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Effects of Subsetting by Carbon Content, Soil Order, and Spectral Classification on Prediction of Soil Total Carbon with Diffuse Reflectance Spectroscopy

机译:碳含量,土壤阶数和光谱分类对子集的影响通过漫反射光谱法预测土壤总碳

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Subsetting of samples is a promising avenue of research for the continued improvement of prediction models for soil properties with diffuse reflectance spectroscopy. This study examined the effects of subsetting by soil total carbon (Ct) content, soil order, and spectral classification withk-means cluster analysis on visibleear-infrared and mid-infrared partial least squares models forCtprediction. Our sample set was composed of various Hawaiian soils from primarily agricultural lands withCtcontents from <1% to 56%. Slight improvements in the coefficient of determination (R2) and other standard model quality parameters were observed in the models for the subset of the high activity clay soil orders compared to the models of the full sample set. The other subset models explored did not exhibit improvement across all parameters. Models created from subsets consisting of only lowCtsamples (e.g.,Ct< 10%) showed improvement in the root mean squared error (RMSE) and percent error of prediction for lowCtsoil samples. These results provide a basis for future study of practical subsetting strategies for soilCtprediction.
机译:样品的亚组化是利用漫反射光谱法不断改进土壤性质的预测模型的有前途的研究途径。这项研究检查了土壤总碳(Ct)含量,土壤有序性和光谱分类的子集对kt均值聚类分析对可见光/近红外和中红外偏最小二乘模型的影响。我们的样本集由主要来自农业土地的各种夏威夷土壤组成,其Ct含量<1%至56%。与完整样本集的模型相比,在高活性粘土顺序的子集中的模型中观察到确定系数(R2)和其他标准模型质量参数的改善。探索的其他子集模型并未在所有参数上均表现出改善。由仅由LowCtoil样本组成的子集(例如,Ct <10%)创建的模型显示,对于lowCtsoil样本,其均方根误差(RMSE)和预测误差百分比得到了改善。这些结果为将来进行土壤预测的实际分组策略提供了基础。

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