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.
Supplementary weblinks
Title
Headspace Authenticity ANN
Description
Software and training data for the artificial neural network used as part of this paper
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