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利用光谱技术间接估算稻田土壤中的重金属污染

Indirect Estimation of Heavy Metal Contamination in Rice Soil Using Spectral Techniques.

作者信息

Zhong Liang, Yang Shengjie, Rong Yicheng, Qian Jiawei, Zhou Lei, Li Jianlong, Sun Zhengguo

机构信息

State Key Laboratory of Pharmaceutical Biotechnology, School of Life Sciences, Nanjing University, Nanjing 210023, China.

Department of Ecology, School of Life Sciences, Nanjing University, Nanjing 210023, China.

出版信息

Plants (Basel). 2024 Mar 14;13(6):831. doi: 10.3390/plants13060831.

Abstract

The rapid growth of industrialization and urbanization in China has led to an increase in soil heavy metal pollution, which poses a serious threat to ecosystem safety and human health. The advancement of spectral technology offers a way to rapidly and non-destructively monitor soil heavy metal content. In order to explore the potential of rice leaf spectra to indirectly estimate soil heavy metal content. We collected farmland soil samples and measured rice leaf spectra in Xushe Town, Yixing City, Jiangsu Province, China. In the laboratory, the heavy metals Cd and As were determined. In order to establish an estimation model between the pre-processed spectra and the soil heavy metals Cd and As content, a genetic algorithm (GA) was used to optimise the partial least squares regression (PLSR). The model's accuracy was evaluated and the best estimation model was obtained. The results showed that spectral pre-processing techniques can extract hidden information from the spectra. The first-order derivative of absorbance was more effective in extracting spectral sensitive information from rice leaf spectra. The GA-PLSR model selects only about 10% of the bands and has better accuracy in spectral modeling than the PLSR model. The spectral reflectance of rice leaves has the capacity to estimate Cd content in the soil (relative percent difference [RPD] = 2.09) and a good capacity to estimate As content in the soil (RPD = 2.97). Therefore, the content of the heavy metals Cd and As in the soil can be estimated indirectly from the spectral data of rice leaves. This study provides a reference for future remote sensing monitoring of soil heavy metal pollution in farmland that is quantitative, dynamic, and non-destructive over a large area.

摘要

中国工业化和城市化的快速发展导致土壤重金属污染加剧,这对生态系统安全和人类健康构成了严重威胁。光谱技术的进步为快速、无损监测土壤重金属含量提供了一种方法。为了探索水稻叶片光谱间接估算土壤重金属含量的潜力,我们在中国江苏省宜兴市徐舍镇采集了农田土壤样本并测量了水稻叶片光谱。在实验室中,测定了重金属镉和砷的含量。为了建立预处理光谱与土壤重金属镉和砷含量之间的估算模型,采用遗传算法(GA)对偏最小二乘回归(PLSR)进行优化。对模型的准确性进行了评估并获得了最佳估算模型。结果表明,光谱预处理技术可以从光谱中提取隐藏信息。吸光度的一阶导数在从水稻叶片光谱中提取光谱敏感信息方面更有效。GA-PLSR模型仅选择约10%的波段,并且在光谱建模方面比PLSR模型具有更高的准确性。水稻叶片的光谱反射率有能力估算土壤中的镉含量(相对百分差异[RPD]=2.09),并且有较好的能力估算土壤中的砷含量(RPD=2.97)。因此,可以从水稻叶片的光谱数据间接估算土壤中重金属镉和砷的含量。本研究为未来大面积农田土壤重金属污染的定量、动态、无损遥感监测提供了参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f6ac/10974069/4b219d8f4c81/plants-13-00831-g001.jpg

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