墨西哥地下水水质综合评价及基于机器学习的新水分类方案的应用

IF 1 4区 工程技术 Q4 CHEMISTRY, APPLIED
L. Díaz-González, M. Rosales-Rivera, L.A. Chávez-Almazán
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引用次数: 0

摘要

这项研究对墨西哥所有水文行政区的1068个监测点的地下水质量进行了全面评估。通过对氟化物、粪大肠菌群、硝态氮、砷、镉、铬、汞、铅、锰、铁、碱度、电导率、水硬度和总溶解固体等14个理化和微生物参数的分析,发现41%的场地水质良好。此外,23%的场地水质正常,36%的场地水质较差。与水质正常和较差的地点相比,水质良好的地点表现出较低的主要离子浓度(Ca、Mg、Na、K、SO4、Cl和HCO3)。还使用基于线性核支持向量机、统计技术和蒙特卡罗模拟的VL模型来估计水命名。该模型将87%的监测点划分为四个基本水类别:NaHCO3(47%);氯化钠(18%);Ca HCO3(17%);和NaSO4(5%)。此外,应用t-SNE计算算法来降低数据的维度,并将其可视化为2D图;在这种情况下,数据对应于主要离子和污染物的化学浓度。该算法根据VL模型估计的水命名法得到了聚类结果。污染物研究结果显示,所有水文行政区至少有一个物理化学微生物参数超过了墨西哥法规规定的可接受水平。因此,实施环境卫生战略对于确保获得对人类健康安全的高质量水资源至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comprehensive assessment of groundwater quality in Mexico and application of new water classification scheme based on machine learning
This study conducted a comprehensive evaluation of groundwater quality at 1,068 monitoring sites across all hydrologicadministrative regions in Mexico. Based on the analysis of 14 physicochemical and microbiological parameters, which include fluorides, fecal coliforms, nitrate-nitrogen, arsenic, cadmium, chromium, mercury, lead, manganese, iron, alkalinity, conductivity, water hardness, and total dissolved solids, it was found that 41% of the sites exhibited good water quality. Additionally, 23% of the sites presented regular water quality, while 36% of the sites showed poor water quality. Sites with good water quality exhibited lower concentrations of major ions (Ca, Mg, Na, K, SO4, Cl, and HCO3) compared to sites with regular and poor water quality. Water nomenclature was also estimated using the VL model based on Support Vector Machines with linear kernel, statistical techniques, and Monte Carlo simulation. This model cl sified 87% of the monitoring sites into four basic water classes: Na HCO3 (47%); Na Cl (18%); Ca HCO3 (17%); and Na SO4 (5%). Furthermore, the t-SNE computational algorithm was applied to reduce the dimensionality of the data and visualize it in a 2D plot; in this context, the data corresponds to the chemical concentrations of major ions and contaminants. This alg rithm obtained a clustering cons stent w th the water nomenclature estimated by the VL model. The contaminant study results revealed that all hydrologic-administrative regions presented at least one physicochemical-microbiological parameter that exceeded the acceptable levels defined by regulations of Mexico. Therefore, the implementation of environmental sanitation strategies is crucial to ensure the availability of high-quality water resources that are safe for human health.
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来源期刊
CiteScore
3.60
自引率
33.30%
发文量
50
审稿时长
>12 weeks
期刊介绍: Revista Mexicana de Ingeniería Química (ISSN 1665-2738) publishes original research articles, with the aim of promoting rapid communication of relevant research in the several disciplines within Chemical Engineering and its interfaces with other engineering disciplines. The contents of the journal are directed to researchers, academics, students and decision makers. The covered topics are: Thermodynamics; Catalysis, kinetics and reactors; Simulation and control; Transport phenomena; Safety; Process engineering; Biotechnology; Food engineering; Sustainable development; Environmental engineering; Materials; Applied mathematics and Education.
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