Calibration of SWAT and Two Data-Driven Models for a Data-Scarce Mountainous Headwater in Semi-Arid Konya Closed Basin
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Soil and Water Assessment Tool (SWAT)
- SWt: Final soil water content (mm);
- SW0: Initial soil water content (mm);
- Rday: Amount of precipitation on day i (mm);
- Qsurf: Amount of surface runoff on day i (mm);
- Ea: Amount of evapotranspiration on day i (mm);
- Wseep: Amount of percolation and bypass flow exiting the soil profile bottom on day i (mm);
- Qgw: Groundwater return flow on day i (mm).
2.2.1. SWAT Model Setup and Data Set
- Digital Elevation Model (DEM): SWAT determines the direction of water flow by utilizing DEM maps representing the topographical of the basin. The DEM map used in this study is given in Figure 1. In this study, DEM maps created from Advanced Spaceborne Thermal Emission and Reflection Radiometer (ASTER) data were used. The DEM map created represents raster data and therefore has a resolution of 30 × 30 m. The quality (altitude errors) of the DEM used in this study has not been checked. However, altitude errors of ASTER-GDEM data are given as root mean square error (RMSE) = ±7.97 m in the literature [33]. DEM map was also transformed into UTM (Zone-36, WGS84 spheroid) projection system.
- Land Use/Land Cover (LULC): the LULC map is a significant physical data for the modelling of runoff and infiltration within the SWAT model. The LULC map used in this study is seen in Figure 2. The LULC map used for the SWAT model was denoted from the Coordination of Information on the Environment (CORINE) data. CORINE which was established in 1985 is a program that aims to gather environmental data in Europe, to ensure the coordination of data collection institutions, and to test the reliability of the data obtained. The LULC map is one of the data types produced within CORINE [34].
- Soil Types: the soil data was retrieved from the Harmonized World Soil Database v1.2 (HWSD v1.2) data, prepared in collaboration with several organizations, including the Food and Agriculture Organization (FAO) of the United Nations. Since there is no detailed map of soil properties for the study area, HWSD v1.2 data with 30 arc seconds (approximately 1 km) resolution is used. The reference soil depth is 100 cm. The study area was divided into five slope classes (Table 2). According to Table 2, approximately 80% of the study area has a slope class of more than 15%, indicating that the region is quite mountainous.
- Hydro-Meteorological Dataset: precipitation and temperature (max and min) are among the basic climate variables required by the SWAT model. Depending on the PET calculation method used in the model, relative humidity, wind speed and solar radiation may also be necessary. There is no meteorology station with an adequate observation period within the boundaries of the study area. Therefore, the data of the Hadim and Seydişehir meteorological stations operated by the General Directorate of State Meteorology and located near the basin were used. The meteorological data representing the study area were determined by the Thiessen method using the data of these two stations.
2.2.2. Calibration and Validation Process
2.3. Radial Based Neural Network (RBNN)
2.4. Support Vector Machines (SVM)
2.5. Artificial Intelligence (AI) Models Setup
2.6. Model Evaluation Criteria
3. Results and Discussion
3.1. Results of SWAT
3.2. Comparison of SWAT and AI Methods
4. Conclusions
- In the SWAT model, the use of the SUFI-2 algorithm for calibration further increased the success of the model compared to manual calibration. According to the results obtained in the validation stage, it is observed that the model produces satisfactory results for changing conditions.
- The SWAT simulations revealed that fast runoff occurs in this mountainous region which can cause a flood risk. The SWAT model performs better during the low flow period as compared to capturing peak flows.
- The comparison of all three models showed that two data-driven models performed better than SWAT. Moreover, the results of SVR model were slightly more successful than those from RBNN.
- The scatter plots show that there was no overfitting problem in the two AI models.
- Although high-accuracy results are obtained with AI models, they only provide discharge outputs. However, the SWAT model is appropriate for solving physical problems related to hydrological processes including snow melt, soil moisture and groundwater. The effect of land cover and land use change on hydrologic fluxes can be assessed by this model too.
