Affiliation:
1. Department of Process Analytics and Cereal Science University of Hohenheim Garbenstr. 23 70599 Stuttgart Germany
2. Institute of Food Bio‐resources Technology Dedan Kimathi University of Technology Private Bag, 10143, Dedan Kimathi Nyeri Kenya
3. Department of Flavor Chemistry University of Hohenheim Fruwirthstraße 12 70599 Stuttgart Germany
Abstract
SummaryCoffee authenticity is a foundational aspect of quality when considering coffee's market value. This has become important given frequent adulteration and mislabelling for economic gains. Therefore, this research aimed to investigate the ability of a deep autoencoder neural network to detect adulterants in roasted coffee and to determine a coffee's geographical origin (roasted) using near infrared (NIR) spectroscopy. Arabica coffee was adulterated with robusta coffee or chicory at adulteration levels ranging from 2.5% to 30% in increments of 2.5% at light, medium and dark roast levels. First, the autoencoder was trained using pure arabica coffee before being used to detect the presence of adulterants in the samples. Furthermore, it was used to determine the geographical origin of coffee. All samples adulterated with chicory were detectable by the autoencoder at all roast levels. In the case of robusta‐adulterated samples, detection was possible at adulteration levels above 7.5% at medium and dark roasts. Additionally, it was possible to differentiate coffee samples from different geographical origins. PCA analysis of adulterated samples showed grouping based on the type and concentration of the adulterant. In conclusion, using an autoencoder neural network in conjunction with NIR spectroscopy could be a reliable technique to ensure coffee authenticity.
Funder
Deutscher Akademischer Austauschdienst
National Research Fund, Kenya
Subject
Industrial and Manufacturing Engineering,Food Science
Cited by
3 articles.
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