1. Introduction
Regional water resources are increasingly impacted by higher living standards, agricultural irrigation, land and water use policies, climate change, construction of hydropower stations, and other external forces (e.g., industrial uses, domestic and ecological water uses) [
1,
2,
3]. Thus, accurate hydrological forecasting is indispensable for local water resource planning, management, and water policy development [
4,
5]. With the improvements in computer technology and mathematical calculation efficiency, an increasing number of hydrological models have been developed and applied in various watersheds such as climate change, water resource management, and flood forecasting studies [
6,
7]. In general, these models can be divided into lumped (e.g., Hydrologiska Byråns Vattenbalansavdelning model (HBV) [
8], Xinanjiang model [
9] and Australia Water Balance Model (AWBM) [
10]) and semi-distributed or distributed hydrological models (e.g., Soil and Water Assessment Tool (SWAT), Distributed Hydrological Soil Vegetation model (DHSVM, [
11]) and Variable Infiltration Capacity model (VIC, [
12])). Lumped hydrological models often treat the study area as a homogeneous whole and then use the watershed average precipitation and evapotranspiration as inputs to simulate the streamflow process. Unlike lumped hydrological models, distributed hydrological models consider the different attributes in different regions of the study area. These models often need inputs of the topographic data of the study area, the meteorological data of different sites, soil data, and vegetation data. These complex inputs and the complex structures of distributed hydrological models also bring great uncertainty to simulations of the models [
13,
14]. Among these models, the SWAT model has proven to be powerful enough to assess the impacts of climate change and land-use change on regional water resource across multiple watersheds around the world [
15,
16,
17,
18].
Unfortunately, these models often suffer from large uncertainties in the application process, mainly including the following: (1) model input uncertainty; in the process of model calibration and uncertainty analysis, it is inevitable to input a large amount of observation information including precipitation, temperature, relative humidity, and soil database to obtain better model simulation results; however, these datasets often suffer from measurement errors and systematic errors [
19,
20]; (2) model structure uncertainty, which is mainly due to the simplifications and assumptions of natural systems within the model [
1]; and (3) uncertainty of model parameters, mainly including parameters that control watershed attributes and hydrological processes, as these parameters are often difficult to measure directly. Therefore, during the calibration of model parameters, we often use empirical methods or reference to other literature to determine the values of the calibrated parameters, which may also bring new uncertainties [
21]. In addition, correlation and interaction between parameters can also create uncertainty, which known as equifinality for different parameters [
13]. Among these three sources of uncertainty, the uncertainty of the parameters is relatively easy to control by selecting the appropriate algorithm [
19]. Any unsuitable adjustments and modifications to key parameters that control the hydrological processes may have a large amplification effect on streamflow generation [
21,
22]. Without a reasonable model uncertainty analysis of the model parameters and structure, it will be difficult to obtain the credibility of our simulation targets, such as assessing future water changes under the influence of climate change and human activities [
23,
24]. Therefore, uncertainty analysis is especially important to improve the performance and credibility of hydrological simulation [
13,
19,
25].
Numerous published studies have focused on the uncertainty of parameters and predictions in hydrological simulations [
1,
19,
26,
27]. With the development of computing technology, an increasing number of optimization algorithms have been proposed to solve or reduce model uncertainty [
28]. Among these algorithms, Sequential Uncertainty Fitting (SUFI-2) [
1], Parameter Solution (ParaSol) [
29], Generalized Likelihood Uncertainty Estimation (GLUE) [
25], and Particle Swarm Optimization (PSO) [
30] are more efficient and widely used algorithms for uncertainty analysis in hydrological modeling. However, the identification of key parameters and the quantification of their uncertainties (parameter uncertainties and streamflow simulation uncertainties) vary with the study area/location [
21]. Therefore, before further hydrological analysis, especially in some watersheds with complex terrain, it is necessary to conduct parameter sensitivity and uncertainty analysis. However, at present, there are limited studies that focus on comparisons among different parameter sensitivity analysis methods (i.e., SUFI-2, GLUE, ParaSol, and PSO) in evaluating the impact of parameter uncertainty on streamflow simulation [
21]. Moreover, there are fewer studies related to comparing differences in main hydrological components using different optimization algorithms [
26].