- Obviously the quality of the data directly affects the success of the model. The results could improve if there were at least one meteorological station within the catchment.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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SWAT LULC Codes | Definition of SWAT LULC Codes | Area (km2) | Area (%) |
---|---|---|---|
AGRC | Agricultural Land-Close Grown | 0.24 | 0.16 |
PAST | Pasture | 0.50 | 0.32 |
AGRL | Agricultural Land-Generic | 7.61 | 4.94 |
FRSD | Forest-Deciduous | 0.42 | 0.27 |
FRSE | Forest-Evergreen | 9.46 | 6.14 |
FRST | Forest-Mixed | 3.22 | 2.09 |
RNGE | Range-Grasses | 16.32 | 10.60 |
RNGB | Range-Brush | 52.97 | 34.42 |
SWRN | South Western Range-Bare Rock | 63.1 | 41.00 |
Soil Codes | Area (km2) | Area (%) | |
Soil features | I-Lc-E-2b-3114 | 98.1 | 63.75 |
I-Be-E-c-3504 | 43.5 | 28.26 | |
I-Be-c-3093 | 12.3 | 7.99 | |
Slope Class | Area (km2) | Area (%) | |
Slope class of the study area | 0-15 | 29.95 | 19.46 |
15-24 | 32.99 | 21.44 | |
24-35 | 38.00 | 24.7 | |
35-49 | 32.33 | 21.01 | |
>49 | 20.58 | 13.37 |
Station Number | Station Name | Altitude (m) | Latitude | Longitude |
---|---|---|---|---|
17898 | Seydişehir | 1129 | 37°25′36′′ N | 31°50′56′′ E |
17928 | Hadim | 1552 | 36°59′21′′ N | 32°27′20′′ E |
D16A115 | Çarşamba River (Sorkun) | 1150 | 37°10′12′′ N | 32°09′44′′ E |
Model Name | Parameters | Parameters Range | Inputs | Output |
---|---|---|---|---|
Radial-based neural network (RBNN) | The number of neurons Spread parameter (σ) | (1–10) (0.01–5) | Qt−1, Qt−2, Qt−3, Pt, Pt−1, Tmax, Tmin, RH, WS, SR | Qt |
Support vector machine (SVM) | Regulatory factor (C) Insensitive error term (ε) Kernel parameter (γ) | (1–100) (0.01–0.5) (0.1–8) |
NSE | R2 | PBias (%) | Performance Rating |
---|---|---|---|
0.75 < NSE ≤ 1.00 | 0.75 < R2 ≤ 1.00 | PBIAS ≤ ±10 | Very Good (VG) |
0.60 < NSE ≤ 0.75 | 0.60 < R2 ≤ 0.75 | ±10 < PBIAS ≤ ±15 | Good (G) |
0.36 < NSE ≤ 0.60 | 0.50 < R2 ≤ 0.60 | ±15 < PBIAS ≤ ±25 | Satisfactory (S) |
0.00 < NSE ≤ 0.36 | 0.25 < R2 ≤ 0.50 | ±25 < PBIAS ≤ ±50 | Unsatisfactory (U) |
NSE ≤ 0.00 | R2 ≤ 0.25 | ±50 ≤ PBIAS | Inappropriate (I) |
Parameters | Parameter Definitions | Range | Fitted Value | Min | Max |
---|---|---|---|---|---|
R_CN2.mgt | Soil conservation services (SCS) runoff curve number | −0.1–0.1 | 0.02 | −0.07 | 0.04 |
V_SFTMP.bsn | Snowmelt base temperature (°C) | −5–5 | −0.31 | −5.88 | 1.38 |
V_ESCO.hru | Soil evaporation compensation factor | 0–1 | 0.10 | −0.23 | 0.58 |
V_SURLAG.bsn | Surface runoff lag coefficient | 1–24 | 23.78 | 9.42 | 26.38 |
V_GWQMN.gw | Threshold depth of water in shallow aquifer for return flow (mm) | 0–5000 | −1544.75 | −1943.54 | 2693.54 |
V_ALPHA_BF.gw | Base flow alpha factor | 0–1 | 0.97 | 0.34 | 1.04 |
R_SOL_AWC.sol | Soil available water storage capacity | −0.1–0.1 | −0.01 | −0.12 | 0.02 |
