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Cluster and regression analysis for predicting salinity in groundwater

机译:聚类和回归分析预测地下水盐度

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Groundwater salinity is a major problem particularly in the northeastern region of Thailand. Saline groundwater can cause widespread saline soil problem resulting in reducing agricultural productivity as in the Lower Nam Kam River Basin. In order to better manage the salinity problem, it is important to be able to predict the groundwater salinity. The objective of this research was to create a cluster-regression model for predicting the groundwater salinity. The indicator of groundwater salinity in this study was electrical conductivity because it was simple to measure in field. Ninety-eight parameters were measured including precipitation, surface water levels, groundwater levels and electrical conductivity. In this study, the highest groundwater salinity at 3 wells was predicted using the combined cluster and multiple linear regression analysis. Cross correlation and cluster analysis were applied in order to reduce the number of parameters to effectively predict the quality. After the parameter selection, multiple linear regression was applied and the modeling results obtained were R2 of 0.888, 0.918, and 0.692, respectively. This linear regression model technique can be applied elsewhere in the similar situation.
机译:地下水盐度是一个主要问题,尤其是在泰国东北部地区。像下南坎姆河流域一样,盐水会引起广泛的盐渍土问题,导致农业生产力下降。为了更好地管理盐度问题,重要的是能够预测地下水的盐度。这项研究的目的是创建一个用于预测地下水盐度的聚类回归模型。这项研究中的地下水盐度指标是电导率,因为它很容易在野外测量。测量了九十八个参数,包括降水,地表水位,地下水位和电导率。在这项研究中,使用组合聚类和多元线性回归分析预测了3口井的最高地下水盐度。为了减少参数数量以有效预测质量,应用了互相关和聚类分析。选择参数后,应用多元线性回归,获得的建模结果的R2分别为0.888、0.918和0.692。这种线性回归模型技术可以在类似情况下的其他地方应用。

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