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Spectral Response of Soil Organic Matter by Principal Component Analysis

机译:基于主成分分析的土壤有机质光谱响应

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Soil organic matter (SOM) can be used as an indicator to guide fertilization and chemical input management of farmland. It increases soil porosity and water holding capacity. Monitoring the spatial distribution of SOM timely and accurately is very important for fertilization management in precision agriculture. Imaging hyperspectrometer carried on the unmanned aerial vehicle (UAV) has been developed rapidly in recent years. The study aimed to test the practicability of monitoring SOM by imaging hyperspectrometer in a small scale. The 132 soil samples in the study were collected from three regions. The quantitative relationships between SOM and spectral reflectivity with different pixel sizes were analyzed by the transformation method of principal component analysis (PCA). After screening sensitive bands and spectral parameters, partial least square method (PLS) was used to develop the inversion models of SOM to evaluate the optimal scale of imaging hyperspectrometer application in monitoring SOM. Two-third of SOM samples were used to develop the PCA-PLS models. Results showed that the first two principal components of hyperspectral image could reach 99.80% relative information, which were chosen as spectral parameters of SOM. The correlations between SOM and PCA1 or PCA2 were analyzed with five resampling sizes, all of which reached above 0.4. One-third of SOM samples were used to evaluate the accuracy of the inversion with determination coefficient (R2) and root mean square error (RMSE). Results showed that all PCA-PLS models of predicting SOM could get good accuracy, all R2 above 0.3. With the resampling size increasing, the accuracies of PCA-PLS models increased first and then decreased. The model with 3*3 resampling size reached highest accuracy, of which the R2 was 0.3411, while RMSE was 3.071 g/kg. It indicated that the PCA method could make the best of hyperspectrum information to monitor SOM effectively.
机译:土壤有机质(SOM)可用作指导施肥和农田化学物质管理的指标。它增加了土壤的孔隙度和保水能力。及时准确地监测SOM的空间分布对于精准农业施肥管理非常重要。近年来,搭载在​​无人机上的成像高光谱仪发展迅速。该研究旨在检验通过成像高光谱仪小规模监测SOM的实用性。研究中的132个土壤样品是从三个地区收集的。采用主成分分析法(PCA),分析了不同像素尺寸下SOM与光谱反射率之间的定量关系。在筛选了敏感谱带和光谱参数后,采用偏最小二乘法(PLS)建立了SOM反演模型,以评价成像高光谱仪在监测SOM中的最佳规模。 SOM样本的三分之二用于开发PCA-PLS模型。结果表明,高光谱图像的前两个主成分可以达到99.80%的相对信息,被选作SOM的光谱参数。用五个重采样大小分析了SOM与PCA1或PCA2之间的相关性,所有大小均达到0.4以上。使用三分之一的SOM样本通过确定系数(R2)和均方根误差(RMSE)来评估反演的准确性。结果表明,所有预测SOM的PCA-PLS模型都能获得良好的准确性,所有R2均高于0.3。随着重采样大小的增加,PCA-PLS模型的精度先增加然后减小。具有3 * 3重采样大小的模型达到了最高精度,其中R2为0.3411,而RMSE为3.071 g / kg。结果表明,PCA方法可以充分利用高光谱信息对SOM进行有效监测。

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