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Article

Hydrologic Response Unit Routing in SWAT to Simulate Effects of Vegetated Filter Strip for South-Korean Conditions Based on VFSMOD

1
Department of Agricultural and Biological Engineering, Purdue University, West Lafayette, IN 47907, USA
2
Depatment of Environmental Science, Kangwon National University, 2 Hyoja-dong, Chuncheon, Gangwon Province, South Korea
3
Depatment of Regional Infrastructure Engineering, Kangwon National University, 2 Hyoja-dong, Chuncheon, Gangwon Province, South Korea
*
Author to whom correspondence should be addressed.
Water 2011, 3(3), 819-842; https://doi.org/10.3390/w3030819
Submission received: 21 March 2011 / Revised: 11 August 2011 / Accepted: 15 August 2011 / Published: 26 August 2011

Abstract

:
The Soil and Water Assessment Tool (SWAT) model has been used worldwide for many hydrologic and Non-Point Source (NPS) Pollution analyses on a watershed scale. However, it has many limitations in simulating the Vegetative Filter Strip (VFS) because it considers only ‘filter strip width’ when the model estimates sediment trapping efficiency and does not consider the routing of sediment with overland flow which is expected to maximize the sediment trapping efficiency from upper agricultural subwatersheds to lower spatially-explicit filter strips. Therefore, the SWAT overland flow option between landuse-subwatersheds with sediment routing capability was enhanced by modifying the SWAT watershed configuration and SWAT engine based on the numerical model VFSMOD applied to South-Korean conditions. The enhanced SWAT can simulate the VFS sediment trapping efficiency for South-Korean conditions in a manner similar to the desktop VFSMOD-w system. Due to this enhancement, SWAT is applicable to simulate the effects of overland flow from upper subwatersheds to reflect increased runoff volume at the lower subwatershed, which occurs in the field if no diversion channel is installed. In this study, the enhanced SWAT model was applied to small watersheds located at Jaun-ri in South-Korea to simulate a diversion channel and spatially-explicit VFS. Sediment can be reduced by 31%, 65%, and 68%, with a diversion channel, the VFS, and the VFS with diversion channel, respectively. The enhanced SWAT should be used in estimating site-specific effects on sediment reduction with diversion channels and VFS, instead of the currently available SWAT, which does not simulate sediment routing in overland flow and does not consider other sensitive factors affecting sediment reduction with VFS.

1. Introduction

In recent years, sediment transport in runoff has been considered one of the serious environmental problems in South-Korea as well as other countries [1,2], there are many methods to prevent soil erosion and sediment inflow into water bodies, through structural and non-structural best management practices (BMPs) to prevent or manage sediment transport. Vegetative Filter Strip (VFS) is one of most effective BMPs to reduce sediment load and pollutants from agricultural fields [3,4,5,6,7,8]. VFS is usually installed at the edge of agricultural areas or the areas along streams, and it is designed to remove not only sediment load but also other pollutants, such as nutrients from runoff by filtration, infiltration, adsorption, absorption, deposition, decomposition, and plant uptake [4]. The dimension of VFS needs to be determined from experimental data under various field and rainfall conditions to obtain the desired pollutant removal results. However, these data are rarely available for site-specific design of VFS. Thus, a physically-based model, capable of simulating the sediment behavior both in VFS and sediment source areas such as agricultural areas, has been used to design the site-specific dimensions of the VFS for expected VFS efficiency. To maximize the effects of VFS on sediment reduction, the amount of runoff volume coming from the upper areas is often controlled with a diversion channel. Significant amounts of runoff can flow into the agricultural area if an agricultural area is located as a lower subwatershed to extensive forest areas. Moreover, if a diversion channel is not installed, the chances are that soil erosion in the agricultural area will be increased by runoff from the forest. Thus, both VFS and the diversion channel are often utilized together to increase sediment deposition and reduce runoff flowing into agricultural areas from upper forest areas. The effects of VFS and diversion channel need to be evaluated before installation in fields to maximize the effects of sediment reduction and to determine the best places and dimensions of VFS and diversion channels.
The semi-distributed, continuous daily time step, and watershed-scale, Soil and Water Assessment Tool (SWAT) model [9,10] has been extensively applied to watersheds [11,12,13,14,15], and has been used as an effective tool for assessing watershed management plans on hydrologic and water quality impacts [16,17,18]. The SWAT model divides the watershed into subwatersheds, and they are further divided into Hydrologic Response Units (HRUs), which are unique combinations of land use/cover and soil types within each subwatershed. In the current SWAT model/interface, the SWAT model does not simulate overland flow and overland flow-driven sediment from upper subwatersheds to lower subwatersheds; only channelized flow and sediment transport through stream networks are simulated if the SWAT ArcView GIS interface is used in delineating subwatersheds and stream networks [19]. Thus, the effects of spatially explicit VFS and diversion channels cannot be simulated with the current SWAT model/interface. The effect of VFS for sediment reduction, moreover, is simulated as a function of only VFS width in the current SWAT, although many other factors affect the trapping efficiency of the VFS [4,20,21,22,23]. Thus, the current SWAT needs to be enhanced to properly model VFS and diversion channels for sediment reduction analysis.
The objectives of this study were to modify SWAT to enable flow and sediment routing (either overland or channelized flow) from upper to lower subwatershed to simulate spatially explicit VFS and diversion channels. We also aim to enhance the SWAT VFS module based on the numerical model VFSMOD to consider upland runoff volume and filter width together for more accurate evaluation of VFS efficiency within SWAT for South-Korean conditions.

