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Baseflow separation based on a meteorology-corrected nonlinear reservoir algorithm in a typical rainy agricultural watershed

机译:典型雨季农业流域基于气象校正非线性水库算法的底流分离

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A baseflow separation model called meteorology-corrected nonlinear reservoir algorithm (MNRA) was developed by combining nonlinear reservoir algorithm with a meteorological regression model, in which the effects of meteorological factors on daily baseflow recession were fully expressed. Using MNRA and the monitored data of daily streamflow and meteorological factors (including precipitation, evaporation, wind speed, water vapor pressure and relative humidity) from 2003 to 2012, we determined the daily, monthly, and yearly variations in baseflow from ChangLe River watershed, a typical rainy agricultural watershed in eastern China. Results showed that the estimated annual baseflow of the ChangLe River watershed varied from 18.8 cm (2004) to 61.9 cm (2012) with an average of 35.7 cm, and the baseflow index (the ratio of baseflow to streamflow) varied from 0.58 (2007) to 0.74 (2003) with an average of 0.65. Comparative analysis of different methods showed that the meteorological regression statistical model was a better alternative to the Fourier fitted curve for daily recession parameter estimation. Thus, the reliability and accuracy of the baseflow separation was obviously improved by MNRA, i.e., the Nash-Sutcliffe efficiency increased from 0.90 to 0.98. Compared with the Kalinin's and Eckhardt's recursive digital filter methods, the MNRA approach could usually be more sensitive for baseflow response to precipitation and obtained a higher goodness-of-fit for streamflow recession, especially in the area with high-level shallow groundwater and frequent rain. (C) 2016 Elsevier B.V. All rights reserved.
机译:通过将非线性水库算法与气象回归模型相结合,开发了一种称为气象校正非线性水库算法(MNRA)的基流分离模型,其中充分表达了气象因素对日基流衰退的影响。利用MNRA和2003年至2012年的每日流量和气象因子(包括降水,蒸发,风速,水蒸气压力和相对湿度)的监测数据,我们确定了长乐河流域日流量,日流量和年流量的变化,中国东部典型的多雨农业流域。结果表明,长乐河流域的估计年基流量从18.8 cm(2004)到61.9 cm(2012),平均为35.7 cm,基流指数(基流与流量之比)从0.58(2007)变化。至0.74(2003),平均为0.65。不同方法的比较分析表明,气象回归统计模型可以更好地替代傅立叶拟合曲线来估算每日衰退参数。因此,MNRA显着提高了基流分离的可靠性和准确性,即Nash-Sutcliffe效率从0.90提高到0.98。与Kalinin和Eckhardt的递归数字滤波方法相比,MNRA方法通常对底流对降水的响应更为敏感,并且对流向衰退的适应性更高,尤其是在地下水位较高,浅层地下水较多且经常降雨的地区。 (C)2016 Elsevier B.V.保留所有权利。

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