• 2nd / 3rd order best spatial scale to model at
• Inconclusive evidence for temporal scale
Water Research Commission
University of the Free State
SANPARKS
Faith Jumbi
Daniel Fundisi

Contenu connexe

Similaire à Soil_Mapping_Hydro-Modelling_GDSMW 2014.pdf

Kvt mapping of_icing
Kvt mapping of_icingKvt mapping of_icing
Kvt mapping of_icing
Winterwind
 
Groundwater Modelling Application for Waterworks
Groundwater Modelling Application for WaterworksGroundwater Modelling Application for Waterworks
Groundwater Modelling Application for Waterworks
Tapesh Ajmera
 
Using Very High Resolution Satellite Images for Planning Activities in Mining
Using Very High Resolution Satellite Images for Planning Activities in MiningUsing Very High Resolution Satellite Images for Planning Activities in Mining
Using Very High Resolution Satellite Images for Planning Activities in Mining
Argongra Gis
 
Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...
Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...
Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...
imar-uniri
 

Similaire à Soil_Mapping_Hydro-Modelling_GDSMW 2014.pdf (20)

LINUX Tag 2008: 4D Data Visualisation and Quality Control
LINUX Tag 2008: 4D Data Visualisation and Quality ControlLINUX Tag 2008: 4D Data Visualisation and Quality Control
LINUX Tag 2008: 4D Data Visualisation and Quality Control
 
Presentation on the background theory of InSAR
Presentation on the background theory of InSARPresentation on the background theory of InSAR
Presentation on the background theory of InSAR
 
Gis
GisGis
Gis
 
Master's course defense presentation in Water Resource Management and GIS
Master's course defense presentation in Water Resource Management and GIS  Master's course defense presentation in Water Resource Management and GIS
Master's course defense presentation in Water Resource Management and GIS
 
Kvt mapping of_icing
Kvt mapping of_icingKvt mapping of_icing
Kvt mapping of_icing
 
Groundwater Modelling Application for Waterworks
Groundwater Modelling Application for WaterworksGroundwater Modelling Application for Waterworks
Groundwater Modelling Application for Waterworks
 
Workshop on Storm Water Modeling Approaches
Workshop on Storm Water Modeling ApproachesWorkshop on Storm Water Modeling Approaches
Workshop on Storm Water Modeling Approaches
 
5 - K Prasad - Weather forecasting in modern age-Sep-16
5 - K Prasad - Weather forecasting in  modern age-Sep-165 - K Prasad - Weather forecasting in  modern age-Sep-16
5 - K Prasad - Weather forecasting in modern age-Sep-16
 
Improving flood resilience - Application of local X-Band Radar Systems in flo...
Improving flood resilience - Application of local X-Band Radar Systems in flo...Improving flood resilience - Application of local X-Band Radar Systems in flo...
Improving flood resilience - Application of local X-Band Radar Systems in flo...
 
DSD-INT 2015 - Model-supported monitoring of coastal turbidity during extensi...
DSD-INT 2015 - Model-supported monitoring of coastal turbidity during extensi...DSD-INT 2015 - Model-supported monitoring of coastal turbidity during extensi...
DSD-INT 2015 - Model-supported monitoring of coastal turbidity during extensi...
 
Land management
Land managementLand management
Land management
 
Simulating tropical meteorology for air quality studies
Simulating tropical meteorology for air quality studiesSimulating tropical meteorology for air quality studies
Simulating tropical meteorology for air quality studies
 
TUgis2010 Conference Presentation
TUgis2010 Conference PresentationTUgis2010 Conference Presentation
TUgis2010 Conference Presentation
 
Langhammer, Miřijovský
Langhammer, MiřijovskýLanghammer, Miřijovský
Langhammer, Miřijovský
 
DSD-INT 2023 Leveraging the results of a 3D hydrodynamic model to improve the...
DSD-INT 2023 Leveraging the results of a 3D hydrodynamic model to improve the...DSD-INT 2023 Leveraging the results of a 3D hydrodynamic model to improve the...
DSD-INT 2023 Leveraging the results of a 3D hydrodynamic model to improve the...
 
Pa Pa Shwe Sin Kyaw.pptx
Pa Pa Shwe Sin Kyaw.pptxPa Pa Shwe Sin Kyaw.pptx
Pa Pa Shwe Sin Kyaw.pptx
 
Using Very High Resolution Satellite Images for Planning Activities in Mining
Using Very High Resolution Satellite Images for Planning Activities in MiningUsing Very High Resolution Satellite Images for Planning Activities in Mining
Using Very High Resolution Satellite Images for Planning Activities in Mining
 
Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...
Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...
Application of Structure-from-Motion Photogrammetry for Erosion Processes Mon...
 
Progress in flood forecasting across Britain from advances in hydrological mo...
Progress in flood forecasting across Britain from advances in hydrological mo...Progress in flood forecasting across Britain from advances in hydrological mo...
Progress in flood forecasting across Britain from advances in hydrological mo...
 