2. Materials and Methods

2.1. Limitations of the SWAT for VFS and Diversion Channel Simulation

2.1.1. Limitation of SWAT for Flow and Sediment Routing in Overland Flow

The SWAT model simulates hydrology and water quality from each field (HRU) in the subwatershed, and then simulates flow, sediment, chemicals, and nutrient changes through the stream network with simulated values for all HRUs in each subwatershed. The model reflects various field conditions at a watershed scale. Although the model has been widely used for various researches and applications in many countries over the years, it has limitations in simulating some processes. One of the limitations is the capability of overland flow simulation between an upper subwatershed (i.e., single-landuse subwatershed, such as agricultural field) and lower subwatershed (i.e., single-landuse subwatershed, such as Vegetated Filter Strip). To simulate effects on flow and sediment reduction of various BMPs using SWAT, the subwatersheds (single-landuse subwatershed) are often delineated based on field boundaries and flow paths at micro-scales. To simulate the effects of VFS and diversion channels with SWAT, subwatersheds need to be configured as shown in Figure 1 (single landuse subwatershed for forest and single landuse-subwatershed for agricultural field, i.e., FRST and AGRL), and the flow type needs to be modified so it is described as either overland flow or channelized flow, or sometimes both flow types, depending on the field flow condition. As shown in Figure 1(a), SWAT users need to specify the overland flow option manually with edits in the “fig.fig” SWAT watershed configuration file, which is not an easy task for most SWAT users. In the current SWAT model, sediment routing for overland flow conditions is not enabled as shown in Figure 1(b).
Figure 1. Limitation of the current Soil and Water Assessment Tool (SWAT) model for overland flow and sediment routing.
(a). Channelized flow which is default option in current SWAT GIS interface.
(a). Channelized flow which is default option in current SWAT GIS interface.
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(b). No sediment routing under overland flow condition, also, no overland flow option enabled in the SWAT ArcView GIS interface.
(b). No sediment routing under overland flow condition, also, no overland flow option enabled in the SWAT ArcView GIS interface.
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Through modification of the model and revision of the “fig.fig” that is configuration file of the model, overland flow and sediment routing by overland flow was able to be simulated between subwatersheds to evaluate the effects on sediment reduction by the VFS and diversion channel, which are commonly utilized BMPs in South-Korea and other countries to reduce sediment leaving source areas.
The current SWAT engine/interface assumes only channelized flows are dominant flow types and flow routing is determined when delineating the subwatersheds and stream networks. Thus, to simulate the effects of the VFS and the diversion channels properly, flow type and flow routing need to be modified to reflect the water flow patterns occurring in the real field. Figure 2 partially shows the ‘fig.fig’ file which was modified for our study. Column 1 is the command to route (i.e., 2) or add (i.e., 5) to other storage, the numbers in column 2 represent the hydrograph storage locations which identify the result location after routing simulations. The numbers in column 3 are the reach that the inflow and inputs are routed through, which are identical to the subwatershed numbers if they are written on route command rows. The numbers in column 4 are hydrograph storage locations which contain the data to be routed through the reach. The numbers in column 6 are area fractions of overland flow volume, and if they have no values or ‘0’, it assumes a 100% channelized flow [19]. When the user modifies the file, the number which is already taken as a hydrograph storage location number cannot be overlapped, and the hydrograph storage number cannot be duplicated.
Figure 2. Revision of SWAT configuration file for diversion channel and Vegetative Filter Strip (VFS) simulation.
Figure 2. Revision of SWAT configuration file for diversion channel and Vegetative Filter Strip (VFS) simulation.
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To simulate overland flow type between subwatersheds (single-landuse subwatersheds), flow type between upper a single landuse subwatershed and lower single landuse subwatershed needs to be defined manually before SWAT routing, which is confusing and time-consuming even for experienced SWAT users. Although the revision of the file is not convenient, it is required to mimic the flow in the real field that is hardly considered to be channelized flow in the real field. The limitation of the model is that it does not consider the transportation of sediment from the upper subwatershed to the lower subwatershed under ‘overland flow’ option, only sediment transport through the stream networks is simulated. Therefore, spatially distributed VFS in the model does not receive sediment occurred in upper subwatersheds.
Only the filter strip width parameter named ‘FILTHW’ is available to estimate the reduction of pollutants, based on a regression equation derived from other studies [19]. Figure 3 shows how the model estimates the effects of VFS on sediment reduction. The model estimates VFS by assuming that there is no flow and sediment coming from other places, and that only sediment generated from the agricultural fields (single landuse subwatershed) is reduced with no spatially explicit VFS defined by the parameter.
Figure 3. Limitation of the current SWAT for VFS simulation–No spatial location of the VFS in sediment reduction simulation with the VFS. Only filter width is considered for sediment reduction estimation.
Figure 3. Limitation of the current SWAT for VFS simulation–No spatial location of the VFS in sediment reduction simulation with the VFS. Only filter width is considered for sediment reduction estimation.
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To simulate the effects of VFS and diversion channels in the model with more accuracy, overland flow type and sediment routing from upper to lower subwatershed, and spatially explicit VFS with overland flow type specified need to be made, with modifications in the SWAT model engine and interfaces. To define the spatially explicit VFS installed along agricultural fields, the area of the agricultural field (AGRL) needs to be adjusted to the area of the VFS (Figure 4). In the current SWAT, the spatial location of VFS is not considered, only VFS width specified in the SWAT input parameter is used to estimate sediment reduction with the VFS. To correctly simulate the effects of VFS and diversion channels together with SWAT, flow and sediment from forest areas (FRST) to agricultural areas (AGRL) in overland flow (or with partially overland and partially concentrated flow types), also from agricultural area (AGRL) to the VFS that is located at the edge of agricultural fields (Figure 4) have to be simulated with modifications to the model. This is because the model and its interface are unable to consider the spatial location of the VFS.
Figure 4. Proposed Runoff and Sediment Simulation reflecting spatially-explicit VFS.
Figure 4. Proposed Runoff and Sediment Simulation reflecting spatially-explicit VFS.
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2.1.2. Limitation of SWAT to Estimate Sediment Trapping Efficiency

