使用自动编码器和基于残差的便携式拉曼光谱模型快速定量分析米粉中的荣阿利特掺假。

Shiwen Li, Tian Li, Yaoyi Cai, Zekai Yao, Miaolei He
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引用次数: 0

摘要

米粉是各种食品的原料,是小麦粉的替代品。然而,一些商家在米粉中掺入非法添加剂荣阿利特,以延长保质期,赚取非法利润。容阿利特具有高度致癌性,摄入超过10克甚至会导致死亡。高效液相色谱法(HPLC)和质谱法(MS)是目前检测食品掺假的主要方法,但现有方法局限性大、操作复杂、仪器昂贵等。拉曼光谱法具有样品方便、无损等优点,但是拉曼光谱除了由于非线性偏置而难以进行定量分析的问题之外还可能受到诸如影响检测的荧光背景的干扰的影响。本文采用Savitzky Golay平滑滤波和VTPspline的预处理方法来提高光谱的质量,并提出了将自动编码器和残差网络相结合的SARNet,实现了米粉中容阿利特含量的定量分析。该模型将线性模型与非线性模型相结合,能够有效地解决非线性问题。实验表明,新的SARNet模型取得了最先进的结果,获得了0.9703的最佳R2和0.0075的RMSEP。便携式拉曼光谱仪检测到的最低容阿利特浓度为0.49%。总之,所提出的便携式拉曼光谱与机器学习相结合的方法检测偏差低,精度高,可以快速实现米粉中掺伪容阿利特的定量分析。该方法为食品检测领域提供了一种准确、无损的分析工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rapid quantitative analysis of Rongalite adulteration in rice flour using autoencoder and residual-based model associated with portable Raman spectroscopy.

Rice flour is a raw material for various foods and is used as a substitute for wheat flour. However, some merchants adulterate rice flour with the illegal additive Rongalite to extend the shelf life and earn illegal profits. Rongalite is highly carcinogenic, and ingestion of more than 10 g can even cause death. high-performance liquid chromatography (HPLC) and mass spectrometry (MS) are currently the main methods for detecting food adulteration, however, the existing methods have many limitations, complex operation, expensive instrumentation, etc. Raman spectroscopy has the advantages of convenience and non-destructive samples, but Raman spectroscopy can be affected by interference such as fluorescence background that affects detection, in addition to the problem of difficult quantitative analysis due to nonlinear bias. In this article, we used the preprocessing method of Savitzky-Golay smoothing filtering and VTPspline to improve the quality of the spectra and proposed the SARNet, which combines autoencoder and residual network to achieve the quantitative analysis of Rongalite content in rice flour. The new model combines a linear model with a nonlinear model, which can solve the nonlinear problem effectively. Experiments showed that the new SARNet model achieved state-of-the-art results, achieving the best R2 of 0.9703 and RMSEP of 0.0075. The lowest Rongalite concentration detected by the portable Raman spectrometer was 0.49%. In summary, the proposed method using portable Raman spectroscopy combined with machine learning has low detection bias and high accuracy, which can realize quantitative analyses of adulterated Rongalite in rice flour quickly. The method provides an accurate and nondestructive analytical tool in the field of food detection.

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