城市化河道泥沙风险指数的机器学习预测模型

IF 5.4 Q2 ENGINEERING, ENVIRONMENTAL
María Alejandra Pimiento , Jose Anta , Andres Torres
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引用次数: 0

摘要

尽管机器学习(ML)在水质评估和污染源识别中的应用越来越多,但其在预测城市雨水沉积物环境风险指标方面的潜力仍未得到充分开发。传统模型难以捕捉水文变量、沉积物和污染参数之间复杂的相互作用。本研究使用ML技术来增强沉积物质量评估,以解决这一差距。以哥伦比亚波哥大莫利诺斯河沉积物为研究对象,研究了沉积物的粒径分布(PSD)、重金属(HM)浓度和环境风险指数。采用Cohen’s Kappa系数评价了Ni和Pb富集因子(EF)与PSD、降水等水文变量之间的关系。通过多个校准和验证数据集验证,使用方差分析核的支持向量机模型证明了预测城市排水系统中与沉积物相关风险的可行性。最佳模型成功预测了8个样品中7个样品的Pb EF水平,达到了0.71的Cohen's Kappa系数(p = 0.037),表明具有实质性的一致性。这些发现突出了ML模型利用降雨数据预测沉积物EF的潜力,为环境风险评估提供了实用的工具。通过预测污染水平,这种方法可以加强决策并促进更可持续的城市水管理战略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning predictive modelling for sediment risk indices within an urbanized river channel

Machine learning predictive modelling for sediment risk indices within an urbanized river channel
Despite the growing application of machine learning (ML) in water quality assessment and pollution source identification, its potential for predicting environmental risk indices in urban stormwater sediments remains largely unexplored. Conventional models struggle to capture complex interactions among hydrological variables, sediments and pollution parameters. This study uses ML techniques to enhance sediment quality assessment to address this gap. The case study focuses on sediments from the Molinos River in Bogotá, Colombia, characterized by particle size distribution (PSD), heavy metal (HM) concentrations, and environmental risk indices. Cohen's Kappa coefficient was used to evaluate the relationship between the enrichment factor (EF) of Ni and Pb, PSD, and hydrological variables as rainfall data. A support vector machine model using an ANOVA kernel, validated through multiple calibration and validation datasets, demonstrated the feasibility of predicting sediment-related risks in urban drainage systems. The best model successfully predicted Pb EF levels for 7 of 8 samples, achieving a Cohen's Kappa coefficient of 0.71 (p = 0.037), indicating substantial agreement. These findings highlight the potential of ML models to predict sediment EF using rainfall data, providing a practical tool for environmental risk assessment. By enabling predictions of contamination levels, this methodology enhances decision-making and promotes more sustainable urban water management strategies.
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来源期刊
Journal of hazardous materials advances
Journal of hazardous materials advances Environmental Engineering
CiteScore
4.80
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