As described earlier, both transported sediment by overland flow from upper to lower subwatershed and spatially explicit VFS receiving overland flow need to be enabled in the simulation of VFS and diversion channels with the model. However, the sediment trapping efficiency of the filter strip in the model is only a function of filter strip width. Equation 1 shows the sediment trapping efficiency that is used in the model [19].
trapef= 0.367 · (widthfilter strip)0.2967
Where trapef is sediment trapping efficiency and widthfilter strip is the width of the vegetative filter strip (m).
However, numerous studies have shown that the sediment trapping efficiency of VFS is affected by many factors, such as VFS slope, runoff volume from upland areas, soil type, and vegetation characteristics [4,23,24]. Therefore, these factors need to be considered to evaluate pollutant reduction efficiency of the VFS [24] in the VFS simulation. White and Arnold [25] suggested empirical models to estimate sediment reduction efficiency based on runoff loading (mm), saturated hydraulic conductivity (mm h−1), and sediment loading (kg/m2).
When Equation (1) is used for sediment trapping efficiency simulation, the sediment trapping efficiency becomes ‘1’ (i.e., 100% sediment trap with the VFS) with a filter width of 30 m or greater, as shown in Figure 5, irrespective of the magnitude of the storm events and runoff generated from it. Thus, the sediment trapping efficiency module of the SWAT needs to be enhanced or modified to estimate sediment trapping efficiency reflecting other sensitive factors, such as runoff volume.
Figure 5. Limitation of sediment trapping efficiency module in current SWAT.
Figure 5. Limitation of sediment trapping efficiency module in current SWAT.
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2.2. Enhancement and Application of SWAT for VFS and Diversion Channel Simulation

