3.2. Model Calibration and Verification of the Discharge at Zhangjiashan Station
The year 1997 was set as the warming-up period, 1998–2007 was set as the warm-up calibration period of the model, and 2008–2017 was set as the verification period for the model, respectively. Based on the monthly flow measured at the Zhangjiashan Hydrological Station, the applicability of the model was evaluated using R
2, NSE, PBIAS, and KGE. An evaluation of the simulation results is presented in
Table 1. As shown in
Table 1, the R
2, NSE, and KGE of the model were 0.64 and higher during the calibration and verification periods, and the PBIAS was within 20%. The accuracy of each index was higher during the calibration period than during the verification period. Thus, the model applies to the Jinghe River Basin.
Figure 4 displays the monthly flow simulation results. The simulated flow consistently matched the measured flow process. The performance of the simulation during the non-flood season fell below that of the flood season. The peak flow often occurs during the flood season, which spans from July to October. The peak timings of the simulated and measured flow processes are unified. Throughout the verification period, there was a substantial increase in the runoff peak in 2013, leading to considerable improvements in the findings of the SWAT simulation. Simultaneously, the high level of simulation value will result in continuity and impact the simulation effect in subsequent years. Peak overestimations were observed in 2014 and 2017. The simulation effect of the model was further analyzed through a correlation diagram of the measured and simulated monthly flows during the calibration and verification periods. In
Figure 5, the black line represents a 1:1 proportional straight line, and the red line represents the regression line between the measured and simulated values. The scatter distribution is relatively concentrated in the calibration and verification periods, and only a small number of scatter points deviate from the linear relationship, indicating that the simulated and measured flows have good consistency in the calibration and verification periods.
3.3. Multistation Calibration and Verification of the Discharge
In a large-scale basin, the calibration and verification of the hydrological parameters only at the outlet stations of the entire basin may ignore the spatial heterogeneity of the basin. They may not meet the simulation accuracy requirements of each sub-catchment area. Therefore, flow observation data from three hydrological stations (Qingyang, Yangjiaping and Zhangjiashan) in the Jinghe River Basin were selected for further multistation calibration. The Qingyang station is located on the Malian River, a tributary of the Jinghe River, and the Yangjiaping and Zhangjiashan hydrological stations are located on the main stream of the Jinghe River. The sub-regions of the three stations are shown in
Figure 6.
Among these are 11 sub-basins controlled by the Qingyang hydrological station, numbered 1–10 and 16, respectively, with a total control area of 10,603 km2. There are 14 sub-basins controlled by the Yangjiaping hydrological station, numbered 13–14, 19–24, 31–35, and 38, with a total control area of 14,114 km2. The Zhangjiashan Hydrological Station controls 26 subbasins, numbered 11–12, 15, 17–18, 25–30, 36–37, and 39–51, with a total control area of 20,463 km2.
The Qingyang, Yangjiaping, and Zhangjiashan stations were calibrated and verified according to the order of first upstream and downstream, the first tributary, and then the mainstream.
Firstly, parameter sensitivity analyses need to be carried out for each region. The results of the parameter sensitivity ranking and final values for the three stations are shown in
Table 2. The parameters are listed in
Table 3.
The most sensitive parameter at the three stations was CN2 (number of SCS runoff curves under wet condition II); however, the values differed. The CN2 values at Qingyang, Yangjiaping, and Zhangjiashan stations were 82.01, 61.64, and 50.08, respectively. This parameter represents the runoff capacity of land and soil types in the region. There was an exponential relationship between CN2 and runoff. The larger the value, the stronger the runoff capacity and this parameter plays a decisive role in the simulation of the flood peak flow. Among the three catchments, the runoff capacity was greatest in the catchment under the control of Qingyang Station, followed by Yangjiaping. Conversely, the catchment governed by Zhangjiashan Station exhibited the weakest runoff capacity. The sensitivity of HRU_SLP (average slope) at Qingyang and Zhangjiashan stations was second and sixth at Yangjiaping station, respectively, indicating that the sensitivity of this parameter was high at all three stations. The values at Qingyang, Yangjiaping, and Zhangjiashan stations were 0.54, 0.35, and 0.16, respectively. This parameter mainly affects lateral flow, and the change in slope is positively correlated with the change in runoff yield.
Similarly, 1997 was used as the warm-up period, 1998–2007 was the calibration period, and 2008–2017 was the verification period. Based on the monthly flows measured at the three hydrological stations, the applicability of the model was evaluated using R
2, NSE, PBIAS, and KGE. An evaluation of the simulation results is presented in
Table 4.
Table 4 shows that the R
2 of the three stations is greater than 0.6, NSE is greater than 0.5, PBIAS is within ±25%, and PBIAS is less than 0 in the calibration period and the verification period, indicating that the simulated monthly flow is less than the observed monthly flow in both the calibration period and the verification period. In addition to the simulation effect of the Qingyang station, the verification period is better than the calibration period, and the simulation effect of the other two stations is better than the verification period. In general, the more downstream the model, the higher the simulation accuracy. Comparing the hydrological evaluation indicators of the Zhangjiazhan station rate period and validation period in
Table 1 and
Table 4, the results are shown in
Figure 7.
