A Rapid Dynamic Headspace Method for Authentication of Whiskies using Artificial Neural Networks

14 February 2023, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

A rapid headspace analysis method for the authenticity testing of whiskies of different brands and years was developed for a low cost, deployable atmospheric pressure ionisation mass spectrometer, which required minimal sample preparation. Principal component analysis was applied to the time-averaged mass spectra, the classification results for which were compared against artificial neural network methods. The artificial neural network was found to outperform PCA, achieving 95% accuracy for all sampling conditions, with only two misclassifications under the ideal conditions, while requiring less development time.

Keywords

Food Authentication
APCI
Artificial Neural Networks
Whisky
Headspace

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