2.2.1. Enhancement of SWAT for Flow and Sediment Routing in Overland Flow

The model has limitations in simulating diversion channels and spatially explicit VFS. The model does not calculate sediment from upper subwatersheds to lower subwatersheds for overland flow, but considers it only by channelized flow. Thus, in this study, the model was modified to route the sediment from upper subwatersheds to lower subwatersheds with overland flow. This updated process is used in the enhanced SWAT to simulate sediment routing from upper upland subwatersheds to lower subwatersheds. The subroutine for the overland flow, called ‘RTOVER’, routes runoff from upper to lower subwatersheds in overland flow. However, no sediment routing is enabled in this subroutine under the ‘overland flow’ option. To consider sediment deposition in a field or subwatershed, the area-based sediment delivery ratio by Vanoi [26] was used in the modified subroutine.
As shown in Figure 6, the ‘ROUTE’ subroutine calls the ‘RTOVER’ subroutine when the overland flow option is given in SWAT. Runoff and pollutant loads, except sediment, are transferred to the receiving watershed in the ‘RTOVER’ subroutine in SWAT and these values are used in the ‘ROUTE’ subroutine. In this study, the ‘RTOVER’ subroutine was modified to transfer sediment from upper subwatersheds to lower subwatersheds after considering the area-based sediment delivery ratio to explain potential sediment deposition.
Figure 6. Enhancement of SWAT Sediment Routing under Overland Flow Type Enhancement of Filter Strip Module in the Current SWAT.
Figure 6. Enhancement of SWAT Sediment Routing under Overland Flow Type Enhancement of Filter Strip Module in the Current SWAT.
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Although the sediment trapping efficiency of filter strips is affected by not only the filter width but also other factors, the filter strip subroutine (named ‘READHRU’ for SWAT2000 and ‘READMGT’ for SWAT2005) considers only filter strip width when it calculates sediment trapping efficiency using Equation 1, and the reduced sediment is calculated in the subroutine ‘FILTER’ of both SWAT2000 and SWAT2005. One of the most effective models to simulate VFS is the Vegetative Filter Strip Modeling System. The model is a field-scale, mechanistic, and storm-based numerical model. The model simulates hydrograph in the source area and calculates outflow, infiltration, and sediment trapping efficiency through VFS [4,21,22,27,28]. Park et al. [23] used the desktop-based VFSMOD-w model [29,30] to identify the most sensitive factors affecting the sediment trapping efficiency and derived a regression equation (Equation 2) to explain VFSMOD-w model behaviors with filter strip width and incoming overland flow volume, which were the most sensitive factors regarding 10,000 VFSMOD-w runs with various field and rainfall conditions [23]. The EI and R2 values for the comparison of the VFSMOD-w simulated results with the values from the regression equations were 0.99 and 0.98, respectively [23], indicating that the regression equation with filter width and incoming runoff volume from source areas could explain the VFSMOD-w behaviors.
Sediment Trapping Efficiency =
(−0.00007345046 × L3 + 0.001558 × L2 − 0.006376×L −0.001189) × ( ln(V) )3 + (0.0009688469 × L3 − 0.020779 × L2 + 0.095153 × L + 0.019348) × ( ln(V) )2 + (−0.004274 × L3 + 0.092846 × L2 −0.487355 × L − 0.10563) × ( ln(V) ) + (0.006381 × L3 − 0.140713 × L2 + 0.869293 × L + 0.19386)
Where L is filter strip width, V is overland flow volume from field.
The subroutine ‘READMGT’ in the current SWAT reads the filter width parameter ‘FILTERW’, and then calculates the sediment trapping efficiency with only filter width using Equation 1. With this trapping efficiency, the subroutine ‘FILTER’ in the current SWAT calculates runoff and pollutant reduction with the VFS (Figure 7(a)). In this study, the ‘TRAPEFF_VFSMOD’ module was written and added to SWAT to calculate sediment reduction with Equation (2) to consider the sediment trapping efficiency with the filter width and runoff volume (Figure 7(b)). Thus, the enhanced VFSMOD-W based module of SWAT can simulate the VFS sediment trapping efficiency for South-Korean conditions in a manner similar to the desktop VFSMOD-W system, since the EI and R2 values were 0.99 and 0.98, respectively.
Figure 7. Enhancement of the SWAT Filter Strip Module.
Figure 7. Enhancement of the SWAT Filter Strip Module.
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2.2.2. Application of Enhanced SWAT for VFS and Diversion Channel Effects Simulation

