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Calibration models database of near infrared spectroscopy to predict agricultural soil fertility properties

机译:校准模型近红外光谱数据库预测农业土壤肥力特性

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Presented paper describes spectroscopic dataset and calibration models database of near infrared spectroscopy (NIRS) used to predict agricultural soil fertility properties. Near infrared spectra data in form of absorbance spectrum were acquired in wavelength range from 1000 to 2500 nm for a total of 40 bulk soil samples amounted of 10 g per each bulk. Soil fertility properties, presented as soil nitrogen (N), phosphorus (P). potassium (K), soil pH, magnesium (Mg) and calcium (Ca), were measured by means of wet chemical analysis. Calibration models, used to predict those soil fertility parameters were developed using two different regression algorithms namely principal component regression (PCR) and partial least square regression (PLSR) respectively. Prediction performance can be evaluated and justified by looking their statistical indicators: correlation of determination (R2), correlation coefficient (r), root mean square error (RMSE) and residual predictive deviation (RPD). Spectra data can also be corrected in order to improve and enhance prediction performance. Obtained NIRS dataset and models database can be used as a rapid and simultaneous method to determine agricultural soil fertility properties.
机译:提出的论文介绍了用于预测农业土壤肥力特性的近红外光谱学(NIR)的光谱数据集和校准模型数据库。在波长范围内获得近红外光谱数据,在1000至2500nm的波长范围内,总共40个散装土壤样品为每块体10g。土壤肥力特性,作为土壤氮(N),磷(P)。通过湿化学分析测量钾(K),土壤pH,镁(Mg)和钙(CA)。用于预测那些土壤肥力参数的校准模型是使用两种不同的回归算法开发的,即分别是主要成分回归(PCR)和部分最小二乘回归(PLSR)开发。通过寻找统计指标可以评估和证明预测性能:确定确定(R2),相关系数(R),根均方误差(RMSE)和残差预测偏差(RPD)的相关性。也可以校正光谱数据以便提高和增强预测性能。获得的NIRS数据集和模型数据库可以用作确定农业土壤生育性的快速和同时的方法。

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