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首页> 外文期刊>Analytical and Bioanalytical Chemistry >Prediction of total and volatile acidity in red wines by Fourier-transform mid-infrared spectroscopy and iterative predictor weighting
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Prediction of total and volatile acidity in red wines by Fourier-transform mid-infrared spectroscopy and iterative predictor weighting

机译:傅里叶变换中红外光谱法和迭代预测器加权预测红酒中的总酸和挥发性酸度

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摘要

Fourier-transform mid-infrared (FT-MIR) spectroscopy, combined with partial least-squares (PLS) regression and IPW as feature selection method, was used to develop reduced-spectrum calibration models based on a few IR bands to provide near-real-time predictions of two key parameters for the characterization of finished red wines, which are essential from a quality assurance standpoint: total and volatile acidity. Separate PLS calibration models, correlating IR data (only considering those regions showing a high signal to noise ratio) with each response studied, were developed. Wavenumber selection was also performed applying IPW-PLS to take into account only significant predictors, in an attempt to improve the quality of the final models constructed. Using both PLS and IPW-PLS regression, prediction of the two responses modelled was performed with very high reliability, with RMSECV and RMSEP values on the order of 1% (comparable in terms of accuracy to the results provided by the respective reference analysis methods). An important advantage derived from the application of the IPW-PLS method had to do with the low number of original variables needed for modelling both total acidity (22 significant wavenumbers) and volatile acidity (only 11 selected predictor variables), in such a way that variable selection contributed to enhance the stability and parsimony properties of the final calibration models. The high quality of the calibration models proposed encourages the feasibility of implementing them as a fast and reliable tool in routine analysis for the determination of critical parameters for wine quality.
机译:傅里叶变换中红外(FT-MIR)光谱结合偏最小二乘(PLS)回归和IPW作为特征选择方法,被用来开发基于几个IR波段的减光谱校准模型,以提供近乎真实的红酒成品表征的两个关键参数的实时预测,从质量保证的角度来看,这是至关重要的:总酸度和挥发性酸度。开发了单独的PLS校准模型,将IR数据(仅考虑显示高信噪比的区域)与研究的每个响应相关联。还使用IPW-PLS进行波数选择,以仅考虑重要的预测变量,以提高最终构建模型的质量。使用PLS和IPW-PLS回归,以非常高的可靠性对建模的两个响应进行预测,RMSECV和RMSEP值约为1%(在准确性方面可与相应参考分析方法提供的结果相比) 。从IPW-PLS方法的应用中获得的一个重要优势与建模总酸度(22个重要波数)和挥发性酸度(仅选择11个预测变量)所需的原始变量数量少有关。变量选择有助于增强最终校准模型的稳定性和简约性。提出的高质量校准模型鼓励了将其作为常规分析中快速可靠的工具实施的可行性,以确定葡萄酒质量的关键参数。

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