In this study, a small study watershed, located in Jaun-ri, Gangwon province, South-Korea, was selected to simulate the effects of a diversion channel and VFS on sediment reduction with the enhanced SWAT, which were not possible to simulate with the currently available SWAT model (SWAT 2000/2005). The study watershed, located at coordinate 37°42’32’’N 128°21’34’’E, has two dominant land uses; forest (23.83 ha, 96.17%) and agriculture (1.06 ha, 3.83%). The study watershed soils are composed of clay 7.8%, silt 28.2%, and sand 63%. Maximum and minimum annual precipitation was 1,876 mm and 867 mm from 2000–2006 with an annual average precipitation of 1,396 mm. Approximately 60% of annual precipitation is concentrated during the summer in the watershed, causing significant soil erosion and sediment yield. Average temperature ranged from −24.6~36.5 °C, with a mean temperature of 11.21 °C. Extensive highland agricultural farming is performed at the downstream areas of the study watershed (Figure 8). Thus, the South-Korea government designated this area as a nonpoint source pollutant hotspot area. It is expected that various soil erosion Best Management Practices (BMPs) will be introduced in the study watershed to reduce soil erosion and sediment yields.
Figure 8. Location of Study Watershed–Jaun-ri Watershed, Gangwon, South-Korea.
Figure 8. Location of Study Watershed–Jaun-ri Watershed, Gangwon, South-Korea.
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Four scenarios were planned to compare the effects on sediment reduction of a diversion channel and VFS as shown in Table 1. Scenario 1 represented the current situation with no BMPs. Scenario 2 included diversion channel and was compared with scenario 1 to investigate the effects of a diversion channel on sediment reduction. Scenario 3 included VFS, the results were compared with scenario 1 to identify the effects of the VFS. Scenario 4 included both diversion channel and the VFS, it was compared with scenario 1 to determine the effects of both diversion channel and the VFS. Scenarios 3 and 4 were compared to investigate the effects on sediment reduction of the VFS with and without a diversion channel.
Table 1. Summary of Scenarios.
Table 1. Summary of Scenarios.
Diversion ChannelVFS
Scenario 1Non-ExistenceNon-Existence
Scenario 2ExistenceNon-Existence
Scenario 3Non-ExistenceExistence
Scenario 4ExistenceExistence
In this study, 24 subwatersheds for simulations of scenarios 1 and 2 (diversion channel simulation) (Figure 9) and 26 subwatersheds for simulations of scenarios 3 and 4 (VFS simulation) (Figure 10) were delineated for application of the enhanced SWAT model with an agricultural area boundary burned with the DEM for isolation of the agricultural area as a separate subwatershed (i.e., single-landuse subwatershed). To simulate (1) overland flow/sediment from forest watersheds to the agricultural area for diversion channel effect; (2) overland flow/sediment from the agricultural area to VFS for VFS effect, the 24 and 26 subwatersheds were regrouped as shown in Figure 11 and Figure 12 to explain effects of diversion channel and the VFS on sediment reduction.
Figure 9. Subwatersheds Delineated for Simulation of Diversion Channel.
Figure 9. Subwatersheds Delineated for Simulation of Diversion Channel.
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Figure 10. Subwatersheds Delineated for Simulation of VFS.
Figure 10. Subwatersheds Delineated for Simulation of VFS.
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Figure 11. Twenty-four Subwatersheds and Four Subwatersheds Groups for Diversion Channel Simulation.
Figure 11. Twenty-four Subwatersheds and Four Subwatersheds Groups for Diversion Channel Simulation.
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Figure 12. Twenty-Six Subwatersheds and Five Subwatershed Groups for Diversion Channel and VFS Simulation.
Figure 12. Twenty-Six Subwatersheds and Five Subwatershed Groups for Diversion Channel and VFS Simulation.
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For the simulations of scenarios 1 and 2 with 24 subwatersheds, the 1st subwatershed group (denoted as SG1 hereafter) includes subwatersheds 1, 4, 5, 11, 10, and 22 which are the upper subwatersheds of the agricultural area (subwatershed marked with no. 2). The 2nd subwatershed group (denoted as SG2 hereafter) is the agricultural area (subwatershed marked with no. 2). The 3rd subwatershed group (denoted as SG3 hereafter) includes forest dominant subwatersheds. For the 3rd subwatershed group, subwatersheds numbered 6–9 and 12–21, no overland flow type was specified because the flow and sediment from the 3rd subwatershed group do not affect sediment with the diversion channel and VFS at the agricultural area, marked as the 2nd subwatershed group (i.e., subwatershed no. 2) in Figure 11. The 4th subwatershed group (denoted as SG4 hereafter) includes subwatersheds 3, 23, and 24. For simulation of scenarios 3 and 4 with 26 subwatersheds, the 1st subwatershed group (denoted as SG1 hereafter) includes subwatersheds 1, 6, 7, 12, 13, and 24 which are the upper subwatersheds of the agricultural area (subwatershed marked with no. 2). The 2nd subwatershed group (denoted as SG2 hereafter) is the agricultural area (subwatershed marked with no. 2). The 3rd subwatershed group (denoted as SG3 hereafter) includes forest dominant subwatersheds. For the 3rd subwatershed group, subwatersheds numbered 8–11 and 14–23, no overland flow type was specified because the flow and sediment from the 3rd subwatershed group do not affect sediment with the diversion channel and VFS at the agricultural area, marked as the 2nd subwatershed group (i.e., subwatershed no. 2) in Figure 12. The 4th subwatershed group (denoted as SG4 hereafter) includes subwatersheds 5, 25, and 26. The 5th subwatershed group (denoted as SG5 hereafter) contains only subwatershed no. 4 which is spatially-explicit filter strips.

