重新想象Kendall图:利用硝酸盐的δ15N和δ18O和先进的机器学习改进N污染源分类。

IF 1.1 4区 环境科学与生态学 Q4 CHEMISTRY, INORGANIC & NUCLEAR
Katarzyna Samborska-Goik, Leonard I Wassenaar
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引用次数: 0

摘要

硝酸盐(NO3-)污染在许多国家是一个严重的水质问题,这是由于集约化农业实践和废水管理不当导致的湖泊、河流和含水层污染。预计硝酸盐污染和相关的文化富营养化将在世界范围内增加,这突出了控制和减少氮污染的必要性。硝酸盐的稳定同位素(δ15N、δ18O)被广泛用作氮污染源的示踪剂。识别硝酸盐来源的主要技术一直是长期存在的肯德尔箱线图,尽管改进了使用贝叶斯定理和R语言的方法,可以利用水文地球化学背景、N源数据和专家评估来估计来源分数。本文利用全面公布的四种已知污染物类型硝酸盐的稳定同位素数据,并应用机器学习算法,改进了水硝酸盐来源的分类。人工智能建模结果揭示了改进的来源描述,并为识别N污染源提供了一个强大的统计框架。鉴于公布的数据来源越来越多,而且需要有更明智的水质管理战略,这一点至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reimagining the Kendall plot: using δ15N and δ18O of nitrate and advanced machine learning to improve N pollutant source classification.

Nitrate (NO3-) pollution is a serious water quality issue in many countries due to contamination of lakes, rivers, and aquifers by intensive agriculture practices and inadequate wastewater management. Nitrate pollution and associated cultural eutrophication are anticipated to increase worldwide, highlighting the need to control and reduce nitrogen pollution. The stable isotope ratios of nitrate (δ15N, δ18O) are widely used as tracers of nitrogen pollution sources. The primary technique for identifying nitrate sources has been the longstanding Kendall boxplot, despite improved methods using Bayes' theorem and the R language for estimating source fractions using hydrogeochemical context, N source data and expert assessment. This article improves the classification of aqueous nitrate sources using comprehensive published stable isotope data for nitrate from four known pollutant types and applying machine learning algorithms. AI modelling results reveal improved source depictions and offer a robust statistical framework for identifying N pollution sources. This is essential given the increased published data sources and the need for better-informed water quality management strategies.

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来源期刊
CiteScore
2.80
自引率
7.70%
发文量
21
审稿时长
3.0 months
期刊介绍: Isotopes in Environmental and Health Studies provides a unique platform for stable isotope studies in geological and life sciences, with emphasis on ecology. The international journal publishes original research papers, review articles, short communications, and book reviews relating to the following topics: -variations in natural isotope abundance (isotope ecology, isotope biochemistry, isotope hydrology, isotope geology) -stable isotope tracer techniques to follow the fate of certain substances in soil, water, plants, animals and in the human body -isotope effects and tracer theory linked with mathematical modelling -isotope measurement methods and equipment with respect to environmental and health research -diagnostic stable isotope application in medicine and in health studies -environmental sources of ionizing radiation and its effects on all living matter
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