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69th SWCS International Annual Conference “Making Waves in Conservation: Our Life on Land and Its Impact on Water” July 27-30, 2014 Lombard, IL
Citation preview
Erosion and Runoff Evaluation in
Goodwater Creek Experimental
Watershed using the SWAT-T Model
Sitarrine Thongpussawal, PhD Candidate
C. Gantzer, Professor, University of Missouri C. Baffaut, Research hydrologist, USDA- ARSH. Shao, Fellow, University of Guelph, Canada
Soil & Atmospheric Sciences
University of Missouri
Introduction
• Terracing is a conservation practices to reduce
erosion and intercept runoff from steep lands and is
widely used for soil and water conservation (Dorren and
Rey, 2004; Neibling and Thompson, 1992).
• Chow et al. (1999) indicated terracing sloping fields
in combination with grassed waterways and contour
planting in Canada decreased soil loss from an
average of 20 t/ha to less than 1 t/ha, and reduced
25% of the runoff.
Terrace Geometry
Cutslope or Riser
Photo courtesy USDA NRCS
(after Shao et al., 2013)
Frontslope or Bed
Undisturbed
Terrace Unit
LuLb Lb
Lterrace
LrLr Lr
A terrace unit = 3 segments
• An undisturbed segment,• Two riser segments, and• A bed segment
What is SWAT-T ?
• “A modified terrace algorithm of Soil and
Water Assessment Tool (SWAT)” developed
by Shao et al. (2013) and incorporated into
SWAT 2009 to simulate the effects of terraces
for difference practices on erosion and runoff
at a watershed scale.
Comparison of SWAT and SWAT-T
SWAT SWAT-T
Approximately estimates the
effects caused by land shape
changes after installing of
terraces using average slope
length
Estimates specific effect by
defining the slope length and
slope steepness of each
segment of a terrace unit
Lacks simulation of added
infiltration and evaporation of
water trapping and storage in
terraces
Effectively simulate added infiltration and evaporation of water trapping and storage in terraces
• SWAT-T model was evaluated for terraced fields
with different crop managements and soils in
Frankling County, Kansas (after Shao et al., 2013).
• The model showed good performance for runoff and
sediment simulation at field-scale (after Moriasi et al., 2007) .
• However, no watershed-scale evaluation has been
undertaken with SWAT-T.
SWAT-T Evaluation
OBJECTIVE
• To evaluate annual and monthly SWAT-T
performance compared to observed
data of Goodwater Creek Experimental
Watershed (GWEC) from 1993-2010.
Materials and Methods
Goodwater Creek Experimental Watershed
• Boone and Audrain Counties of North Central Missouri
• Area: 73 km2
• No. of Sub basins: 7• No. of Hydrologic
Response Units (HRU): 183
Study Area
Mexico 79.6%
Belknap 2.6%
Putnam 5.2%
Adco 7.1%
Leonard 5.4%
Total 100%
Soils
LegendMexico
Belknap
Putnam
Adco
Leonard
Soil Map of Goodwater Creek
Source: USDA-ARS-Cropping Systems and Water Quality Research Unit (CSWQ)
0-0.5 9.8%
0.5-1.0 2.9%
1.0-2.0 75.8%
> 3.0 2.1%
Total 100%
Slope Slope Classes of Goodwater Creek
Source: USDA-ARS-CSWQ
Agriculture 78.3%
Forest 2.6%
Pasture 9.8%
Residential 4.7%
Other 4.8%
Land Use Land Use of Goodwater Creek
Source: USDA-ARS-CSWQ
• Problems with degraded water quality from sediment,
nutrients and herbicides.
• High potential of runoff
since the watershed has
mostly claypan soil.