2.2.3. Effect of Diversion Channel on Sediment Reduction

As stated before, the current SWAT model cannot simulate the effects of a diversion channel because SWAT is not a fully distributed model, but is rather a semi-distributed model. To verify sediment reduction effects of a diversion channel, two scenarios (scenarios 1 and 2) were created as shown in Figure 13. Flow and sediment from SG1 flow into SG2 as overland flow, and flow and sediment from SG2 and SG3 flow into SG4 in “Scenario 1–no diversion channel”. For “Scenario 2–diversion channel”, the flow and sediment from the SG1 do not flow into SG2, instead those flow into SG4 through a diversion channel. Scenarios 1 and 2 were run with modification in the file named ‘fig.fig’ (watershed routing structure file in the SWAT2005) manually (Figure 13).
Figure 13. Watershed Configuration for Diversion Channel Simulation with Enhanced SWAT.
Figure 13. Watershed Configuration for Diversion Channel Simulation with Enhanced SWAT.
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2.2.4. Effect of Diversion Channel and Diversion Channel with VFS on Sediment Reduction

To verify sediment reduction effects of a diversion channel and VFS, two scenarios (Scenario 3 and Scenario 4) were created as shown in Figure 14. The subwatersheds were rearranged with modification in the file “fig.fig” to be compatible with “Scenario 3 and Scenario 4” overland flow and channelized flow (Figure 14). It is assumed that flow and sediment from SG1 flow into SG2 as overland flow, and flow and sediment from SG2 flow into VFS subwatershed group SG5 as overland flow, and flow and sediment from SG3 and SG5 flow into SG4 as channelized flow for “Scenario 3–with VFS”. For “Scenario 4–with VFS and diversion channel”, flow and sediment from SG1 flow directly into SG4, and flow and sediment from SG2 flow into VFS subwatershed group SG5 (Figure 14). First, sediment reduction with the VFS was analyzed by comparing the sediment values from Scenarios 1 and 3 with the enhanced SWAT. Second, sediment reduction with VFS and a diversion channel was analyzed with Scenarios 1 and 4. Third, sediment reduction of a diversion channel when the VFS is installed at the edge of the agricultural areas was analyzed with Scenarios 3 and 4.
Figure 14. Watershed Configuration for VFS and Diversion Channel with VFS Simulation with Enhanced SWAT.
Figure 14. Watershed Configuration for VFS and Diversion Channel with VFS Simulation with Enhanced SWAT.
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3. Results

3.1. Effects of Diversion Channel on Sediment Reduction (Scenario 1 vs. Scenario 2)

Average monthly flow rates at the watershed outlet from Scenarios 1 and 2 were 0.01387 m3/s and 0.01390 m3/s, respectively (Table 2). The maximum flow value of scenario 1 was 0.13860 m3/s in July 2006, and the minimum value was 0.00003 m3/s in February 2005. The maximum flow value of scenario 2 was 0.13860 m3/s in July 2006, and the minimum value was 0.00003 m3/s in February 2005. There was very little difference in estimated flow rates with a diversion channel, as expected. However, the average monthly sediment values of scenarios 1 and 2 were 2.69 metric tons and 1.85 metric tons, respectively. The maximum sediment value of scenario 1 was 39.85 metric tons in July 2006, and the minimum value was 0.00013 metric tons in February 2005. The maximum monthly average sediment value of scenario 2 was 33.84 metric tons in July 2006, and the minimum value was 0.00011 metric tons in February 2005. For the entire simulation period (2000–2006), it is expected that a diversion channel can reduce sediment by 31% (Figure 15).
Table 2. Flow Rate and Sediment Load.
Table 2. Flow Rate and Sediment Load.
Flow Rate(m3/s)Sediment Load(ton/month)
minimumaveragemaximumminimumaveragemaximum
Scenario 10.000030.013870.138600.000132.68739.850
Scenario 20.000030.013900.138600.000111.85433.840
Scenario 30.000230.011840.117500.000070.9336.263
Scenario 40.000050.011940.118600.000110.86014.650
Figure 15. Comparison of Simulated Monthly Sediment for Scenarios 1 and 2.
Figure 15. Comparison of Simulated Monthly Sediment for Scenarios 1 and 2.
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3.2. Effects of VFS on Sediment Reduction (Scenario 1 vs. Scenario 3)

