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小型近红外光谱仪中的测量误差及其对预处理的影响:以甜杏仁和苦杏仁的分类为例进行研究

Measurement errors and implications for preprocessing in miniaturised near-infrared spectrometers: Classification of sweet and bitter almonds as a case of study.

作者信息

Ezenarro Jokin, Riu Jordi, Ahmed Hawbeer Jamal, Busto Olga, Giussani Barbara, Boqué Ricard

机构信息

Universitat Rovira i Virgili, Department of Analytical Chemistry and Organic Chemistry, Campus Sescelades, 43007, Tarragona, Catalonia, Spain.

Universitat Rovira i Virgili, Department of Analytical Chemistry and Organic Chemistry, Campus Sescelades, 43007, Tarragona, Catalonia, Spain; United Science Colleges, Department of Chemistry, Bakhan 108, Sulaymaneyah, Iraq.

出版信息

Talanta. 2024 Aug 15;276:126271. doi: 10.1016/j.talanta.2024.126271. Epub 2024 May 16.

Abstract

Near-infrared (NIR) spectroscopy is a well-established analytical technique that has been used in many applications over the years. Due to the advancements in the semiconductor industry, NIR instruments have evolved from benchtop instruments to miniaturised portable devices. The miniaturised NIR instruments have gained more interest in recent years because of the fast and robust measurements they provide with almost no sample pretreatments. However, due to the very different configurations and characteristics of these instruments, they need a dedicated optimization of the measurement conditions, which is crucial for obtaining reliable results. To comprehensively grasp the capabilities and potentials offered by these sensors, it is imperative to examine errors that can affect the raw data, which is a facet frequently overlooked. In this study, measurement error covariance and correlation matrices were calculated and then visually inspected to gain insight into the error structures associated with the devices, and to find the optimal preprocessing technique that may result in the improvement of the models built. This strategy was applied to the classification of sweet and bitter almonds, which were measured with the three portable low-cost NIR devices (SCiO, FlameNIR+ and NeoSpectra Micro Development Kit) after removing the shelled, since their classification is of utmost importance for the almond industry. The results showed that bitter almonds can be classified from sweet almonds using any of the instruments after selecting the optimal preprocessing, obtained through inspection of covariance and correlation matrices. Measurements obtained with FlameNIR + device provided the best classification models with an accuracy of 98 %. The chosen strategy provides new insight into the performance characterization of the fast-growing miniaturised NIR instruments.

摘要

近红外(NIR)光谱法是一种成熟的分析技术,多年来已在许多应用中得到使用。由于半导体行业的进步,近红外仪器已从台式仪器发展为小型便携式设备。近年来,小型近红外仪器因其能够提供快速且可靠的测量结果且几乎无需样品预处理而受到更多关注。然而,由于这些仪器的配置和特性差异很大,它们需要对测量条件进行专门优化,这对于获得可靠结果至关重要。为了全面了解这些传感器的能力和潜力,必须检查可能影响原始数据的误差,而这是一个经常被忽视的方面。在本研究中,计算了测量误差协方差和相关矩阵,然后进行直观检查,以深入了解与设备相关的误差结构,并找到可能导致所建立模型得到改进的最佳预处理技术。该策略应用于甜杏仁和苦杏仁的分类,在去除外壳后,使用三种便携式低成本近红外设备(SCiO、FlameNIR + 和 NeoSpectra Micro开发套件)对其进行测量,因为它们的分类对杏仁行业至关重要。结果表明,在通过检查协方差和相关矩阵选择最佳预处理后,使用任何一种仪器都可以将苦杏仁与甜杏仁区分开来。使用FlameNIR + 设备获得的测量结果提供了最佳的分类模型,准确率为98%。所采用的策略为快速发展的小型近红外仪器的性能表征提供了新的见解。

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