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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Spectral reflectance based indices for soil organic carbon quantification.
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Spectral reflectance based indices for soil organic carbon quantification.

机译:基于光谱反射率的土壤有机碳定量指标。

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摘要

We investigated 40 samples from nine different soil types, originating from several climatic zones and a large variety in SOC content (0.06-45.1%). Spectral measurements for all soil samples were performed in a controlled laboratory environment. We tested the performance of several spectral indices which have been developed to detect biochemical constituents (e.g., cellulose, lignin) for their ability to retrieve SOC, and compared it to PLS. Good relations were found for indices based on the visible part of the spectrum (R2=0.80) and for the absorption features related to cellulose (around 2100 nm) (R2=0.81). The best index based relations were compared to the results for PLS (R2=0.87). Cross validation was used to evaluate the predictive capacity of the spectral indices. The results demonstrate that it is feasible to use spectral indices derived from laboratory measurements to predict SOC in various soil types. However, a large variance in SOC is required for the calibration of the prediction model, since extrapolation beyond the SOC range in the training dataset results in large errors. PLS proves to be much less sensitive towards extrapolation of the model beyond the mineralogy and SOC levels used during the calibration.
机译:我们调查了来自9个不同土壤类型的40个样本,这些样本来自几个气候带,SOC含量差异很大(0.06-45.1%)。所有土壤样品的光谱测量均在受控的实验室环境中进行。我们测试了已开发出的几种光谱指数的性能,以检测生化成分(例如纤维素,木质素)回收SOC的能力,并将其与PLS进行了比较。发现基于光谱的可见部分的指数(R2 = 0.80)和与纤维素有关的吸收特征(约2100nm)(R2 = 0.81)具有良好的关系。将基于最佳索引的关系与PLS的结果进行比较(R2 = 0.87)。交叉验证用于评估光谱指数的预测能力。结果表明,使用从实验室测量中得出的光谱指数来预测各种土壤类型的SOC是可行的。但是,预测模型的校准需要SOC的较大差异,因为超出训练数据集中SOC范围的外推会导致较大的误差。事实证明,PLS对模型外推的敏感性远低于校准期间使用的矿物学和SOC含量。

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