Possibilities of Applying Multivariable Regression in Groundwater Data Series along a Riverbank Area

IF 0.6 Q4 ENGINEERING, CIVIL
Flora Wagner
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引用次数: 0

Abstract

Abstract Groundwater modelling needs a large number of piezometer well data, which is unfortunately not always available as earlier registered data series are not always continuous. The reconstruction of data series with gaps was previously examined on a small riverside pilot area with the help of multiple regression, this method has now been tested at a 50-times larger environment. The results show that the reconstruction of the data series with this method works with average monthly groundwater levels and that applying multiple regression with the independent variables being one of the wells and the river optimizes the accuracy of the calculated data series, even if the relationships between the river and the wells are weak. The effect of the multiple regression on the accuracy is greater if the data series is sparser.
多变量回归在河岸地区地下水资料序列中的应用可能性
摘要地下水建模需要大量的测压井数据,不幸的是,这些数据并不总是可用的,因为早期注册的数据系列并不总是连续的。之前,在多元回归的帮助下,在一个小型河边试验区对有缺口的数据序列的重建进行了检查,现在,这种方法已经在50倍大的环境中进行了测试。结果表明,该方法对数据序列的重建适用于月平均地下水位,并且即使河流和水井之间的关系较弱,应用以水井和河流为自变量的多元回归也能优化计算数据序列的准确性。如果数据序列更稀疏,则多元回归对精度的影响更大。
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21
审稿时长
29 weeks
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