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Non-biased prediction of soil organic carbon and total nitrogen with vis-NIR spectroscopy, as affected by soil moisture content and texture

机译:可见-近红外光谱法无偏见地预测土壤有机碳和总氮,受土壤水分和质地的影响

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摘要

This study was undertaken to evaluate the effects of moisture content (MC) and texture on the prediction of soil organic carbon (OC) and total nitrogen (TN) with visible and near infrared (vis-NIR) spectroscopy under laboratory and on-line measurement conditions. An AgroSpec spectrophotometer was used to develop calibration models of OC and TN using laboratory scanned spectra of fresh and processed soil samples collected from five fields on Silsoe Farm, UK. A previously developed on-line vis-NIR sensor was used to scan these fields. Based on residual prediction deviation (RPD), which is the standard deviation of the prediction set (S.D.) divided by the root mean square error of prediction (RMSEP), the validation of partial least squares (PLS) models of OC and TN prediction using on-line spectra was evaluated as very good (RPD = 2.01-2.24) and good to excellent (RPD = 1.86-2.58), respectively. A better accuracy was obtained with fresh soil samples for OC (RPD = 2.11-2.34) and TN (RPD = 1.91-2.64), whereas the best accuracy for OC (RPD = 2.66-3.39) and TN (RPD = 2.85-3.45) was obtained for processed soil samples. Results also showed that MC is the main factor that decreases measurement accuracy of both on-line and fresh samples, whilst the accuracy was greatest for soils of high clay content. It is recommended that measurements of TN and OC under on-line and laboratory fresh soil conditions are made when soils are dry, particularly in fields with high clay content.
机译:进行了这项研究,以评估含水量(MC)和质地对实验室和在线测量下可见和近红外(vis-NIR)光谱预测土壤有机碳(OC)和总氮(TN)的影响条件。使用AgroSpec分光光度计,利用从英国Silsoe Farm的五个田地采集的新鲜和加工土壤样品的实验室扫描光谱,开发了OC和TN的校准模型。使用先前开发的在线vis-NIR传感器扫描这些场。基于残余预测偏差(RPD)(即预测集(SD)的标准偏差除以预测的均方根误差(RMSEP)),使用以下方法验证OC和TN预测的偏最小二乘(PLS)模型:在线光谱分别被评价为非常好(RPD = 2.01-2.24)和良好至极好(RPD = 1.86-2.58)。新鲜土壤样品的OC(RPD = 2.11-2.34)和TN(RPD = 1.91-2.64)的准确性更高,而OC(RPD = 2.66-3.39)和TN(RPD = 2.85-3.45)的最佳准确性获得用于处理的土壤样品。结果还表明,MC是降低在线和新鲜样品测量精度的主要因素,而对于高粘土含量的土壤,其精度最高。建议在土壤干燥时,特别是在粘土含量高的田地中,在在线和实验室新鲜土壤条件下进行TN和OC的测量。

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