首页> 外文期刊>Environmental Monitoring and Assessment >Assessment of groundwater nitrate contamination hazard in a semi-arid region by using integrated parametric IPNOA and data-driven logistic regression models
【24h】

Assessment of groundwater nitrate contamination hazard in a semi-arid region by using integrated parametric IPNOA and data-driven logistic regression models

机译:利用综合参数化IPNOA和数据驱动的Logistic回归模型评估半干旱地区地下水硝酸盐污染危害

获取原文
获取原文并翻译 | 示例
           

摘要

Groundwater hazard assessments involve many activities dealing with the impacts of pollution on groundwater, such as human health studies and environment modelling. Nitrate contamination is considered a hazard to human health, environment and ecosystem. In groundwater management, the hazard should be assessed before any action can be taken, particularly for groundwater pollution and water quality. Thus, pollution due to the presence of nitrate poses considerable hazard to drinking water, and excessive nutrient loads deteriorate the ecosystem. The parametric IPNOA model is one of the well-known methods used for evaluating nitrate content. However, it cannot predict the effect of soil and land use/land cover (LULC) types on calculations relying on parametric well samples. Therefore, in this study, the parametric model was trained and integrated with the multivariate data-driven model with different levels of information to assess groundwater nitrate contamination in Saladin, Iraq. The IPNOA model was developed with 185 different well samples and contributing parameters. Then, the IPNOA model was integrated with the logistic regression (LR) model to predict the nitrate contamination levels. Geographic information system techniques were also used to assess the spatial prediction of nitrate contamination. High-resolution SPOT-5 satellite images with 5 m spatial resolution were processed by object-based image analysis and support vector machine algorithm to extract LULC. Mapping of potential areas of nitrate contamination was examined using receiver operating characteristic assessment. Results indicated that the optimised LR-IPNOA model was more accurate in determining and analysing the nitrate hazard concentration than the standalone IPNOA model. This method can be easily replicated in other areas that have similar climatic condition. Therefore, stakeholders in planning and environmental decision makers could benefit immensely from the proposed method of this research, which can be potentially used for a sustainable management of urban, industrialised and agricultural sectors.
机译:地下水危害评估涉及许多活动,这些活动涉及污染对地下水的影响,例如人体健康研究和环境建模。硝酸盐污染被认为是对人类健康,环境和生态系统的危害。在地下水管理中,应在采取任何措施之前评估危害,尤其是在地下水污染和水质方面。因此,由于硝酸盐的存在而造成的污染对饮用水构成相当大的危害,过多的养分负荷使生态系统恶化。参数化IPNOA模型是用于评估硝酸盐含量的众所周知的方法之一。但是,它无法预测依赖参数井样本的土壤和土地利用/土地覆被(LULC)类型对计算的影响。因此,在本研究中,对参数模型进行了训练,并将其与具有不同信息水平的多元数据驱动模型集成,以评估伊拉克萨拉丁的地下水硝酸盐污染。 IPNOA模型是用185个不同的井样和贡献参数开发的。然后,将IPNOA模型与逻辑回归(LR)模型集成在一起,以预测硝酸盐污染水平。地理信息系统技术还用于评估硝酸盐污染的空间预测。通过基于对象的图像分析和支持向量机算法对空间分辨率为5 m的高分辨率SPOT-5卫星图像进行处理,以提取LULC。使用接收器工作特性评估检查了硝酸盐污染的潜在区域图。结果表明,与独立的IPNOA模型相比,优化的LR-IPNOA模型在确定和分析硝酸盐危害浓度方面更为准确。这种方法可以很容易地在气候条件相似的其他地区复制。因此,计划和环境决策者的利益相关者可以从本研究的建议方法中受益匪浅,该方法可以潜在地用于城市,工业和农业部门的可持续管理。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号