Modelling and Analyzing the Watershed Dynamics using Cellular Automata (CA) -...
Modelling and Analyzing the Watershed Dynamics using Cellular Automata (CA) -...Modelling and Analyzing the Watershed Dynamics using Cellular Automata (CA) -...
Modelling and Analyzing the Watershed Dynamics using Cellular Automata (CA) -...
 

Dernier

development of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virusdevelopment of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virus
NazaninKarimi6
 
Pteris : features, anatomy, morphology and lifecycle
Pteris : features, anatomy, morphology and lifecyclePteris : features, anatomy, morphology and lifecycle
Pteris : features, anatomy, morphology and lifecycle
Cherry
 
Lipids: types, structure and important functions.
Lipids: types, structure and important functions.Lipids: types, structure and important functions.
Lipids: types, structure and important functions.
Cherry
 
The Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptxThe Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptx
seri bangash
 
COMPOSTING : types of compost, merits and demerits
COMPOSTING : types of compost, merits and demeritsCOMPOSTING : types of compost, merits and demerits
COMPOSTING : types of compost, merits and demerits
Cherry
 
Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.
Cherry
 

Dernier (20)

Fourth quarter science 9-Kinetic-and-Potential-Energy.pptx
Fourth quarter science 9-Kinetic-and-Potential-Energy.pptxFourth quarter science 9-Kinetic-and-Potential-Energy.pptx
Fourth quarter science 9-Kinetic-and-Potential-Energy.pptx
 
TransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRings
TransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRingsTransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRings
TransientOffsetin14CAftertheCarringtonEventRecordedbyPolarTreeRings
 
Terpineol and it's characterization pptx
Terpineol and it's characterization pptxTerpineol and it's characterization pptx
Terpineol and it's characterization pptx
 
development of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virusdevelopment of diagnostic enzyme assay to detect leuser virus
development of diagnostic enzyme assay to detect leuser virus
 
Pteris : features, anatomy, morphology and lifecycle
Pteris : features, anatomy, morphology and lifecyclePteris : features, anatomy, morphology and lifecycle
Pteris : features, anatomy, morphology and lifecycle
 
Cot curve, melting temperature, unique and repetitive DNA
Cot curve, melting temperature, unique and repetitive DNACot curve, melting temperature, unique and repetitive DNA
Cot curve, melting temperature, unique and repetitive DNA
 
FAIRSpectra - Enabling the FAIRification of Analytical Science
FAIRSpectra - Enabling the FAIRification of Analytical ScienceFAIRSpectra - Enabling the FAIRification of Analytical Science
FAIRSpectra - Enabling the FAIRification of Analytical Science
 
CONTRIBUTION OF PANCHANAN MAHESHWARI.pptx
CONTRIBUTION OF PANCHANAN MAHESHWARI.pptxCONTRIBUTION OF PANCHANAN MAHESHWARI.pptx
CONTRIBUTION OF PANCHANAN MAHESHWARI.pptx
 
GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry
GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry
GBSN - Biochemistry (Unit 2) Basic concept of organic chemistry
 
Energy is the beat of life irrespective of the domains. ATP- the energy curre...
Energy is the beat of life irrespective of the domains. ATP- the energy curre...Energy is the beat of life irrespective of the domains. ATP- the energy curre...
Energy is the beat of life irrespective of the domains. ATP- the energy curre...
 
Lipids: types, structure and important functions.
Lipids: types, structure and important functions.Lipids: types, structure and important functions.
Lipids: types, structure and important functions.
 
Genome Projects : Human, Rice,Wheat,E coli and Arabidopsis.
Genome Projects : Human, Rice,Wheat,E coli and Arabidopsis.Genome Projects : Human, Rice,Wheat,E coli and Arabidopsis.
Genome Projects : Human, Rice,Wheat,E coli and Arabidopsis.
 
X-rays from a Central “Exhaust Vent” of the Galactic Center Chimney
X-rays from a Central “Exhaust Vent” of the Galactic Center ChimneyX-rays from a Central “Exhaust Vent” of the Galactic Center Chimney
X-rays from a Central “Exhaust Vent” of the Galactic Center Chimney
 
Daily Lesson Log in Science 9 Fourth Quarter Physics
Daily Lesson Log in Science 9 Fourth Quarter PhysicsDaily Lesson Log in Science 9 Fourth Quarter Physics
Daily Lesson Log in Science 9 Fourth Quarter Physics
 
The Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptxThe Mariana Trench remarkable geological features on Earth.pptx
The Mariana Trench remarkable geological features on Earth.pptx
 
COMPOSTING : types of compost, merits and demerits
COMPOSTING : types of compost, merits and demeritsCOMPOSTING : types of compost, merits and demerits
COMPOSTING : types of compost, merits and demerits
 
Understanding Partial Differential Equations: Types and Solution Methods
Understanding Partial Differential Equations: Types and Solution MethodsUnderstanding Partial Differential Equations: Types and Solution Methods
Understanding Partial Differential Equations: Types and Solution Methods
 
Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.Porella : features, morphology, anatomy, reproduction etc.
Porella : features, morphology, anatomy, reproduction etc.
 
