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基于投影寻踪和带高光谱图像的LightGBM的不同农田土壤重金属浓度估计

Heavy Metal Concentration Estimation for Different Farmland Soils Based on Projection Pursuit and LightGBM with Hyperspectral Images.

作者信息

Lin Nan, Shao Xiaofan, Wu Huizhi, Jiang Ranzhe, Wu Menghong

机构信息

College of Surveying and Exploration Engineering, Jilin Jianzhu University, Changchun 130118, China.

Jilin Province Natural Resources Remote Sensing Information Technology Innovation Laboratory, Changchun 130118, China.

出版信息

Sensors (Basel). 2024 May 20;24(10):3251. doi: 10.3390/s24103251.

Abstract

Heavy metal pollution in farmland soil threatens soil environmental quality. It is an important task to quickly grasp the status of heavy metal pollution in farmland soil in a region. Hyperspectral remote sensing technology has been widely used in soil heavy metal concentration monitoring. How to improve the accuracy and reliability of its estimation model is a hot topic. This study analyzed 440 soil samples from Sihe Town and the surrounding agricultural areas in Yushu City, Jilin Province. Considering the differences between different types of soils, a local regression model of heavy metal concentrations (As and Cu) was established based on projection pursuit (PP) and light gradient boosting machine (LightGBM) algorithms. Based on the estimations, a spatial distribution map of soil heavy metals in the region was drawn. The findings of this study showed that considering the differences between different soils to construct a local regression estimation model of soil heavy metal concentration improved the estimation accuracy. Specifically, the relative percent difference () of As and Cu element estimations in black soil increased the most, by 0.30 and 0.26, respectively. The regional spatial distribution map of heavy metal concentration derived from local regression showed high spatial variability. The number of characteristic bands screened by the PP method accounted for 10-13% of the total spectral bands, effectively reducing the model complexity. Compared with the traditional machine model, the LightGBM model showed better estimation ability, and the highest determination coefficients () of different soil validation sets reached 0.73 (As) and 0.75 (Cu), respectively. In this study, the constructed PP-LightGBM estimation model takes into account the differences in soil types, which effectively improves the accuracy and reliability of hyperspectral image estimation of soil heavy metal concentration and provides a reference for drawing large-scale spatial distributions of heavy metals from hyperspectral images and mastering soil environmental quality.

摘要

农田土壤中的重金属污染威胁着土壤环境质量。快速掌握一个地区农田土壤重金属污染状况是一项重要任务。高光谱遥感技术已广泛应用于土壤重金属浓度监测。如何提高其估算模型的准确性和可靠性是一个热门话题。本研究分析了吉林省榆树市泗河镇及周边农业地区的440个土壤样本。考虑到不同类型土壤之间的差异,基于投影寻踪(PP)和轻梯度提升机(LightGBM)算法建立了重金属浓度(砷和铜)的局部回归模型。基于这些估算结果,绘制了该地区土壤重金属的空间分布图。本研究结果表明,考虑不同土壤之间的差异来构建土壤重金属浓度的局部回归估算模型提高了估算精度。具体而言,黑土中砷和铜元素估算的相对百分差异()增加最多,分别增加了0.30和0.26。由局部回归得出的重金属浓度区域空间分布图显示出较高的空间变异性。通过PP方法筛选出的特征波段数量占总光谱波段的10 - 13%,有效降低了模型复杂度。与传统机器模型相比,LightGBM模型显示出更好的估算能力,不同土壤验证集的最高决定系数()分别达到0.73(砷)和0.75(铜)。在本研究中,构建的PP - LightGBM估算模型考虑了土壤类型的差异,有效提高了土壤重金属浓度高光谱图像估算的准确性和可靠性,为从高光谱图像绘制重金属的大规模空间分布和掌握土壤环境质量提供了参考。

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