V_CH_N1.sub | Manning’s value for tributary channels | 0.01–1 | 0.30 | −0.46 | 0.51 |
V_SMFMX.bsn | Melt factor for snow on June 21 (mm/day-°C) | 0–9 | 7.32 | 3.70 | 11.14 |
V_SMFMN.bsn | Melt factor for snow on December 21 (mm/day-°C) | 0–9 | 7.05 | 2.57 | 7.77 |
V_GW_REVAP.gw | Groundwater revap coefficient | 0.02–0.2 | 0.00 | −0.04 | 0.11 |
V_REVAPMN.gw | Threshold depth of water in the shallow aquifer for revap (mm) | 0–500 | 83.28 | −246.83 | 251.83 |
V_EPCO.hru | Plant uptake compensation factor | 0.01–1 | 0.67 | 0.48 | 1.44 |
V_CH_N2.rte | Manning’s value for the main channel length | 0–0.3 | 0.07 | −0.12 | 0.15 |
V_TIMP.bsn | Snow peak temperature lag factor | 0–0.9 | 0.45 | 0.06 | 0.62 |
V_SNOCOVMX.bsn | Threshold depth of snow, above which there is 100% cover | 0–500 | 232.40 | 148.19 | 446.80 |
V_SMTMP.bsn | Threshold temperature for snow melt (°C) | −5–5 | 0.78 | −7.53 | 0.83 |
V_RCHRG_DP.gw | Deep aquifer percolation fraction | 0–1 | 0.73 | 0.19 | 0.73 |
V_GW_DELAY.gw | Groundwater delay time (days) | 0–500 | 162.14 | −186.92 | 271.92 |
V_SNO50COV.bsn | Fraction of SNOCOVMX that provides 50% cover | 0–0.9 | 0.51 | 0.28 | 0.87 |
Calibration (SUFI-2) | Validation | |
---|---|---|
P-factor | 0.92 | 0.63 |
R-factor | 0.94 | 1.14 |
R2 | 0.787 (VG) | 0.508 (S) |
NSE | 0.779 (VG) | 0.502 (S) |
RMSE (m3/s) | 0.962 | 1.334 |
MAE (m3/s) | 0.645 | 0.917 |
PBIAS (%) | −7.562 (VG) | −8.163 (VG) |
Period | R2 | NSE | RMSE (m3/s) | MAE (m3/s) | PBIAS (%) | |
---|---|---|---|---|---|---|
SWAT (SUFI-2) | 2006–2011 | 0.787 (VG) | 0.779 (VG) | 0.962 | 0.645 | −7.562 (VG) |
SWAT (Validation) | 2012–2015 | 0.508 (S) | 0.502 (S) | 1.334 | 0.917 | −8.163 (VG) |
RBNN (Train) | 2003–2011 | 0.996 (VG) | 0.995 (VG) | 0.149 | 0.098 | 0.254 (VG) |
RBNN (Test) | 2012–2015 | 0.998 (VG) | 0.995 (VG) | 0.132 | 0.079 | 1.297 (VG) |
SVR (Train) | 2003–2011 | 0.998 (VG) | 0.988 (VG) | 0.089 | 0.059 | 0.102 (VG) |
SVR (Test) | 2012–2015 | 0.998 (VG) | 0.997 (VG) | 0.099 | 0.070 | −0.758 (VG) |
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Koycegiz, C.; Buyukyildiz, M. Calibration of SWAT and Two Data-Driven Models for a Data-Scarce Mountainous Headwater in Semi-Arid Konya Closed Basin. Water 2019, 11, 147. https://doi.org/10.3390/w11010147
Koycegiz C, Buyukyildiz M. Calibration of SWAT and Two Data-Driven Models for a Data-Scarce Mountainous Headwater in Semi-Arid Konya Closed Basin. Water. 2019; 11(1):147. https://doi.org/10.3390/w11010147
Chicago/Turabian StyleKoycegiz, Cihangir, and Meral Buyukyildiz. 2019. "Calibration of SWAT and Two Data-Driven Models for a Data-Scarce Mountainous Headwater in Semi-Arid Konya Closed Basin" Water 11, no. 1: 147. https://doi.org/10.3390/w11010147
APA StyleKoycegiz, C., & Buyukyildiz, M. (2019). Calibration of SWAT and Two Data-Driven Models for a Data-Scarce Mountainous Headwater in Semi-Arid Konya Closed Basin. Water, 11(1), 147. https://doi.org/10.3390/w11010147