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首页> 外文期刊>The Science of the Total Environment >A novel machine learning-based approach for the risk assessment of nitrate groundwater contamination
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A novel machine learning-based approach for the risk assessment of nitrate groundwater contamination

机译:一种基于机器学习的新颖方法,用于评估硝酸盐地下水污染的风险

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This study aimed to develop a novel framework for risk assessment of nitrate groundwater contamination by integrating chemical and statistical analysis for an arid region. A standard methodwas applied for assessing the vulnerability of groundwater to nitrate pollution in Lenjanat plain, Iran. Nitrate concentration were collected from 102 wells of the plain and used to provide pollution occurrence and probability maps. Three machine learning models including boosted regression trees (BRT), multivariate discriminant analysis (MDA), and support vector machine (SVM) were used for the probability of groundwater pollution occurrence. Afterwards, an ensemble modeling approachwas applied for production of the groundwater pollution occurrence probabilitymap. Validation of the models was carried out using area under the receiver operating characteristic curve method (AUC); values above 80% were selected to contribute in ensembling process. Results indicated that accuracy for the three models ranged from 0.81 to 0.87, therefore all models were considered for ensemble modeling process. The resultant groundwater pollution risk (produced by vulnerability, pollution, and probability maps) indicated that the central regions of the plain have high and very high risk of nitrate pollution further confirmed by the exiting landuse map. The findings may provide very helpful information in decision making for groundwater pollution risk management especially in semi-arid regions. (C) 2018 Elsevier B.V. All rights reserved.
机译:这项研究旨在通过整合干旱地区的化学和统计分析,为硝酸盐地下水污染的风险评估开发一个新的框架。应用了一种标准方法来评估伊朗Lenjanat平原地下水对硝酸盐污染的脆弱性。从平原的102口井中收集硝酸盐浓度,并将其用于提供污染发生和概率图。使用三种机器学习模型(包括增强回归树(BRT),多元判别分析(MDA)和支持向量机(SVM))来确定地下水污染发生的可能性。之后,采用集成建模方法生成地下水污染发生概率图。使用接收器工作特性曲线方法(AUC)下的面积进行模型验证;选择高于80%的值有助于组装过程。结果表明,这三个模型的准确性在0.81到0.87之间,因此将所有模型都考虑用于整体建模过程。由此产生的地下水污染风险(由脆弱性,污染和概率图生成)表明,平原的中部地区存在硝酸盐污染的风险非常高,而现有土地利用图则进一步证实了该风险。这些发现可能为地下水污染风险管理的决策提供非常有用的信息,尤其是在半干旱地区。 (C)2018 Elsevier B.V.保留所有权利。

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