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Sensitivity and uncertainty analysis for streamflow prediction using multiple optimization algorithms and objective functions: San Joaquin Watershed, California

机译:利用多优化算法及客观函数的流流预测灵敏度和不确定度分析:加州圣Joaquin流域

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Uncertainty analysis prior to the model calibration is key to the effective implementation of the hydrologic models. The major application of sensitivity analysis is to indicate the uncertainties in the input parameters of the model, which affects the model performance. There are different optimization algorithms developed and applied in the hydrologic model, which can be performed with different objective functions to calibrate and quantify the uncertainties in the system. The purpose of this study was to evaluate the model calibration performance and sensitivity of parameters using three optimization algorithms and five objective functions for predicting monthly streamflow. Sequential Uncertainty Fitting (SUFI-2), Generalized Likelihood Uncertainty Estimation (GLUE), and Parameter Solution (ParaSol) were used to calibrate the monthly streamflow for the semi-arid San Joaquin Watershed in California by using Soil and Water Assessment Tool (SWAT) model. The best performance metrics (R_(2), NSE, PBIAS, P-factor, and R-factor) were obtained by SUFI-2 while using NSE as the objective function. The?coefficient of determination (R_(2)), Nash–Sutcliffe Efficiency (NSE), the percentage of bias (PBIAS), Kling-Gupta efficiency (KGE) and Ratio of the standard deviation of observations to root mean square error (RSR) were used as an objective function to assess the monthly calibration performance. KGE was found to be a suitable objective function to calibrate this complex and snowmelt-dominated watershed. The findings from this study will serve as a guideline for hydro-ecological researchers to achieve further watershed management goals.
机译:模型校准前的不确定性分析是水文模型的有效实施的关键。灵敏度分析的主要应用是表示模型的输入参数中的不确定性,影响模型性能。存在不同的优化算法,在水文模型中施加,可以用不同的目标函数进行校准并量化系统中的不确定性。本研究的目的是使用三种优化算法和五个客观功能来评估参数的模型校准性能和灵敏度,以预测每月流流程。顺序不确定性拟合(SUFI-2),广义似然不确定性估计(胶水)和参数解决方案(遮阳伞)用于通过使用土壤和水评估工具(SWAT)来校准加利福尼亚州半干旱圣Joaquin流域的月度流流程模型。使用NSE作为目标函数,通过SUFI-2获得了最佳性能度量(R_(2),NSE,PBIA,P系子和R因子)。 ?确定系数(R_(2)),NASH-SUTCLIFFE效率(NSE),偏置(PBIAS)的百分比,kling-GUPTA效率(KGE)和标准偏差与根均方误差的标准偏差(RSR )被用作评估每月校准性能的目标函数。发现KGE是校准这种复杂和雪撬的流域的合适目标函数。本研究的调查结果将作为水力生态研究人员实现进一步的流域管理目标的指导。

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