Physico-chemical properties extraction from the fluorescence spectrum with 1D-convolutional neural networks: application to olive oil
Francesca Venturini, Michela Sperti, Umberto Michelucci and, Arnaud Gucciardi, Vanessa M. Martose, Marco A. Deriu

TL;DR
This study introduces a novel AI-based method using 1D convolutional neural networks and fluorescence spectroscopy to non-destructively predict key chemical quality indicators of olive oil, enabling cost-effective and continuous quality control.
Contribution
The paper presents the first application of 1D CNNs to fluorescence spectra for predicting olive oil quality parameters, improving efficiency and reducing costs in quality assessment.
Findings
High accuracy in predicting olive oil quality indicators
Non-destructive, rapid analysis method
Potential for real-time quality monitoring
Abstract
The olive oil sector produces a substantial impact in the Mediterranean's economy and lifestyle. Many studies exist which try to optimize the different steps in the olive oil's production process. One of the main challenges for olive oil producers is the ability to asses and control the quality during the production cycle. For this purpose, several parameters need to be determined, such as the acidity, the UV absorption or the ethyl esters content. To achieve this, samples must be sent to an approved laboratory for chemical analysis. This approach is expensive and cannot be performed very frequently, making quality control of olive oil a real challenge. This work explores a new approach based on fluorescence spectroscopy and artificial intelligence (namely, 1-D convolutional neural networks) to predict the five chemical quality indicators of olive oil (acidity, peroxide value, UV…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Advanced Chemical Sensor Technologies · Edible Oils Quality and Analysis
MethodsNetwork On Network
