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黑土保护性耕作下农田土壤重金属含量的高光谱反演

Hyperspectral inversion of heavy metal content in farmland soil under conservation tillage of black soils.

作者信息

Chen Yanan, Shi Wanying, Aihemaitijiang Guzailinuer, Zhang Feng, Zhang Jiquan, Zhang Yichen, Pan Dianqi, Li Jinying

机构信息

College of Jilin Emergency Management, Changchun Institute of Technology, Changchun, 130012, China.

College of Resources and Environment, Jilin Agricultural University, Changchun, 130118, China.

出版信息

Sci Rep. 2025 Jan 2;15(1):354. doi: 10.1038/s41598-024-83479-0.

Abstract

Globally, heavy metal (HM) soil pollution is becoming an increasingly serious concern. Heavy metals in soils pose significant environmental and health risks due to their persistence, toxicity, and potential for bioaccumulation. These metals often originate from anthropogenic activities such as industrial emissions, agricultural practices, and improper waste disposal. Once introduced into the soil, they can bind to soil particles, making them difficult to remove, while potentially entering the food chain through plant uptake or water contamination. Rapid access to reliable data on HM viscosity in soils is necessary to efficiently monitor remediated soils. Visible and near-infrared reflectance spectroscopy (350-2500 nm) is an economical and zero-pollution method that can evaluate multiple HM concentrations in soil simultaneously. Black soil is a valuable agricultural resource that helps guarantee food security worldwide and can serve as a soil carbon reservoir, but its protection faces several challenges. Due to long-term high-intensity development and utilization and the severe over-exploitation of groundwater, the arable land in China's black soil area has been degraded. Using hyperspectral inversion of heavy metal content in soil can reduce the destructive sample collection and chemical pollution of soil, better protect black land resources, and steadily restore and improve the basic fertility of black land. Focusing on the black area region of Jilin Province, this study explored the correlation between three HMs, namely copper, zinc, and cadmium, and organic substances, clay minerals, and ferromanganese oxides through an in-depth analysis of soil samples using soil reflectance spectrometry. The spectra were transformed using first-and second-order derivatives, multiple scattering corrections, autoscales, and Savitzky-Golay smoothing. The successive projection algorithm was used to screen characteristic bands (Table S1) to establish the link between HM content in soil and soil spectra. By employing the support vector machine (SVM), random forest (RF), and partial least squares (PLS) models, feature band-based soil HM inversion modeling was established. Moreover, the optimal combinations of spectral transforms and inversion models were also examined. The findings indicate that the RF model (R > 0.8, RPIQ > 0) outperformed the SVM and PLS models in anticipating the three soil HMs, thus demonstrating superior accuracy. Understanding the behavior of heavy metals in soils and developing effective management strategies are essential for ensuring sustainable land use and protecting public health. This study contributes to the development of large-scale monitoring systems for the HM content of soil and assessments of HM contamination.

摘要

在全球范围内,重金属土壤污染正日益成为一个严重问题。土壤中的重金属因其持久性、毒性和生物累积潜力而带来重大的环境和健康风险。这些金属通常源于工业排放、农业活动和不当废物处理等人为活动。一旦进入土壤,它们会与土壤颗粒结合,难以去除,同时可能通过植物吸收或水污染进入食物链。快速获取土壤中重金属含量的可靠数据对于有效监测修复后的土壤至关重要。可见和近红外反射光谱法(350 - 2500纳米)是一种经济且无污染的方法,可同时评估土壤中多种重金属的浓度。黑土是一种宝贵的农业资源,有助于保障全球粮食安全,还可作为土壤碳库,但其保护面临诸多挑战。由于长期高强度开发利用以及对地下水的严重过度开采,中国黑土区的耕地已退化。利用土壤重金属含量的高光谱反演可减少对土壤的破坏性采样和化学污染,更好地保护黑土地资源,并稳步恢复和提高黑土地的基本肥力。本研究聚焦于吉林省黑土区,通过使用土壤反射光谱法对土壤样本进行深入分析,探究了铜、锌和镉这三种重金属与有机物质、粘土矿物和铁锰氧化物之间的相关性。对光谱进行了一阶和二阶导数变换、多元散射校正、自动标度和Savitzky - Golay平滑处理。采用连续投影算法筛选特征波段(表S1),以建立土壤中重金属含量与土壤光谱之间的联系。通过运用支持向量机(SVM)、随机森林(RF)和偏最小二乘法(PLS)模型,建立了基于特征波段的土壤重金属反演模型。此外,还研究了光谱变换和反演模型的最佳组合。研究结果表明,在预测三种土壤重金属方面,随机森林模型(R > 0.8,RPIQ > 0)优于支持向量机和偏最小二乘法模型,从而显示出更高的准确性。了解土壤中重金属的行为并制定有效的管理策略对于确保土地可持续利用和保护公众健康至关重要。本研究有助于开发土壤重金属含量的大规模监测系统以及评估重金属污染情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2b66/11696877/7212f9fb13a5/41598_2024_83479_Fig1_HTML.jpg

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