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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Simultaneous prediction of soil properties from VNIR-SWIR spectra using a localized multi-channel 1-D convolutional neural network
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Simultaneous prediction of soil properties from VNIR-SWIR spectra using a localized multi-channel 1-D convolutional neural network

机译:利用局部多通道1-D卷积神经网络同时预测VNIR-SWIR光谱的土壤性质

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摘要

The use of visible near-infrared and shortwave-infrared (VNIR-SWIR) diffuse reflectance spectroscopy for the estimation of soil properties is increasingly maturing with large-scale soil spectral libraries (SSLs) of laboratory spectra developed across the globe. Such an SSL is the publicly available LUCAS topsoil database with approximately 20,000 soil samples encompassing 23 countries of the European Union. A wide variety of machine learning tools have been applied to the LUCAS SSL to predict some of the soil samples' physicochemical properties with different degrees of accuracy. In this paper, we developed and examined the use of a novel one-dimensional convolutional neural network (CNN) to simultaneously predict ten physicochemical properties of the LUCAS SSL. Leveraging on the use of multiple-input channels it uses as model inputs the absorbance spectra along with some pre-processed spectra developed using standard techniques. Moreover, it exploits the use of local spectral neighborhoods to perform an adaptive error-correction mechanism. This novel localized multichannel 1-D CNN was applied to all the available physicochemical properties of the LUCAS SSL and was statistically compared with the current state-of-the-art where it was shown to statistically outperform its counterparts, as well as with other CNNs where it exhibited the best performance. In particular, for the mineral soil samples, the RMSE for the Clay content was 4.80% (R-2 0.86), for soil organic carbon the RMSE was 10.96 g kg(-1)(R-2 0.86), while for total nitrogen the RMSE was 0.66 g kg(-1) (R-2 0.83).
机译:使用可见的近红外线和短波红外(VNIR-SWIR)弥漫反射光谱分辨率谱估计的差异越来越多地与全球开发的实验室光谱的大规模土壤谱文库(SSL)达到。这种SSL是公开可用的Lucas Topsoil数据库,其中约有20,000个土壤样品包含欧盟23个国家。多种机器学习工具已应用于Lucas SSL以预测一些土壤样本的物理化学性质,具有不同程度的精度。在本文中,我们开发并检查了一种新型一维卷积神经网络(CNN)的使用,同时预测Lucas SSL的10个物理化学性质。利用多输入通道的使用,它用作型号的吸光度光谱以及使用标准技术开发的一些预处理光谱。此外,它利用局部光谱邻域的使用来执行自适应误差校正机制。该新颖的局部多通道1-D CNN应用于LUCAS SSL的所有可用物理化学性质,并且与当前最先进的现有技术进行了统计学,其中显示出统计上表现出其对应物以及其他CNNS它在哪里表现出最佳性能。特别是,对于矿物土壤样品,粘土含量的RMSE为4.80%(R-2 0.86),用于土壤有机碳,RMSE为10.96g kg(-1)(R-2 0.86),同时进行总氮RMSE为0.66g kg(-1)(R-2 0.83)。

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