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Using variable selection and wavelets to exploit the full potential of visible-near infrared spectra for predicting soil properties

机译:使用变量选择和小波来挖掘可见-近红外光谱的全部潜力来预测土壤性质

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In soil spectroscopy a series of strategies exists to optimise multivariate calibrations. We explore this issue with a set of topsoil samples for which we estimated soil organic carbon (OC) and total nitrogen (N) from visible-near infrared (vis-NIR) spectra (350-2500 nm). In total, 172 samples were collected to cover the soil heterogeneity in the study area located in western Rhineland-Palatinate, Germany. There, soils with varying properties developed from very diverse parent materials, e.g., ranging from very acidic sandstone to dolomitic marl. We defined four sample sets each of a different size and heterogeneity. Each set was subdivided into a calibration and a validation set. The first strategy that we tested to improve prediction accuracies was spectral variable selection using competitive adaptive reweighted sampling (CARS) and iteratively retaining informative variables (IRIV), both in combination with partial least squares regression (PLSR). In addition, continuous wavelet transformation (CWT) with the Mexican Hat wavelet was applied to decompose the measured spectra into multiple scale components (dyadic scales 2(1)-2(5)) and thus to represent the high and low frequency features contained in the spectra. CARS was then applied to select wavelet coefficients from the different scales and to introduce them in the PLSR approach (CWT-CARS-PLSR). Regarding prediction power, CWT-CARS-PLSR outperformed the other approaches. For the smallest data set with 30 validation samples, prediction accuracy for OC increased from approximately quantitative with full spectrum-PLSR (r(2) = 0.81, residual prediction deviation (RPD) = 2.27) to excellent when using wavelet decomposition and CARS-PLSR (r(2) = 0.93, RPD = 3.60). For N, predictions improved from unsuccessful (r(2) = 0.63, RPD = 1.36) to approximately quantitative (r(2) = 0.84, RPD = 2.03). In case of OC, predictions were worst for the largest dataset with 57 validation samples: CWT-CARS-PLSR achieved approximately quantitative predictions (r(2) = 0.82, RPD = 2.31), whereas full spectrum-PLSR provided estimates that allowed only separating between high and low values (r(2) = 0.72, RPD = 1.88). Accuracy of N estimation for this dataset using CWT-CARS-PLSR was also approximately quantitative. Concerning the tested spectral variable selection techniques, both methods provided similar results in the prediction. The application of IRIV was limited due to long processing times.
机译:在土壤光谱学中,存在一系列优化多变量校准的策略。我们用一组表土样品探讨了这个问题,我们从可见近红外光谱(vis-NIR)(350-2500 nm)估算了土壤有机碳(OC)和总氮(N)。在位于德国莱茵兰-普法尔茨州西部的研究区,总共收集了172个样本以覆盖土壤异质性。那里,性质各不相同的土壤是由多种多样的母体发育而成的,例如从极酸性的砂岩到白云质的泥灰岩。我们定义了四个样本集,每个样本集的大小和异质性都不同。每组细分为校准和验证组。我们测试以提高预测准确度的第一个策略是使用竞争性自适应加权抽样(CARS)和迭代保留信息变量(IRIV)以及结合最小二乘最小二乘回归(PLSR)进行频谱变量选择。此外,采用墨西哥帽小波的连续小波变换(CWT)将测得的光谱分解为多个尺度分量(二阶尺度2(1)-2(5)),从而代表了包含在其中的高频和低频特征。光谱。然后将CARS应用于从不同尺度选择小波系数,并将其引入PLSR方法(CWT-CARS-PLSR)。关于预测能力,CWT-CARS-PLSR优于其他方法。对于包含30个验证样本的最小数据集,OC的预测精度从使用全谱PLSR的近似定量(r(2)= 0.81,残余预测偏差(RPD)= 2.27)提高到使用小波分解和CARS-PLSR时的出色(r(2)= 0.93,RPD = 3.60)。对于N,预测从不成功(r(2)= 0.63,RPD = 1.36)改善到近似定量(r(2)= 0.84,RPD = 2.03)。对于OC,对于具有57个验证样本的最大数据集,预测最差:CWT-CARS-PLSR实现了近似定量的预测(r(2)= 0.82,RPD = 2.31),而全谱PLSR提供的估计仅允许分离在高和低值之间(r(2)= 0.72,RPD = 1.88)。使用CWT-CARS-PLSR对该数据集进行N估计的准确性也是近似定量的。关于测试的光谱变量选择技术,两种方法在预测中提供了相似的结果。由于处理时间长,IRIV的应用受到限制。

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