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Decision-tree-model identification of nitrate pollution activities in groundwater: A combination of a dual isotope approach and chemical ions

机译:地下水中硝酸盐污染活动的决策树模型识别:双重同位素方法和化学离子的结合

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To develop management practices for agricultural crops to protect against NO3- contamination in groundwater, dominant pollution activities require reliable classification. In this study, we (1) classified potential NO3- pollution activities via an unsupervised learning algorithm based on delta N-15- and delta O-18-NO3- and physico-chemical properties of groundwater at 55 sampling locations; and (2) determined which water quality parameters could be used to identify the sources of NO3- contamination via a decision tree model. When a combination of delta N-15-, delta O-18-NO3- and physico-chemical properties of groundwater was used as an input for the k-means clustering algorithm, it allowed for a reliable clustering of the 55 sampling locations into 4 corresponding agricultural activities: well irrigated agriculture (28 sampling locations), sewage irrigated agriculture (16 sampling locations), a combination of sewage irrigated agriculture, farm and industry (5 sampling locations) and a combination of well irrigated agriculture and farm (6 sampling locations). A decision tree model with 97.5% classification success was developed based on SO42- and Cl- variables. The NO3- and the delta N-15- and delta O-18-NO3- variables demonstrated limitation in developing a decision tree model as multiple N sources and fractionation processes both resulted in difficulties of discriminating NO3- concentrations and isotopic values. Although only the SO42- and Cl- were selected as important discriminating variables, concentration data alone could not identify the specific NO3- sources responsible for groundwater contamination. This is a result of comprehensive analysis. To further reduce NO3- contamination, an integrated approach should be set-up by combining N and O isotopes of NO3- with land-uses and physico-chemical properties, especially in areas with complex agricultural activities. (C) 2015 Elsevier B.V. All rights reserved.
机译:为了制定农作物的管理方法以防止地下水中的NO3污染,主要污染活动需要可靠的分类。在这项研究中,我们(1)通过基于增量N-15-和增量O-18-NO3-的无监督学习算法以及55个采样点的地下水的理化特性,对潜在的NO3-污染活动进行了分类; (2)通过决策树模型确定哪些水质参数可用于识别NO3-污染源。当将δN-15-,δO-18-NO3-和地下水的物理化学性质结合起来用作k-均值聚类算法的输入时,它可以将55个采样位置可靠地聚类为4个相应的农业活动:灌溉良好的农业(28个采样点),污水灌溉的农业(16个采样点),污水灌溉的农业,农场和工业的结合(5个采样点)以及灌溉农业和农场的结合(6个采样点) )。基于SO42-和Cl-变量,开发了分类成功率为97.5%的决策树模型。 NO3-和δN-15-和δO-18-NO3-变量在开发决策树模型时显示出局限性,因为多个氮源和分馏过程均导致难以区分NO3-浓度和同位素值。尽管仅选择了SO42-和Cl-作为重要的判别变量,但仅靠浓度数据无法确定造成地下水污染的特定NO3-来源。这是综合分析的结果。为了进一步减少NO3-污染,应该建立一种综合方法,将NO3-的N和O同位素与土地利用和理化特性结合起来,特别是在农业活动复杂的地区。 (C)2015 Elsevier B.V.保留所有权利。

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