Figure 7 shows that the blue area is larger than the red area, which means that the overall effect of the multi-station setting is better than that of the traditional single-station setting. The calibration period effect is better than that of the validation period for both the single-station and multi-station settings.
The monthly flow simulation results for each station are shown in
Figure 8. In
Figure 8a, the monthly flow trend at Qingyang station is consistent with the measured monthly flow process. The simulation results for 2001 and 2003 were the best. During the verification period, there were three years of flood peak overestimation: 2010, 2013, and 2014. In
Figure 8b, the simulation effect of the Yangjiaping station in the calibration period is better than that in the validation period, and the simulation effect is better in the summer and autumn of the calibration period. The best simulation results were obtained in 1998 and 2003, and the simulation flow during the non-flood season of the validation period was generally small. The simulated values in the dry season are significantly lower than the measured values, and this difference mainly stems from the fact that the runoff in the dry season mainly relies on the generation of groundwater, and the simulation process of groundwater flow and flow in the Jinghe River Basin is quite complicated, which leads to the deviation of the simulated flow in the dry season.
Figure 9 shows the correlation between the measured and predicted monthly flows for calibration and verification periods for the three stations. By comparing the 1:1 scale straight line and the regression line in
Figure 9, most of the regression lines are at the lower right of the scale straight line, indicating a trend of the simulated monthly runoff value being less than the measured monthly runoff value at the three stations throughout the simulation period. The periodic R
2 of Qingyang station was the smallest, at only 0.614. As shown in
Figure 9a, the distribution of the points is scattered, particularly in the middle-value and high-value areas. The Zhangjiashan calibration period R
2 was the largest, reaching 0.76, indicating that the station had a good consistency between the measured and simulated monthly flows.
3.5. Further Calibration and Evaluation
The optimization algorithm uses evaluation metrics as the basis for parameter optimization, which does not make full use of the physical meaning of the parameters, and the optimization algorithm has been run several times and can no longer be effective in improving the simulation. Since the actual evapotranspiration and soil moisture content data cannot now be used as target variables for optimization in the model, the parameters were manually adjusted to optimize the multivariate simulated values, and based on the validation results of runoff, actual evapotranspiration, and soil moisture, the parameters were manually adjusted based on the physical properties of each parameter in Swat-cup, with the expectation of obtaining a better evaluation result. The adjusted parameters are listed in
Table 7.
The catchments controlled by Yangjaping and Zhangjiashan stations are similar in terms of vegetation endowment, which enhances the number of common parameter values in the simulated effects at these two stations to some extent. Through in-depth analyses, it is found that changes in the values of HRU_SLP and SOL_BD have a significant effect on runoff, especially at Yangjaping and Zhangjiashan stations, where an increase in the value of HRU_SLP directly leads to an enhancement of runoff volume. In addition to these two parameters, the main parameters of CN2 (SCS runoff curve number under wet condition II), ESCO (soil evaporation compensation factor), and SOL_AWC (effective water capacity of soil layer) were also adjusted. The value of CN2 is closely related to surface runoff, and the change in its value directly affects the accuracy of the runoff simulation, and the value of ESCO is closely related to evaporation, and the model-simulated runoff is significantly affected by the decrease in ESCO. When the value of ESCO decreases, the maximum evapotranspiration simulated by the model increases accordingly. In addition, SOL_K (soil-saturated hydraulic conductivity) is also closely related to runoff, and as the value of SOL_K increases, the runoff volume also shows an increasing trend. The fine-tuning of these parameters is essential to improve the accuracy of hydrological simulation. The adjusted parameters were brought back to SWAT and re-run to obtain the simulated monthly flows from 1997 to 2017, which were compared with the measured monthly flows of the three sites, respectively. The evaluation results obtained from the calculations are shown in
Table 8.
A comparison of
Table 4 and
Table 8 reveals that the precision of each level of the evaluation index improved after the parameter adjustment.
Figure 11 shows the correlation between the measured and simulated monthly flows during the simulation period for the three stations. In the Jing River Basin, the simulation accuracy gradually increased from upstream to downstream.
The actual evaporation results of the three stations in the model were derived and compared with those of TEDAC and GLDAS, and the evaluation results are shown in
Table 9. A comparison of
Table 5 and
Table 9 shows that at the Qingyang and Yangjiaping stations, except for the accuracy of PBIAS, the accuracy of the other three indicators improved. The accuracy of the four hydrological evaluation indices at the Zhangjiashan station was improved.
A comparison between the actual evaporation simulation value of each station and the hydrological process of the actual evaporation data of TEDAC and GLDAS is shown in
Figure 12.
The soil moisture data obtained from the analysis were compared with the soil moisture data from GLDAS and NNsm. The results of this comparison are presented in
Table 10. Comparing
Table 6 and
Table 10, it is evident that the evaluation indices of the three stations improved after adjusting of parameters and the performance of the simulation is improved.
The correlations between the simulated values of soil moisture with GLDAS and NNsm at the three stations are shown in
Figure 13.
Figure 13 compares the 1:1 proportional line and regression line, showing that most of the regression lines are at the lower right of the 1:1 line. This indicates that the simulated soil water content was lower than the soil water content in the two datasets in the three regions during the validation period. From the regression relationship, the simulation performance of the Zhangjiashan station in
Figure 13f is the best, and its linear coefficient value is 1.011, which is the closest to 1.