采用创新离群点检测技术的机器学习模型用于预测土壤中的重金属污染

IF 12.2 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL Journal of Hazardous Materials Pub Date : 2024-11-19 DOI:10.1016/j.jhazmat.2024.136536
Ram Proshad, S.M. Asharaful Abedin Asha, Ron Tan, Yineng Lu, Md Anwarul Abedin, Zihao Ding, Shuangting Zhang, Ziyi Li, Geng Chen, Zhuanjun Zhao
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引用次数: 0

摘要

由于数据集异常值会影响模型的可靠性和准确性,用于准确预测重金属的机器学习(ML)模型在输出不一致的情况下得到了改进。我们采用了一种结合了机器学习和先进统计方法的综合技术来评估数据异常值对 ML 模型的影响。采用三种异常值检测方法的 10 个 ML 模型对 Narayanganj 土壤中的铬、镍、镉和铅进行了预测。XGBoost 与基于密度的空间聚类应用(DBSCAN)提高了模型的有效性(R2)。铬、镍、镉和铅的 R2 分别提高了 11.11%、6.33%、14.47% 和 5.68%,表明异常值影响了模型的 HM 预测。根据特征重要性,土壤因子对铬 (80%)、镍 (72.61%)、镉 (53.35%) 和铅 (63.47%) 的浓度有影响。污染因子预测显示,铬、镍和镉的污染程度相当高。LISA 显示,镉(55.4%)、铬(49.3%)和铅(47.3%)是重要污染物(p < 0.05)。铬、镍、镉和铅的 Moran's I 指数值分别为 0.65、0.58、0.60 和 0.66,表明存在较强的正空间自相关性和污染相似的聚类。最后,这项工作成功评估了数据异常值对土壤 HM 污染预测 ML 模型的影响,确定了需要采取快速保护措施的关键区域。
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Machine learning models with innovative outlier detection techniques for predicting heavy metal contamination in soils
Machine learning (ML) models for accurately predicting heavy metals with inconsistent outputs have improved owing to dataset outliers, which influence model reliability and accuracy. A comprehensive technique that combines machine learning and advanced statistical methods was applied to assess data outlier’s effects on ML models. Ten ML models with three outlier detection methods predicted Cr, Ni, Cd, and Pb in Narayanganj soils. XGBoost with density-based spatial clustering of applications with noise (DBSCAN) improved model efficacy (R2). The R2 of Cr, Ni, Cd, and Pb was considerably enhanced by 11.11%, 6.33%, 14.47%, and 5.68%, respectively, indicating that outliers affected the model's HM prediction. Soil factors affected Cr (80%), Ni (72.61%), Cd (53.35%), and Pb (63.47%) concentrations based on feature importance. Contamination factor prediction showed considerable contamination for Cr, Ni, and Cd. LISA revealed Cd (55.4%), Cr (49.3%), and Pb (47.3%) as the significant pollutant (p < 0.05). Moran's I index values for Cr, Ni, Cd, and Pb were 0.65, 0.58, 0.60, and 0.66, respectively, indicating strong positive spatial autocorrelation and clusters with similar contamination. Finally, this work successfully assessed the influence of data outliers on the ML model for soil HM contamination prediction, identifying crucial regions that require rapid conservation measures.
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来源期刊
Journal of Hazardous Materials
Journal of Hazardous Materials 工程技术-工程:环境
CiteScore
25.40
自引率
5.90%
发文量
3059
审稿时长
58 days
期刊介绍: The Journal of Hazardous Materials serves as a global platform for promoting cutting-edge research in the field of Environmental Science and Engineering. Our publication features a wide range of articles, including full-length research papers, review articles, and perspectives, with the aim of enhancing our understanding of the dangers and risks associated with various materials concerning public health and the environment. It is important to note that the term "environmental contaminants" refers specifically to substances that pose hazardous effects through contamination, while excluding those that do not have such impacts on the environment or human health. Moreover, we emphasize the distinction between wastes and hazardous materials in order to provide further clarity on the scope of the journal. We have a keen interest in exploring specific compounds and microbial agents that have adverse effects on the environment.
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