Infrared-Photoacoustic Spectroscopy and Multiproduct Multivariate Calibration to Estimate the Proportion of Coffee Defects in Roasted Samples

IF 3 Q2 FOOD SCIENCE & TECHNOLOGY
Beverages Pub Date : 2023-03-01 DOI:10.3390/beverages9010021
R. Dias, P. Valderrama, P. Março, M. Scholz, M. Edelmann, C. Yeretzian
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Abstract

Infrared-photoacoustic spectroscopy (IR-PAS) and partial least squares (PLS) were tested as a rapid alternative to conventional methods to evaluate the proportion of coffee defects in roasted and ground coffees. Multiproduct multivariate calibration models were obtained from spectra of healthy beans of Coffea canephora and C. arabica (Arabica) and blends composed of defective and healthy beans of Arabica in different proportions. The blends, named selections, contained sour, black, broken, whole beans, skin, and coffee woods. Six models were built using roasted and ground coffee samples. The model was optimized through outlier evaluation, and the parameters of merit such as accuracy, sensitivity, limits of detection and quantification, the inverse of analytical sensitivity, linearity, and adjustment were computed. The models presented predictive capacity and high sensitivity in determining defects, all being predicted with suitable correlation coefficients (ranging from 0.7176 to 0.8080) and presenting adequate performance. The parameters of merit displayed promising results, and the prediction models developed for %defects can be safely used as an alternative to the reference method. Furthermore, the new method is fast, efficient, and suitable for in-line application in quality control industrial coffee processing.
红外光声光谱法和多产品多元校准法估算烘焙样品中咖啡缺陷的比例
红外光声光谱(IR-PAS)和偏最小二乘(PLS)作为传统方法的快速替代方法,用于评估烘焙和磨碎咖啡中咖啡缺陷的比例。建立了canephora咖啡和C. arabica(阿拉比卡)健康豆以及阿拉比卡缺陷豆和健康豆按不同比例混合组成的混合物的多产品多变量校准模型。这些混合物被命名为精选,包括酸豆、黑豆、碎豆、全豆、咖啡豆皮和咖啡木。用烘焙和磨碎的咖啡样品建立了六个模型。通过离群值评价对模型进行优化,并对模型的精度、灵敏度、检出限和定量限、分析灵敏度逆、线性度和平差等优点参数进行了计算。模型在确定缺陷方面具有较高的预测能力和灵敏度,所有模型都具有合适的相关系数(范围从0.7176到0.8080),并且表现出足够的性能。优点参数显示出良好的结果,所建立的%缺陷预测模型可以作为参考方法的替代方法。该方法快速、高效,适合在线应用于工业咖啡加工的质量控制。
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来源期刊
Beverages
Beverages FOOD SCIENCE & TECHNOLOGY-
CiteScore
6.10
自引率
8.60%
发文量
68
审稿时长
11 weeks
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