首页|Establishing a novel procedure to detect deviations from standard milk processing by using online Raman spectroscopy

Establishing a novel procedure to detect deviations from standard milk processing by using online Raman spectroscopy

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Controlling milk processing steps is a crucial task as it affects the quality and safety of the final product. Using Raman spectrometer in combination with various evaluation techniques such as principal component analysis and regression, Gaussian process regression, and the autoencoder were checked to define an accurate method for detection of deviations from standard procedures. For this purpose, milk with 5% fat measured at 10 degrees C was considered as the reference milk. A temperature-controlled flow cell was used in a by-pass for online measurements. While the principal component regression was not able to predict the deviations, results demonstrate the capability of Gaussian process regression and the autoencoder to detect 5% added water and cleaning solution, 0.1% difference in fat content and variation of 5 degrees C in measurement temperature. It can be concluded that both procedures display promising results, however, the autoencoder can be trained once and used immediately for online supervision. Therefore, changes can be detected promptly, enabling companies to react instantly.

AutoencoderMilk processingDeviations detectionGaussian process regressionRaman spectroscopy

Vasafi, Pegah Sadeghi、Hinrichs, Joerg、Hitzmann, Bernd

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Univ Hohenheim, Inst Food Sci & Biotechnol, Garbenstr 23, D-70599 Stuttgart, Germany

2022

Food Control

Food Control

SCI
ISSN:0956-7135
年,卷(期):2022.131
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