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首页> 外文期刊>Applied Sciences >An Improved Gradient Boosting Regression Tree Estimation Model for Soil Heavy Metal (Arsenic) Pollution Monitoring Using Hyperspectral Remote Sensing
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An Improved Gradient Boosting Regression Tree Estimation Model for Soil Heavy Metal (Arsenic) Pollution Monitoring Using Hyperspectral Remote Sensing

机译:利用高光谱遥感监测土壤重金属(砷)污染的改进梯度提升回归树估计模型

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Hyperspectral remote sensing can be used to effectively identify contaminated elements in soil. However, in the field of monitoring soil heavy metal pollution, hyperspectral remote sensing has the characteristics of high dimensionality and high redundancy, which seriously affect the accuracy and stability of hyperspectral inversion models. To resolve the problem, a gradient boosting regression tree (GBRT) hyperspectral inversion algorithm for heavy metal (Arsenic (As)) content in soils based on Spearman’s rank correlation analysis (SCA) coupled with competitive adaptive reweighted sampling (CARS) is proposed in this paper. Firstly, the CARS algorithm is used to roughly select the original spectral data. Second derivative (SD), Gaussian filtering (GF), and min-max normalization (MMN) pretreatments are then used to improve the correlation between the spectra and As in the characteristic band enhancement stage. Finally, the low-correlation bands are removed using the SCA method, and a subset with absolute correlation values greater than 0.6 is retained as the optimal band subset after each pretreatment. For the modeling, the five most representative characteristic bands were selected in the Honghu area of China, and the nine most representative characteristic bands were selected in the Daye area of China. In order to verify the generalization ability of the proposed algorithm, 92 soil samples from the Honghu and Daye areas were selected as the research objects. With the use of support vector machine regression (SVMR), linear regression (LR), and random forest (RF) regression methods as comparative methods, all the models obtained a good prediction accuracy. However, among the different combinations, CARS-SCA-GBRT obtained the highest precision, which indicates that the proposed algorithm can select fewer characteristic bands to achieve a better inversion effect, and can thus provide accurate data support for the treatment and recovery of heavy metal pollution in soils.
机译:高光谱遥感可用于有效识别土壤中的污染元素。但是,在土壤重金属污染监测领域,高光谱遥感具有高维,高冗余的特点,严重影响了高光谱反演模型的准确性和稳定性。为了解决该问题,提出了基于Spearman秩相关分析(SCA)结合竞争自适应加权加权采样(CARS)的土壤中重金属(As)含量的梯度增强回归树(GBRT)高光谱反演算法。纸。首先,使用CARS算法粗略选择原始光谱数据。然后使用二阶导数(SD),高斯滤波(GF)和最小-最大归一化(MMN)预处理来改善特征谱带增强阶段中光谱与As之间的相关性。最后,使用SCA方法去除低相关频带,并在每次预处理后保留绝对相关值大于0.6的子集作为最佳频带子集。对于建模,在中国洪湖地区选择了五个最具代表性的特征带,在中国大冶地区选择了九个最具代表性的特征带。为了验证该算法的泛化能力,选取了洪湖和大冶地区的92个土壤样本作为研究对象。通过使用支持向量机回归(SVMR),线性回归(LR)和随机森林(RF)回归方法作为比较方法,所有模型均获得了良好的预测准确性。然而,在不同的组合中,CARS-SCA-GBRT获得了最高的精度,这表明所提出的算法可以选择较少的特征谱带以获得更好的反演效果,从而可以为重金属的处理和回收提供准确的数据支持。土壤污染。

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