Average monthly flow rates of scenarios 1 and 3 were 0.014 m3/s and 0.012 m3/s, respectively (Table 2). The maximum flow value of scenario 3 was 0.118 m3/s in July 2006, and the minimum value was 0.00023 m3/s in February 2005. There was little difference in the estimated flow rates with VFS, as expected. The average monthly sediment values of scenarios 1 and 3 were 2.69 metric tons and 0.93 metric tons, respectively. The maximum monthly average sediment value of scenario 3 was 6.26 metric tons in July 2006, and the minimum value was 0.00007 metric tons in February 2005. For the entire simulation period (2000–2006), it is expected that sediment can be reduced with VFS at the study watershed by 65% (Figure 16).
Figure 16. Comparison of Simulated Monthly Sediment for Scenarios 1 and 3.
Figure 16. Comparison of Simulated Monthly Sediment for Scenarios 1 and 3.
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3.3. Effects of VFS with Diversion Channel on Sediment Reduction (Scenario 1 vs. Scenario 4)

Average monthly flow rates of scenarios 1 and 4 were 0.0139 m3/s and 0.0119 m3/s, respectively (Table 2). The maximum flow value of scenario 4 was 0.119 m3/s in July 2006, and the minimum value was 0.00005 m3/s in February 2005. There was little difference in estimated flow rates with diversion channel and VFS together, as expected. The average monthly sediment values of scenarios 1 and 4 were 2.69 metric tons and 0.86 metric tons, respectively. The maximum monthly average sediment value of scenario 4 was 14.65 metric tons on July 2006, and the minimum value was 0.00011 metric tons on February 2005. For the entire simulation period (2000–2006), it is expected that 68% of sediment can be reduced with a combined diversion channel and VFS in the study watershed (Figure 17).
Figure 17. Comparison of Simulated Monthly Streamflow for Scenarios 1 and 4.
Figure 17. Comparison of Simulated Monthly Streamflow for Scenarios 1 and 4.
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3.4. Effect of Diversion Channel when VFS is Installed at the Edge of the Agricultural Area (Scenario 3 vs. Scenario 4)

As stated above, average monthly flow rate of scenarios 3 and 4 were 0.01184 m3/s and 0.01194 m3/s, respectively. There was little difference in estimated flow rates with the diversion channel when VFS is installed at the edge of the agricultural areas, as expected. The average monthly sediment values of scenario 3 and scenario 4 were 0.93 metric tons and 0.86 metric tons, respectively. The maximum values of scenarios 3 and scenario 4 were 6.26 and 14.65 metric tons on July 2006, respectively, and minimum values were 0.00007 and 0.00011 metric tons of scenarios 3 and scenario 4 on February 2005, respectively. For the entire simulation period (2000–2006), it is expected that sediment can be reduced at the study watershed outlet by an additional 3% when a VFS is combined with a diversion channel compared only to the diversion channel (Figure 18).
Figure 18. Comparison of Simulated Monthly Sediment for Scenarios 1 and 4.
Figure 18. Comparison of Simulated Monthly Sediment for Scenarios 1 and 4.
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Simulated sediment values from scenario 4 (with both diversion channel and the VFS) are lower than those from scenario 3 (with the VFS) in most cases, except for August 2002, September 2002, July 2004, June 2005, and July 2006 (Figure 19, marked with arrows). The simulated sediment values at subwatershed 4 (VFS subwatershed in SG5) for scenario 3 were higher than the sediment values at subwatershed 4 (VFS subwatershed in SG5) for scenario 4 (Figure 20) in most periods. However, the sediment values from subwatershed 5 (receiving subwatershed in SG4) of scenario 4, which is the downstream area of SG5, were greater than the sediment from subwatershed 5 of scenario 3 for August 2002, September 2002, July 2004, June 2005, and July 2006 (Figure 21). This can be explained as follows: The sediment generated from SG1 (upper watershed, forest areas) is transferred directly into subwatershed 5 (receiving subwatershed in SG4) under scenario 4 with diversion channel, while the sediment generated from SG1 (upper watershed, forest areas) of scenario 3 are transported into agricultural areas and also into the VFS, resulting in deposition and filtration with the VFS. In the case of heavy rainfall, soil erosion and sediment need to be controlled at the forest watershed (SG1) to ensure the effectiveness of the diversion channel. This result indicates that site-specific BMPs need to be developed and implemented for effective erosion control.
Figure 19. Comparison of Simulated Monthly Sediment for Scenarios 3 and 4.
Figure 19. Comparison of Simulated Monthly Sediment for Scenarios 3 and 4.
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Figure 20. Simulated Monthly Sediment at Subwatershed 4–receiving subwatershed in SG4.
Figure 20. Simulated Monthly Sediment at Subwatershed 4–receiving subwatershed in SG4.
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Figure 21. Simulated Monthly Sediment at Subwatershed 5–receiving subwatershed in SG4.
Figure 21. Simulated Monthly Sediment at Subwatershed 5–receiving subwatershed in SG4.
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4. Conclusions and Discussion