Current Soil and Water Problems of Study Area
Photo courtesy Young, F.J., 1995
Data Source
Digital Elevation Model (DEM) USDA/ARS,Cropping
Systems and
Water Quality
Research Unit
(CSWQ),
Columbia, MO
Digital Soil Map
Digital land use map
Crop management data from 1993-2010
Terrace areas and locations
Sources of Input Data
Data AvailabilityData Year Source
The climate data: -Daily precipitation -Daily temperature-Relative humidity-Solar radiation-Wind speed
1993 - 2010 USDA/ARS,
CSWQ
Hydrologic data
-Daily stream flow data
-Daily sediment data
1993 - 2010
1993 - 2010
Study ProcedureData preparation and Input
Model Setup
Model Simulations
Model Calibration & Performance Evaluation
Model Validation & Performance Evaluation
Analysis & Discussions
DEM, Land Use, Soils, Climate
• Watershed delineation,• Identify terrace fraction,• Define slope length and
steepness
• Adjust sensitive parameters for erosion and runoff
• Evaluate model performance according to R2, NSE, RSR and PBIAS
Location of Goodwater Creek
Terraced FractionSub Basin 2
Crop land 16.3 km2
Terrace area 2.1 km2
Terraced Fraction:
16.30/2.13 = 0.13
LegendStream gages
Weather station
Precipitation
gages
W1
W3
W2
Source: USDA-ARS-CSWQ
Terrace simulation algorithm in SWAT-T
after Shao et al., 2013
Terrace simulation algorithm in SWAT-T
After Shao et al., 2013
Results of Flow
Results of Average Annual Flow Calibration
Model Performance during Annual Flow Calibration
Variable Period Time Step R2 NSE RSR PBIAS
Flow 1993-2001
Annual 0.94 0.91 0.28 -6.96
Performance Rating VeryGood
VeryGood
VeryGood
VeryGood
Results of Average Annual Flow Validation
Model Performance during Annual Flow Validation
Variable Period Time Step R2 NSE RSR PBIAS
Flow 2002-2010
Annual 0.97 0.95 0.20 5.60
Performance Rating VeryGood
VeryGood
VeryGood
VeryGood
Results of Average Monthly Flow Calibration
Model Performance during Monthly Flow Calibration
Variable Period Time Step R2 NSE RSR PBIAS
Flow 1993-2001
Monthly 0.77 0.71 0.51 -6.85
Performance Rating VeryGood
Good Good VeryGood
Results of Average Monthly Flow Validation
Model Performance during Monthly Flow Validation
Variable Period Time Step R2 NSE RSR PBIAS
Flow 2002-2010
Monthly 0.73 0.66 0.56 5.63
Performance Rating Good Good Good VeryGood
Results of Sediment
Results of Average Annual Sediment Calibration
Model Performance during Annual Sediment Calibration
Variable Period Time Step R2 NSE RSR PBIAS
Sediment 1993-2001
Annual 0.78 0.53 0.64 -33.74
Performance Rating VeryGood
Good Satisfactory Satisfactory
Results of Average Annual Sediment Validation
Model Performance during Annual Sediment Validation
Variable Period Time Step
R2 NSE RSR PBIAS
Sediment 2002-2010
Annual 0.42 0.36 0.76 -12.73
Results of Average Annual Sediment Validation
Model Performance during Annual Sediment Validation
Variable Period Time Step
R2 NSE RSR PBIAS
Sediment 2002-2010
Annual 0.42 0.36 0.76 -12.73
Results of Average Monthly Sediment Calibration
Model Performance during Monthly Sediment Calibration
Variable Period Time Step
R2 NSE RSR PBIAS
Sediment 1993-2001
Monthly 0.82 0.49 0.60 -33.75
Performance Rating Very Good Satisfactory Satisfactory
Results of Average Monthly Sediment Validation
Model Performance during Monthly Sediment Validation
Variable Period Time Step
R2 NSE RSR PBIAS
Sediment 2002-2010
Monthly 0.29 -0.59 1.21 22.29
Results of Average Monthly Sediment Validation
Model Performance during Monthly Sediment Validation
Variable Period Time Step
R2 NSE RSR PBIAS
Sediment 2002-2010
Monthly 0.29 -0.59 1.21 22.29
Ongoing Work• Cross check observed sediment data with USDA-
ARS.
• Identify outlier values and redo calibration and
validation.
• Compare SWAT-T with SWAT for erosion and runoff
simulation at HRU scale.
Discussions
SUMMARY• SWAT-T is a terraced algorithm incorporated
into SWAT 2009 to simulate the terrace
effects in difference management practices
at watershed scale.
• It provides an alternative to predict terrace
benefit to conservation of soil and water by
modeling terrace effect for terraced HRUs.
Summary
• Results of SWAT-T calibration showed the
feasibility of simulation for erosion and runoff
from terraced fields, but need to improve
validation results.
