首页> 外文期刊>Spectrochimica acta, Part A. Molecular and biomolecular spectroscopy >Improvement of near infrared spectroscopic (NIRS) analysis of caffeine in roasted Arabica coffee by variable selection method of stability competitive adaptive reweighted sampling (SCARS)
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Improvement of near infrared spectroscopic (NIRS) analysis of caffeine in roasted Arabica coffee by variable selection method of stability competitive adaptive reweighted sampling (SCARS)

机译:稳定性竞争自适应加权采样(SCARS)的变量选择方法改进对阿拉比卡咖啡烘焙咖啡因的近红外光谱(NIRS)分析

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摘要

Coffee is the most heavily consumed beverage in the world after water, for which quality is a key consideration in commercial trade. Therefore, caffeine content which has a significant effect on the final quality of the coffee products requires to be determined fast and reliably by new analytical techniques. The main purpose of this work was to establish a powerful and practical analytical method based on near infrared spectroscopy (NIRS) and chemometrics for quantitative determination of caffeine content in roasted Arabica coffees. Ground coffee samples within a wide range of roasted levels were analyzed by NIR, meanwhile, in which the caffeine contents were quantitative determined by the most commonly used HPLC-UV method as the reference values. Then calibration models based on chemometric analyses of the NIR spectral data and reference concentrations of coffee samples were developed. Partial least squares (PLS) regression was used to construct the models. Furthermore, diverse spectra pretreatment and variable selection techniques were applied in order to obtain robust and reliable reduced-spectrum regression models. Comparing the respective quality of the different models constructed, the application of second derivative pretreatment and stability competitive adaptive reweighted sampling (SCARS) variable selection provided a notably improved regression model, with root mean square error of cross validation (RMSECV) of 0.375 mg/g and correlation coefficient (R) of 0.918 at PLS factor of 7. An independent test set was used to assess the model, with the root mean square error of prediction (RMSEP) of 0.378 mg/g, mean relative error of 1.976% and mean relative standard deviation (RSD) of 1.707%. Thus, the results provided by the high-quality calibration model revealed the feasibility of NIR spectroscopy for at-line application to predict the caffeine content of unknown roasted coffee samples, thanks to the short analysis time of a few seconds and non-destructive advantages of NIRS.
机译:咖啡是仅次于水的世界上消费量最大的饮料,其质量是商业交易中的关键考虑因素。因此,需要通过新的分析技术快速而可靠地确定对咖啡产品最终质量有重大影响的咖啡因含量。这项工作的主要目的是建立一种基于近红外光谱(NIRS)和化学计量学的功能强大且实用的分析方法,用于定量测定烘焙阿拉比卡咖啡中的咖啡因含量。同时,通过近红外光谱分析了各种焙炒水平下的磨碎咖啡样品,其中咖啡因含量通过最常用的HPLC-UV方法定量确定为参考值。然后,基于近红外光谱数据和咖啡样品参考浓度的化学计量分析建立了校准模型。使用偏最小二乘(PLS)回归构建模型。此外,为了获得健壮和可靠的减光谱回归模型,应用了多种光谱预处理和变量选择技术。比较构建的不同模型的各自质量,二阶导数预处理和稳定性竞争自适应加权加权采样(SCARS)变量选择的应用提供了显着改进的回归模型,交叉验证的均方根误差(RMSECV)为0.375 mg / g在PLS因子为7时,相关系数(R)为0.918。使用独立测试集评估模型,预测的均方根误差(RMSEP)为0.378 mg / g,平均相对误差为1.976%,均值相对标准偏差(RSD)为1.707%。因此,高质量的校准模型提供的结果显示了近红外光谱技术在在线应用中预测未知的烘焙咖啡样品中咖啡因含量的可行性,这归功于其短的分析时间和几秒钟的无损检测优势。 NIRS。

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