Consiglio per la ricerca in agricoltura e l'analisi dell'economia agraria (CREA), Centro di ricerca Ingegneria e Trasformazioni agroalimentari, Rome, Italy.
Department of Food, Environmental, and Nutritional Sciences, DeFENS, Università degli Studi di Milano, Milan, Italy.
J Sci Food Agric. 2021 Jan 15;101(1):151-157. doi: 10.1002/jsfa.10625. Epub 2020 Aug 3.
Durum wheat semolina is the best raw material for pasta production and its protein content and gluten strength are essential for cooking quality. The need to develop rapid methods to speed up quality control makes near-infrared spectroscopy (NIR) a useful method that is widely accepted in the cereal sector. In this study, two non-destructive and rapid technologies, a low-cost sensor providing a short wavelength NIR range (swNIR: 700-1100 nm) and a handheld NIR spectrometer (NIR: 1600-2400 nm), were employed to evaluate semolina quality. The spectra data were correlated with chemical (protein content) and rheological parameters (i.e., Gluten Index, Alveograph®, Sedimentation test, GlutoPeak®). A partial least squares (PLS) model was used to compare the efficacy of swNIR and NIR.
The protein content was the reference parameter that correlated best with the spectra data and provided the best regression model (r model = 0.9788 for NIR and 0.9561 for swNIR). GlutoPeak indices also correlated well with spectral data, particularly with swNIR spectra. A provisional multivariate model was applied to classify semolina samples in quality classes by using their spectra. Better modeling efficiency was obtained for swNIR.
The results highlighted the advantages of a pocket-sized low cost sensor (swNIR), which is easier to use directly at the sample source than laboratory instruments or more expensive portable devices. © 2020 Society of Chemical Industry.
硬质小麦粗粒粉是制作意大利面的最佳原料,其蛋白质含量和面筋强度是烹饪质量的关键。为了加快质量控制速度,需要开发快速方法,这使得近红外光谱(NIR)成为谷物行业广泛接受的有用方法。在这项研究中,采用了两种非破坏性和快速的技术,一种是提供短波长近红外范围(swNIR:700-1100nm)的低成本传感器和手持式近红外光谱仪(NIR:1600-2400nm),用于评估粗粒粉的质量。将光谱数据与化学(蛋白质含量)和流变学参数(即面筋指数、粉质仪、沉淀试验、GlutoPeak®)相关联。采用偏最小二乘(PLS)模型比较了 swNIR 和 NIR 的效果。
蛋白质含量是与光谱数据相关性最好的参考参数,提供了最佳回归模型(NIR 为 0.9788,swNIR 为 0.9561)。GlutoPeak 指数也与光谱数据高度相关,尤其是与 swNIR 光谱。应用了一个临时多元模型,根据光谱数据对粗粒粉样品进行质量分类。swNIR 的建模效率更高。
结果突出了便携式低成本传感器(swNIR)的优势,与实验室仪器或更昂贵的便携式设备相比,它更便于直接在样品源使用。© 2020 化学工业协会。