The current SWAT model cannot be used to simulate the effects of diversion channels and VFS because it cannot simulate the sediment routing with overland flow type between single landuse subwatersheds, and the filter strip module of the current SWAT is only based on the filter strip width. Thus, the sediment routing in overland flow type and filter strip module considering filter strip width with the incoming runoff volume from source areas were enabled in the SWAT runs. Without considering these aspects, the SWAT model cannot be used to simulate the effect of various non-structural soil erosion BMPs on sediment reduction. In this study, a new VFS module reflecting the VFSMOD-w behaviors was integrated with the SWAT engine codes and SWAT watershed and the flow configuration file, called “fig.fig”, was modified manually to define overland flow type between subwatersheds.
The effect of a diversion channel and VFS for sediment reduction was analyzed using the enhanced SWAT. The results showed that there was little difference in simulated flow at the watershed outlet, as expected. However, it was found that a diversion channel and VFS were effective ways to reduce sediment. Sediment reduction of 31% would be expected with a diversion channel, 65% with VFS, and 68% with the combined diversion channel and VFS for the study watershed.
This study showed that the enhanced SWAT should be used in estimating the site-specific effects on sediment reduction with a diversion channel and the VFS, and the enhanced model needs to be validated with measured data in the field to insure the predictive ability of the SWAT for the site-specific assessment of soil erosion. The study was implemented with that VFS was distributed spatially in the model, that sediment loading was estimated under overland flow condition, and that sediment trapping efficiency by VFS was calculated by overland flow and filter strip width. However, the empirical model to calculate sediment trapping efficiency needs to be evaluated through various applications to confirm that it is still effective in the SWAT model and that it is available to other countries. The configuration file was revised to simulate the diversion channel, this work would hardly be possible with other watersheds that have a huge number of subwatersheds in the model.

Acknowledgements

This research was supported by a grant (code: EW-07-II-06, Development of effective management techniques for rural NPS pollution) from Eco-Star Project.

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MDPI and ACS Style

Park, Y.S.; Park, J.H.; Jang, W.S.; Ryu, J.C.; Kang, H.; Choi, J.; Lim, K.J. Hydrologic Response Unit Routing in SWAT to Simulate Effects of Vegetated Filter Strip for South-Korean Conditions Based on VFSMOD. Water 2011, 3, 819-842. https://doi.org/10.3390/w3030819

AMA Style

Park YS, Park JH, Jang WS, Ryu JC, Kang H, Choi J, Lim KJ. Hydrologic Response Unit Routing in SWAT to Simulate Effects of Vegetated Filter Strip for South-Korean Conditions Based on VFSMOD. Water. 2011; 3(3):819-842. https://doi.org/10.3390/w3030819

Chicago/Turabian Style

Park, Youn Shik, Jeong Hee Park, Won Seok Jang, Ji Chul Ryu, Hyunwoo Kang, Joongdae Choi, and Kyoung Jae Lim. 2011. "Hydrologic Response Unit Routing in SWAT to Simulate Effects of Vegetated Filter Strip for South-Korean Conditions Based on VFSMOD" Water 3, no. 3: 819-842. https://doi.org/10.3390/w3030819

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