The Lancang River (LR) Basin is located in the southwestern region of China, and it includes the upper reaches of the Lancang-Mekong River Basin, which is the largest international river in the Indochina Peninsula [
31]. At present, the LR Basin is one of the most active areas in the world for hydropower development [
32,
33,
34]. The study of streamflow simulation and its uncertainty in this basin is of great significance for resolving water resources disputes and water resources management among the countries along the river basin [
35]. The current related research in this watershed mainly focuses on streamflow simulation, and there are few published studies on the uncertainty of model parameters and streamflow simulation. Han et al. [
32] used the CREST (Coupled Routing and Excess Storage) model to quantify the contribution rate of climate change and human activities to the runoff change in the LR Basin. Their result showed that the contribution rate of human activities to the reduction of runoff in the basin during the impact period was about 95%. Tang et al. [
18] used the SWAT model to evaluate the simulation accuracy of remote sensing and reanalysis precipitation products in the LR Basin. As a result, they found that the SWAT model has good applicability in the LR Basin, but different precipitation inputs have greater uncertainty.
In general, there are relatively few studies on the uncertainty of model parameters and streamflow simulation in the LR Basin. Therefore, the objectives of this study are as follows: (1) evaluate the feasibility of the SWAT model for simulating streamflow over the Yunjinghong station in the LR Basin; (2) analyze the uncertainty of the parameters and predictions of the SWAT model by using the SUFI-2, GLUE, ParaSol, and PSO methods; and (3) evaluate and compare the simulated quantities of different main hydrological components in different methods.
4. Discussion
To obtain better simulation results, it is important to identify the sensitivities of the key parameters before calibrating a model. In this study, global sensitivity analysis was implemented to identify the nine most sensitive parameters from the streamflow simulation with 25 selected parameters. As shown in
Table 1, ALPHA_BNK and CH_K2 were identified as more sensitive than the other seven parameters. These two parameters were also found to be more sensitive in other published studies [
59]. It should be pointed out that CN2 was found to have low sensitivity in this study, and some published studies showed that its sensitivity was high [
21,
53], because CN2 mainly controls the surface runoff process of the watershed, and in this study area, the contribution of surface runoff to the entire runoff was relatively small. The model performance calibrated by using the four algorithms is shown in
Table 3. In terms of the model evaluation indicators, the ParaSol method had slightly higher NSE and R
2 values as well as a small RE value than the other three methods in the calibration, validation, and the whole periods at daily scale, suggesting that this method had its own advantages in searching for the global optimal solution. This finding was consistent with the findings of other published papers [
21,
27]. This is mainly because ParaSol combines the advantages of deterministic search, random search, and biological competitive evolution, and it can adjust the evolution direction of the parameter combination according to the objective function value in real time and then seek the global optimal solution [
21,
27,
29]. Therefore, we recommend that the ParaSol algorithm can be used preferentially to search for the optimal combination of parameters in the streamflow simulation over the Yunjinghong station compared with the other three methods. From
Figure 3, we can also clearly see that the optimal simulation results obtained by ParaSol, GLUE, and PSO show different degrees of underestimation in the dry season (from March to May), which is also the reason for the large relative error (RE) of the simulation. The reason for this phenomenon may be the influence of the SWAT model’s own snowmelt module, which uses only a simple degree-day factor model to estimate the snowmelt process [
44]. Another reason may be the impact of water transfer in the dry season of the main stream reservoir of the LR Basin. Of course, due to the complex topographic features of the study area, CGDPA meteorological data may also bring certain uncertainty to the streamflow simulation results [
41].
For the model prediction uncertainty analysis, our study showed that SUFI-2 and PSO were better methods with relatively larger P-factors and smaller R-factors. For the uncertainty of the model parameters, our study showed that most calibrated parameters derived by ParaSol had narrower widths (95PPU) compared with the initial ranges, which suggested that ParaSol was less robust in implementing the uncertainty analysis for streamflow prediction. For the SUFI-2, GLUE, and PSO algorithms, the wider 95PPU of the parameters may be because these three methods considered multiple uncertainties, such as that of the parameters, model structure, and correlation between parameters, which may lead to relatively larger parameter uncertainties than those of the ParaSol method. We also compared the numbers of simulations of the four methods that were relatively good (with NSE greater than 0.5) (
Figure 5 and
Table 5). The ParaSol algorithm had 2825 (94%) simulation results with NSE coefficients greater than 0.5 in the whole period (1975 to 2004) and performed much better than the other three algorithms, while the PSO method had the least number (1703, 57%) of simulations with an NSE greater than 0.5; these results meant that ParaSol, which based on the SCE-UA algorithm, was very efficient in searching for the parameter set closest to the optimal value of the objective function (refer to the NSE coefficient) [
21,
27]. As pointed out by Yang et al. [
54], the PSO algorithm easily falls into a local optimal solution when dealing with the optimal solution of discrete problems, which may lead to the poor performance of PSO in the uncertainty analysis of streamflow simulations.