Method of Quantifying interactions and its types
Method of Quantifying interactions and its typesMethod of Quantifying interactions and its types
Method of Quantifying interactions and its types
 
ABHISHEK ANTIBIOTICS PPT MICROBIOLOGY // USES OF ANTIOBIOTICS TYPES OF ANTIB...
ABHISHEK ANTIBIOTICS PPT MICROBIOLOGY  // USES OF ANTIOBIOTICS TYPES OF ANTIB...ABHISHEK ANTIBIOTICS PPT MICROBIOLOGY  // USES OF ANTIOBIOTICS TYPES OF ANTIB...
ABHISHEK ANTIBIOTICS PPT MICROBIOLOGY // USES OF ANTIOBIOTICS TYPES OF ANTIB...
 

Soil_Mapping_Hydro-Modelling_GDSMW 2014.pdf

  • 1. DIGITAL SOIL MAPPING FOR HYDROLOGICAL MODELLING George van Zijl Johan van Tol Eddie Riddell Daniel Fundisi
  • 2. Hard rock C horizon showing redox mottling Prismatic impermeable horizon Permeable soil horizon CONCEPTUAL HYDROLOGICAL RESPONSE MODEL
  • 4. AIMS Create a soil map of area with DSM Use soil map to create CHRM map Use CHRM map to configure ACRU Assess model outputs HYPOTHESIS Soil Information will improve model accuracy
  • 5.
  • 6. STEVENSON HAMILTON RESEARCH SUPERSITE • Geology: Granite • MAP: 537 mm/a • Vegetation: Savannah • Land Use: Natural veld
  • 7. MATERIAL AND METHODS • Soil Map – SoLIM rule based – Expert knowledge approach – Environmental covariates • Satellite imagery (SPOT + Landsat) • DEM - SUDEM (van Niekerk, 2012) • Remotely sensed Biomass and ET (eLEAF) – 119 Observations – Functional soil class map – 73% validation point accuracy
  • 9. MATERIAL AND METHODS • Soil Map • Hillslopes
  • 10. MATERIAL AND METHODS • Soil Map • Hillslopes • CHRM
  • 12. ACRU CONFIGURATIONS • Lumped – Average soil values for catchment • ACRU 2000 – 2 Soil layers – Groundwater store • ACRUint – 2 Soil Layers – Int-ermediate vadoze zone – Groundwater store
  • 14. THREE QUESTIONS • Does the soil info improve the modelling? – ACRU lumped vs ACRU 2000 and ACRUint • Does the introduction of intermediate vadoze zone (IVZ) improve modelling? – ACRU 2000 vs ACRUint • What is optimal scale for modelling? – Stream Orders – Time Series
  • 15. STREAMFLOW MODEL OUTPUTS – 3RD ORDER 0 20 40 60 80 100 120 0 1 2 3 4 5 Rainfall (mm) Q (mm day -1 ) Rainfall ACRU_lumped ACRU2000 ACRU_int Observed 0 100 200 300 400 500 600 0 20 40 60 80 100 120 140 160 2012/11/15 2012/11/22 2012/11/29 2012/12/06 2012/12/13 2012/12/20 2012/12/27 2013/01/03 2013/01/10 2013/01/17 2013/01/24 2013/01/31 2013/02/07 2013/02/14 2013/02/21 2013/02/28 2013/03/07 2013/03/14 Cum. Rainfall (mm) Cum. flow (mm)
  • 16. DOES SOIL INFO IMPROVE MODEL? Catchment Model run (level of detail) R2 NS RMSE 1 st order ACRU_Lumped 0.49 -7.62 6.21 ACRU2000 0.57 -0.51 6.22 ACRU-Int 0.51 -0.71 6.62 2 nd order ACRU_Lumped 0.57 0.52 2.10 ACRU2000 0.83 0.72 1.55 ACRU-Int 0.87 0.79 1.36 3 rd order ACRU_Lumped 0.82 0.67 2.89 ACRU2000 0.90 0.72 2.68 ACRU-Int 0.91 0.73 2.63
  • 17. DOES SOIL INFO IMPROVE MODEL? Catchment Model run (level of detail) R2 NS RMSE 1 st order ACRU_Lumped 0.49 -7.62 6.21 ACRU2000 0.57 -0.51 6.22 ACRU-Int 0.51 -0.71 6.62 2 nd order ACRU_Lumped 0.57 0.52 2.10 ACRU2000 0.83 0.72 1.55 ACRU-Int 0.87 0.79 1.36 3 rd order ACRU_Lumped 0.82 0.67 2.89 ACRU2000 0.90 0.72 2.68 ACRU-Int 0.91 0.73 2.63
  • 18. CONCLUSIONS • Soil map for large area could be created with DSM methods • Soil map used to create hillslope based CHRM’s • CHRM map could be used to configure ACRU
  • 19. CONCLUSIONS • Indications are: • Soil info improved modelling • Introduction of IVZ improved modelling • 2nd / 3rd order best spatial scale to model at • Inconclusive evidence for temporal scale
  • 20. Water Research Commission University of the Free State SANPARKS Faith Jumbi Daniel Fundisi