• Future work, compare SWAT-T with SWAT for
erosion and runoff simulation at HRU scale.
Acknowledgement
Dr. Clark Gantzer University of MissouriDr. Claire Baffaut USDA-ARS Dr. Stephen Anderson University of MissouriDr. Hui Shao University of Guelph, Canada Dr. Fessehaie Ghidey USDA-ARS
Funding and Support: University of Missouri, Mizzou Advantage
Royal Thai Government/Land Development Department (LDD)
University of Missouri, Agric. Expt. Stn.
USDA-ARS Cropping Systems and Water Quality Unit
Questions
The hillside rice field terraces of Thailand
www.reddit.com
HRUSlope Steepness (%) Slope Length (m)
Undisturbed Bed Riser Undisturbed Bed Riser 15 0.015 0.05 0.05 37.0 4.0 4.0 16 0.015 0.05 0.05 37.0 4.0 4.0 17 0.015 0.05 0.05 37.0 4.0 4.0 18 0.015 0.05 0.05 37.0 4.0 4.0 19 0.015 0.05 0.05 37.0 4.0 4.0 20 0.015 0.05 0.05 37.0 4.0 4.0 21 0.015 0.05 0.05 37.0 4.0 4.0 22 0.015 0.05 0.05 37.0 4.0 4.0
Defining slope length and steepness of segments in Sub basin 2
Variable Parameter File Range Default Value
Calibrated Value
Flow SFTMP .bsn 1.0 1.5SMTMP .bsn 0.5 -2.5SMFMN .bsn 4.5 1.5SNOCOVMX .bsn 1.0 25ESCO .bsn, .hru [0,1] 0.95 0.90SURAG .bsn 4.0 1.0SHALLIST .gw 0.5 600ALPHA_BF .gw [0,1] 0.048 0.4QWQMN .gw [0,1,000] 0.00 150GW_REVAP .gw [0.02,0.2] 0.02 0.055*REVAPMN .gw 1.0 125
Default and Calibrated Values of SWAT-T calibration parameters for Flow
* : Hru 15-22
Variable Parameter File Range Default Value
Calibrated Value
Sediment USLP_P .mgt [0,1] 1.0 0.70USLE_K .sol [-25,25] 0.43 0.28USLE_C Crop.dat for corn & soybean were adjusted according to
the values given by Alberts et al. 1984CH_EROD .rte [0,1] 0.0 0.6CH_COV2 .rte [0,1] 0.0 0.6ADJ_PKR .bsn 0.0 0.8PRF .bsn 1.0 0.8SPCON .bsn [0.0001,0.01] 0.0001 0.0055SPEXP .bsn [1,2] 1.0 1.25
Default and Calibrated Values of SWAT-T calibration parameters for Sediment
• A watershed in SWAT is divided into several sub-
basins.
• Sub-basins are further sub-divided into hydrologic
response units (HRUs) that are comprised of
homogeneous soil, land use, and slope.
• The HRUs represent percentages of the sub-basin
area and are not spatially located within a SWAT
simulation (Baffaut et al., 2014; Gassman et al., 2007).
Soil and Water Assessment Tool (SWAT)
• SWAT-T model was tested using annual crop yield
and event runoff and sediment data sets collected
at a six-plot terraced field with different crop
managements and soils in Frankling County,
Kansas (after Shao et al., 2013).
• The runoff simulation was satisfactory (after Moriasi et
al., 2007) with Nash-Sutcliffe model efficiency (NS)
always > 0.6 for both the calibration and validation
simulations
SWAT-T Evaluation
• For the sediment simulation, SWAT-T performed
satisfactory for all calibration of till and no-till plots,
but less satisfactory for the validation of no-till
plots.
• Calibration showed the feasibility of simulating
sediment and runoff from terraced fields using
SWAT-T, but need to do more research with SWAT-
T across a variety of soil and topography condition.
SWAT-T Evaluation
Discussions• SWAT-T performed well to simulate runoff in both
calibration and validation of annual and monthly time
step with all R2 and NS are higher 0.65.
• In sediment simulation, SWAT-T performed
satisfactory during calibration of annual and monthly
time step, but less consistent during validation.
Observed sediment
data
Note:
• Outliers
• Non-linearity
Discussions
• Sediment observed data is not statistical significant
Discussions
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