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Waveband selection for NIR spectroscopy analysis of soil organic matter based on SG smoothing and MWPLS methods

机译:基于SG平滑和MWPLS方法的土壤有机质近红外光谱分析波段选择。

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摘要

Savitzky-Golay (SG) smoothing and moving window partial least square (MWPLS) methods were applied to the model optimization and the waveband selection for near-infrared (NIR) spectroscopy analysis of soil organic matter. The optimal single wavelength prediction bias (OSWPB) was used to evaluate the similarity of calibration set and prediction set, and a new division method for calibration set and prediction set was proposed. SG smoothing modes were expanded to 540 kinds. The specific computer algorithm platforms for optimization of SG smoothing mode combined with PLS factor and for MWPLS method with changeable parameters were built up. The optimal waveband for soil organic matter was 1926-2032 nm, the optimal smoothing mode was the 2nd order derivative, 6th degree polynomial, 45 smoothing points, the PLS factor, RMSEP and R_(P) were 8, 0.260 (percent) and 0.877 respectively. The prediction effect was obviously better than that in the whole spectral collecting region. To get stable results, all the optimization processes were based on the average prediction effect on 50 different divisions of calibration set and prediction set.
机译:将Savitzky-Golay(SG)平滑和移动窗口偏最小二乘(MWPLS)方法应用于土壤有机质的近红外(NIR)光谱分析的模型优化和波段选择。利用最优的单波长预测偏差(OSWPB)评估校准集与预测集的相似度,提出了一种新的校准集与预测集划分方法。 SG平滑模式扩展到540种。建立了优化的平滑算法,结合PLS因子和参数可变的MWPLS方法的专用计算机算法平台。土壤有机质的最佳波段为1926-2032 nm,最佳平滑模式为二阶导数,六次多项式,45个平滑点,PLS因子,RMSEP和R_(P)分别为8、0.260(百分比)和0.877分别。预测效果明显好于整个光谱采集区域。为了获得稳定的结果,所有优化过程均基于对校准集和预测集的50个不同部分的平均预测效果。

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