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Uncertainty quantification of satellite precipitation estimation and Monte Carlo assessment of the error propagation into hydrologic response

机译:卫星降水估计的不确定性量化和误差传递到水文响应中的蒙特卡洛评估

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The aim of this paper is to foster the development of an end-to-end uncertainty analysis framework that can quantify satellite-based precipitation estimation error characteristics and to assess the influence of the error propagation into hydrological simulation. First, the error associated with the satellite-based precipitation estimates is assumed as a nonlinear function of rainfall space-time integration scale, rain intensity, and sampling frequency. Parameters of this function are determined by using high-resolution satellite-based precipitation estimates and gauge-corrected radar rainfall data over the southwestern United States. Parameter sensitivity analysis at 16 selected 5° x 5° latitude-longitude grids shows about 12-16% of variance of each parameter with respect to its mean value. Afterward, the influence of precipitation estimation error on the uncertainty of hydrological response is further examined with Monte Carlo simulation. By this approach, 100 ensemble members of precipitation data are generated, as forcing input to a conceptual rainfall-runoff hydrologic model, and the resulting uncertainty in the streamflow prediction is quantified. Case studies are demonstrated over the Leaf River basin in Mississippi. Compared with conventional procedure, i.e., precipitation estimation error as fixed ratio of rain rates, the proposed framework provides more realistic quantification of precipitation estimation error and offers improved uncertainty assessment of the error propagation into hydrologic simulation. Further study shows that the radar rainfall-generated streamflow sequences are consistently contained by the uncertainty bound of satellite rainfall generated streamflow at the 95% confidence interval.
机译:本文的目的是促进端到端不确定性分析框架的开发,该框架可以量化基于卫星的降水估计误差特征,并评估误差传播对水文模拟的影响。首先,与基于卫星的降水估计有关的误差被假定为降雨时空综合尺度,降雨强度和采样频率的非线性函数。此功能的参数是通过使用高分辨率的基于卫星的降水估计和美国西南部经量规校正的雷达降雨数据确定的。在16个选定的5°x 5°纬度-经度网格上进行的参数敏感性分析显示,每个参数相对于平均值的方差约为12-16%。之后,利用蒙特卡洛模拟进一步研究了降水估算误差对水文响应不确定性的影响。通过这种方法,生成了100个集合降水数据,作为对概念性降雨径流水文模型的强制输入,并对流量预测中的不确定性进行了量化。在密西西比州的叶河流域进行了案例研究。与常规程序(即降雨率固定比率的降水估算误差)相比,该框架提供了更实际的降水估算误差量化方法,并提供了改进的将误差传播到水文模拟中的不确定性评估。进一步的研究表明,在95%置信区间内,卫星降雨产生的流量不确定性范围始终包含雷达降雨产生的流量序列。

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