We also compared the amounts of the different main hydrological components that were derived from the four algorithms with each optimal parameter set. We found that the actual evapotranspiration (ET) calculated by the four different algorithms was basically the same, while the other hydrological components differed greatly in the different methods (
Table 8 and
Figure 7), these findings suggested that although we obtained good simulation results for the streamflow, these simulation results also had large uncertainties for the components of the entire hydrological cycle [
16,
26]. The possible reason is that we mainly calibrate the model by fitting the simulated streamflow and the observed ones. In order to get better simulation results, the total water yield derived from the four methods is basically the same (
Table 8). Based on the principle of water balance, the amount of actual evapotranspiration is not much different from each other. Due to lacking more measured data from the study area, we can adjust the model parameters by using remote sensing soil moisture and evapotranspiration to reduce the uncertainty of the model simulations in a follow-up study.
5. Conclusions
In this study, we evaluated the streamflow simulation capabilities and uncertainties of four uncertainty analysis algorithms (i.e., SUFI-2, ParaSol, GLUE, and PSO) through a semi-distributed hydrological model, the SWAT model, for a case study in the Lancang River (LR) Basin over the Yunjinghong station. The main conclusions are as follows:
(1) The global sensitivity analysis of the nine selected parameters indicated that all four methods could be used for parameter sensitivity analysis in the LR Basin, and all could identify the key parameters with higher sensitivity (ALPHA_BNK and CH_K2). Meanwhile, the sensitivity of the other seven parameters to streamflow simulation was relatively low. This result will have reference significance for the calibration of the hydrological model parameters of the basins, which has similar runoff generation and confluence characteristics with the LR Basin.
(2) The simulation results using the four algorithms showed that the streamflow process can be well simulated using the CGDPA meteorological product and the SWAT model in the LR Basin at the daily scale. Among the four methods, ParaSol had the best performance with NSE and R2 values of 0.89 and 0.92 for the calibration period, and 0.90 and 0.91 for the validation period, respectively, followed by SUFI-2, GLUE, and PSO. These results indicated that compared with the other three methods, ParaSol had specific advantages in seeking the optimal combination of parameters.
(3) The results of the uncertainty analysis showed that the SUFI-2 and PSO can achieve better results, and the performance of SUFI-2 was much better than PSO in terms of P-factor (0.93 vs. 0.78) and R-factor (1.17 vs. 1.14) values. For the uncertainty of the parameters, the ParaSol method had the smallest 95PPU thickness compared with the other three methods. For acceptable simulation times (NSE > 0.5), the ParaSol method had the most proportion simulation times, followed by SUFI-2, GLUE, and PSO.
(4) It could be seen from the analysis results of the main hydrological components of different methods that the actual evapotranspiration (ET) calculated by the four methods was relatively close, while the other hydrological components (such as Groundwater Runoff, Surface Runoff, Snow Melt, and Lateral Runoff) have large differences among the different methods.
Although some conclusions of this study can provide important references for hydrological simulation of basins with similar runoff and confluence characteristics to the LR Basin, this study still has certain limitations. In this study, we only consider the uncertainty of the average streamflow in the hydrological simulation, and we did not consider the impact of parameter uncertainty on the high and low flows, which are also of great significance to water resources management in the basin. On the other hand, this study did not consider the uncertainty of other hydrometeorological elements (such as soil moisture, etc.) related to the hydrological cycle. In addition, in a follow-up study, the high-resolution remote sensing soil moisture and evapotranspiration data can be used to calibrate the other main hydrological components of the water cycle, thus reducing the uncertainty of the simulation.