机器学习在土壤中潜在有毒元素污染中的应用综述

IF 6.1 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Yan Li , Bao Xiang , Tianyang Wang , Yinhai He , Xiaoyang Liu , Yancheng Li , Shichang Ren , Erdan Wang , Guanlin Guo
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引用次数: 0

摘要

潜在有毒元素 (PTE) 对土壤的污染对环境和人类健康构成了巨大风险。传统的调查方法耗时长、成本高、准确性有限,因此往往无法满足大规模评估的需要。机器学习(ML)技术因其在处理高维和非结构化数据方面的优势,已成为环境研究中大有可为的工具。然而,对当代 ML 在 PTEs 内容、分布和识别方面的应用和方法的重要评估仍然很少。针对这一研究空白,本研究回顾了 ML 在土壤 PTEs 污染中的应用,包括含量预测、空间分布、来源识别和其他相关任务。高光谱数据与 ML 方法相结合,可以低成本预测大面积区域的 PTE 含量。此外,与传统的地质统计方法相比,整合了环境协变量的多重参照算法在空间预测方面具有更优越的性能。此外,与受体模型相结合的 ML 技术在定量识别和分摊 PTE 来源方面取得了重要进展,从而为有效的环境管理和风险评估提供了支持。根据使用变量的频率,我们提出土壤 pH 值、土壤有机质 (SOM)、工业活动、土壤质地和其他相关因素是关键的环境变量,可提高有关 PTE 空间分布和来源识别预测的准确性。从这些发现来看,ML 技术通过其强大的数据处理能力,为有效评估和管理土壤 PTEs 污染提供了新的视角和工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of machine learning in potentially toxic elemental contamination in soils: A review
Soil contamination by potentially toxic elements (PTEs) poses substantial risks to the environment and human health. Traditional investigational methods are often inadequate for large-scale assessments because they are time-consuming, costly, and have a limited accuracy. Machine learning (ML) techniques have emerged as promising tools in environmental studies because of their superiority in processing high-dimensional and unstructured data. However, critical evaluations of contemporary ML applications and methods in PTEs content, distribution, and identification remain scarce. To address this research gap, this study reviews applications of ML to soil PTEs contamination including content prediction, spatial distribution, source identification, and other related tasks. Hyperspectral data combined with ML methods can predict the content of PTEs in large-scale areas at a low cost. In addition, ML algorithms that integrate environmental covariates offer superior performance in spatial predictions compared with traditional geostatistical methods. Moreover, ML techniques incorporated with receptor models provide important advances in the quantitative identification and apportioning of PTE sources, thereby supporting effective environmental management and risk assessment. Based on the frequency of the variables used, we propose that soil pH, soil organic matter (SOM), industrial activities, soil texture, and other relevant factors are key environmental variables that enhance the accuracy of predictions regarding the spatial distribution and source identification of PTEs. From these findings, ML techniques, through their powerful data processing capabilities, provide new perspectives and tools for the efficient assessment and management of soil PTEs contamination.
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来源期刊
CiteScore
12.10
自引率
5.90%
发文量
1234
审稿时长
88 days
期刊介绍: Ecotoxicology and Environmental Safety is a multi-disciplinary journal that focuses on understanding the exposure and effects of environmental contamination on organisms including human health. The scope of the journal covers three main themes. The topics within these themes, indicated below, include (but are not limited to) the following: Ecotoxicology、Environmental Chemistry、Environmental Safety etc.
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