Design of the groundwater level monitoring network using principal component analysis (PCA) technique.

Atefeh Sayadi Shahraki, S. Broomandnasab, Abd Ali Naseri, Amir Soltani Mohammadi
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Abstract

Using an appropriate monitoring network is considered as an efficient option to manage the groundwater resources and reduce drilling of costly sampling wells. Principal component analysis (PCA) is one of the data reduction techniques used to extract essential components. The used techniques are based on the identification of those describing the variance of the system. In this paper, the PCA technique has been employed in order to identify the effective wells and remove the less important ones. For this purpose, 160 wells were constructed in the Salman Farsi Agro-Industry, located in Khuzestan province of Iran. The data are measured twice a month for 12 months. In this technique, variation factors called principal components are identified through considering the data structures. Using the PCA, the relative importance of each well has been calculated for the groundwater depth estimation. In the present study, the acceptable threshold has been taken to be 0.8 and therefore the number of wells in determining groundwater depth was reduced to 33 ones. Identifying the essential wells, the important points for sampling are identified and groundwater depth monitoring is performed only in these wells. This will save time and cost of groundwater level monitoring within the study area.
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应用主成分分析(PCA)技术设计地下水位监测网。
使用适当的监测网络被认为是管理地下水资源和减少昂贵取样井钻探的有效选择。主成分分析(PCA)是一种用于提取基本成分的数据约简技术。所使用的技术是基于那些描述系统方差的识别。本文采用主成分分析技术来识别有效井,去除不重要的井。为此目的,在位于伊朗胡齐斯坦省的Salman Farsi农用工业地区建造了160口井。这些数据每月测量两次,持续12个月。在该技术中,通过考虑数据结构来确定称为主成分的变化因子。利用主成分分析法,计算了各井在地下水深度估算中的相对重要性。在本研究中,可接受的阈值为0.8,因此确定地下水深度的井数减少到33口。确定基本井,确定采样要点,仅在这些井中进行地下水深度监测。这将节省研究区内地下水水位监测的时间和成本。
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0.00%
发文量
21
审稿时长
30 weeks
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