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Detecting hydrological droughts in ungauged areas from remotely sensed hydro-meteorological variables using rule-based models

机译:使用基于规则的模型来检测从远程感测的水力气象变量的未凝固区域中的水文干旱

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As a method of detecting hydrological droughts in ungauged areas, we propose rule-based models using percentiles from remotely sensed key hydro-meteorological variables. Four rule-based models of the Decision Trees, Adaptive Boosting of Decision Trees (Adaboost), Random Forest, and Extremely Randomized Trees are used for their capabilities of modeling nonlinear relationships, and their results are compared to the multiple linear regression. The temporal information of month and the percentiles of key variables of water and energy balance including precipitation, actual evapotranspiration, Normalized Difference Vegetation Index (NDVI), land surface temperature, and soil moisture are used as input variables. Drought severity values are calculated from streamflow percentiles for 3-, 6-, 9-, and 12-month time scales as an indicator for hydrological droughts. Data from six basins of the case study area are used for tuning model parameters and training, and the remaining two basins are used for final evaluation. Models with an ensemble of trees successfully detect hydrological droughts despite the limited input variables (for Adaboost, correlation coefficients >= 0.85, mean absolute error <= 0.12, root-mean-square error-observations standard deviation ratio <= 0.53, and larger Nash-Sutcliffe efficiency of drought severity >= 0.72 for the test data set). The most important variable is precipitation, followed by soil moisture (3-month time scale) or NDVI (longer time scales). Hydrological droughts in various time scales are detected in ungauged areas of the case study area. Serious droughts in early 2002, from late 2006 to mid-2007, from early 2008 to 2009, and from mid-2013 to 2017 are detected.
机译:作为检测未凝固区域中水文干旱的方法,我们提出了基于规则的模型,使用远程感测的关键水级气象变量的百分比。基于规则的决策树模型,决策树(Adaboost),随机森林和极其随机树木的自适应提升用于它们对非线性关系建模的能力,并且它们的结果与多元线性回归相比。月份和水和能量平衡的关键变量百分比的时间信息,包括降水,实际蒸发,归一化差异植被指数(NDVI),陆地温度和土壤水分用作输入变量。受干旱严重程度值由STREEF流百分比计算为3-,6-,9-和12个月的时间尺度作为水文干旱指标。案例研究区域的六个盆地的数据用于调整模型参数和培训,剩余的两个盆地用于最终评估。具有树木集合的模型,尽管输入变量有限(适用于Adaboost,相关系数> = 0.85,平均误差<= 0.12,根均方误差观察标准偏差率<= 0.53,以及较大的纳什 - 测试数据集的干旱严重程度的效率> = 0.72)。最重要的变量是降水,其次是土壤水分(3个月的时间尺度)或NDVI(较长的时间尺度)。在案例研究区域的未凝固区域中检测到各种时间尺度的水文干旱。 2002年初的严重干旱从2006年底到2007年中期,从2008年初到2009年,从2013年中期到2017年被检测到。

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