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首页> 外文期刊>Revista Brasileira de Ciência do Solo >Comparing the artificial neural network with parcial least squares for prediction of soil organic carbon and pH at different moisture content levels using visible and near-infrared spectroscopy
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Comparing the artificial neural network with parcial least squares for prediction of soil organic carbon and pH at different moisture content levels using visible and near-infrared spectroscopy

机译:人工神经网络与偏最小二乘法的比较,使用可见和近红外光谱法预测不同水分含量下的土壤有机碳和pH

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Visible and near infrared (vis-NIR) spectroscopy is widely used to detect soil properties. The objective of this study is to evaluate the combined effect of moisture content (MC) and the modeling algorithm on prediction of soil organic carbon (SOC) and pH. Partial least squares (PLS) and the Artificial neural network (ANN) for modeling of SOC and pH at different MC levels were compared in terms of efficiency in prediction of regression. A total of 270 soil samples were used. Before spectral measurement, dry soil samples were weighed to determine the amount of water to be added by weight to achieve the specified gravimetric MC levels of 5, 10, 15, 20, and 25 %. A fiber-optic vis-NIR spectrophotometer (350-2500 nm) was used to measure spectra of soil samples in the diffuse reflectance mode. Spectra preprocessing and PLS regression were carried using Unscrambler? software. Statistica? software was used for ANN modeling. The best prediction result for SOC was obtained using the ANN (RMSEP = 0.82 % and RPD = 4.23) for soil samples with 25 % MC. The best prediction results for pH were obtained with PLS for dry soil samples (RMSEP = 0.65 % and RPD = 1.68) and soil samples with 10 % MC (RMSEP = 0.61 % and RPD = 1.71). Whereas the ANN showed better performance for SOC prediction at all MC levels, PLS showed better predictive accuracy of pH at all MC levels except for 25 % MC. Therefore, based on the data set used in the current study, the ANN is recommended for the analyses of SOC at all MC levels, whereas PLS is recommended for the analysis of pH at MC levels below 20 %.
机译:可见和近红外(vis-NIR)光谱被广泛用于检测土壤特性。这项研究的目的是评估含水量(MC)和建模算法对预测土壤有机碳(SOC)和pH值的综合影响。在预测回归的效率方面,比较了偏最小二乘(PLS)和用于在不同MC水平下对SOC和pH建模的人工神经网络(ANN)。总共使用了270个土壤样品。在进行光谱测量之前,对干燥的土壤样品进行称重,以确定要添加的水量,以达到指定的重量MC浓度为5、10、15、20和25%。光纤可见-NIR分光光度计(350-2500 nm)用于在漫反射模式下测量土壤样品的光谱。使用Unscrambler进行光谱预处理和PLS回归。软件。统计资料?该软件用于ANN建模。对于含25%MC的土壤样品,使用ANN(RMSEP = 0.82%,RPD = 4.23)可获得SOC的最佳预测结果。对于干土样品(RMSEP = 0.65%和RPD = 1.68)和含10%MC的土壤样品(RMSEP = 0.61%和RPD = 1.71),PLS可获得最佳的pH预测结果。 ANN在所有MC水平下均显示出更好的SOC预测性能,而PLS在所有MC水平下均显示出更好的pH预测精度,除了25%MC。因此,根据当前研究中使用的数据集,建议将ANN用于所有MC水平下的SOC分析,而建议使用PLS分析低于20%的MC下的pH。

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