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首页> 外文期刊>Plant Production Science >Exploring relevant wavelength regions for estimating soil total carbon contents of rice fields in Madagascar from Vis-NIR spectra with sequential application of backward interval PLS
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Exploring relevant wavelength regions for estimating soil total carbon contents of rice fields in Madagascar from Vis-NIR spectra with sequential application of backward interval PLS

机译:探讨近脉络谱估算马达加斯加稻田土壤总碳含量的相关波长区

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Laboratory visible and near-infrared (Vis-NIR) spectroscopy with partial least squares (PLS) regression can be used to determine the soil carbon (C) content, and the waveband selection procedures can refine the predictive ability. However, individually selected wavebands are not always the same depending on the location, scale, and approach. To simplify the variable selection issue, some methods for selecting wavelength regions instead of individual wavebands have been proposed. In this study, we explore relevant wavelength regions for predicting the total carbon (TC) content of lowland and upland soils in Madagascar from Vis-NIR spectroscopy using a dynamic version of backward interval PLS (biPLS) regression. The predictive ability of dynamic biPLS was compared with that of standard full-spectrum PLS (FS-PLS) using the cross-validated coefficient of determination (R ~(2)), root mean squared error (RMSE), and ratio of performance to interquartile distance (RPIQ). The biPLS models using reflectance (R ~(2)?=?0.877, RMSE?=?0.690) and first derivative reflectance (FDR) (R ~(2)?=?0.940, RMSE?=?0.494) data sets showed better predictive accuracy than the FS-PLS models using reflectance (R ~(2)?=?0.826, RMSE?=?0.809) and FDR (R ~(2)?=?0.933, RMSE?=?0.518) data sets, the spectral efficiency was improved. By using biPLS to predict soil TC, the model was simplified by using only four selected wavelength regions in the reflectance (400–490, 1402–1440, 1846–1980 and 2151–2283?nm) and FDR (652–687, 1322–1443, 1856–1985, and 2290–2400?nm) data sets, which yielded reliable (RPIQ > 2.5) predictions.
机译:实验室可见和近红外(Vis-NIR)具有部分最小二乘(PLS)回归的光谱可用于确定土壤碳(C)含量,波带选择程序可以优化预测能力。但是,根据位置,比例和方法,单独选择的波段并不总是相同的。为了简化变量选择问题,已经提出了用于选择波长区域而不是单独波带的一些方法。在这项研究中,我们探讨了使用Vis-NIR光谱从Vis-Nir光谱使用的后向间隔(BIPLS)回归来预测Madagascar的Hearland和Upland土壤总碳(TC)含量的相关波长区域。使用交叉验证系数( R〜(2)),根均方误差(RMSE)和比率将动态BIPLS的预测能力与标准全谱PLS(FS-PL)进行比较性能与距离距离(RPIQ)。使用反射率的BIPLS模型( r〜(2)?= 0.877,RMSE?=?0.690)和第一衍生物反射率(FDR)( R〜(2)?=?0.940,RMSE?=? 0.494)数据集显示比使用反射率的FS-PLS模型更好的预测精度( r〜(2)?= 0.826,RMSE?=?0.809)和FDR( R〜(2)?=? 0.933,RMSE?=?0.518)数据集,谱效率得到改善。通过使用BIPLS预测土壤TC,通过在反射率(400-490,1402-1440,1846-1980和2151-2283Ω)和FDR(652-687,1322 - 1322 - 1322)中仅使用四个选定的波长区域来简化模型。 1443,1856-1985和2290-2400?NM)数据集,其产生可靠(RPIQ> 2.5)预测。

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