Assessing the environmental determinants of micropollutant contamination in streams using explainable machine learning and network analysis.

Chemosphere Pub Date : 2025-02-01 Epub Date: 2024-12-31 DOI:10.1016/j.chemosphere.2024.144041
Min Jeong Ban, Dong Hoon Lee, Byung-Tae Lee, Joo-Hyon Kang
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Abstract

Even at trace concentrations, micropollutants, including pesticides and pharmaceuticals, pose considerable ecological risks, and the increasing presence of synthetic chemical substances in aquatic systems has emerged as a growing concern. Moreover, limited machine-learning (ML) approaches exist for analyzing environmental data, and the increasing complexity of ML models has made it challenging to understand predictor-outcome relationships. In particular, understanding complex interactions among multiple variables remains challenging. This study applies and integrates explainable ML techniques and network analysis to identify the sources of micropollutants in a large watershed and determine the factors affecting micropollutant levels. We assessed the performance of four ML algorithms-support vector machine, random forest, extreme gradient boosting (XGB), and autoencoder-XGB-in predicting micropollutant levels based on the spatial characteristics of the watershed. We applied the synthetic minority oversampling technique to address the data imbalance. The XGB model demonstrated superior predictive performance, particularly for high concentration levels, achieving an accuracy of 87%-99%. Shapley additive explanations (SHAP) analysis identified temperature and rainfall as significant factors. Moreover, agricultural activities contributed to pesticide pollution, whereas urban activities contributed to pharmaceutical contamination. The network analysis corroborated the SHAP findings and revealed event-specific contamination characteristics. This included distinct discharge pathways during a dry summer event and shared pathways during a wet winter event. This approach enhances an understanding of contamination sources and pathways and subsequently aids in developing control measures and making informed policy decisions to preserve water quality in mixed land-use areas.

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使用可解释的机器学习和网络分析评估溪流中微污染物污染的环境决定因素。
即使是微量浓度的微污染物,包括农药和药品,也构成相当大的生态风险,水生系统中合成化学物质的日益增加已成为一个日益令人关切的问题。此外,用于分析环境数据的机器学习(ML)方法有限,ML模型的复杂性日益增加,这使得理解预测-结果关系变得具有挑战性。特别是,理解多个变量之间复杂的相互作用仍然具有挑战性。本研究应用并整合可解释的ML技术和网络分析来识别大流域微污染物的来源,并确定影响微污染物水平的因素。我们评估了四种ML算法——支持向量机、随机森林、极端梯度增强(XGB)和自动编码器-XGB——在基于流域空间特征预测微污染物水平方面的性能。我们采用了合成少数派过采样技术来解决数据不平衡问题。XGB模型表现出优越的预测性能,特别是在高浓度水平下,达到87%-99%的准确率。沙普利加性解释(Shapley additive explanation, SHAP)分析发现温度和降雨是显著的影响因素。此外,农业活动造成农药污染,而城市活动造成药品污染。网络分析证实了SHAP的发现,并揭示了特定事件的污染特征。这包括在干燥的夏季事件中不同的排放路径和在潮湿的冬季事件中共享的路径。这种方法加强了对污染源和途径的了解,并随后有助于制定控制措施和作出明智的政策决定,以保持混合土地利用地区的水质。
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