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Near Infrared Spectroscopy technology for prediction of chemical composition of natural fresh pastures

机译:近红外光谱技术,用于预测自然新鲜牧场的化学成分

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This study evaluates the potential of Fourier-Transform Near Infrared Spectroscopy (FT-NIRS) to estimate the chemical composition of fresh natural pastures of Tuscany without previous drying and grinding. Chemical composition of herbage samples is determined by applying usual chemistry. FT-NIRS calibration and cross-validation were developed applying spectra pre-treatment and two statistical models: partial least square regression and principal component regression. The results are evaluated in terms of coefficients of determination (R 2 ), root mean square error (RMSE) and residual prediction deviation (RPD). Calibration results, using partial least square models, obtained a R 2 in calibration greater than 0.95 for dry matter and crude protein, intermediate values (0.75) for the fibre fraction and lower results for ash and crude fat (0.75). The chemometric analysis shows lower results using principal component regression than partial least square models, although dry matter and acid detergent fibre obtained relatively high R 2 in calibration (0.876 and 0.863, respectively). Cross-validation achieved both lower R 2 and higher errors than calibration. Despite the wide variability of the data set, the results suggest that coupling FT-NIRS with partial least squares analysis allows us to estimate some chemical parameters of natural pastures, while the use of principal component regression models needs further evaluation.
机译:本研究评估了傅立叶变换近红外光谱(FT-NIRS)的潜力,以估算托斯卡纳的新鲜自然牧场的化学成分,而无需先前的干燥和研磨。通过施加通常的化学来确定牧草样品的化学成分。开发了FT-NIRS校准和交叉验证,应用光谱预处理和两个统计模型:部分最小二乘回归和主要成分回归。结果在确定系数(R 2),根均方误差(RMSE)和残差预测偏差(RPD)方面进行评估。使用部分最小二乘型号的校准结果,在校准中获得R 2,对于干物质和粗蛋白,中间值(> 0.75),用于纤维级分,灰分和粗脂肪的较低结果(<0.75)。化学计量分析显示使用主成分回归的较低结果,而不是部分最小二乘型号,尽管干物质和酸性洗涤剂纤维在校准中获得相对高的R 2(分别为0.876和0.863)。交叉验证实现比校准更低的R 2和更高的误差。尽管数据集的可变异性,结果表明,具有部分最小二乘分析的FT-NIR允许我们估计一些自然牧场的化学参数,而主要成分回归模型的使用需要进一步评估。

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