Rapid analysis of meat floss origin using a supervised machine learning-based electronic nose towards food authentication

Putri, Linda Ardita and Rahman, Iman and Puspita, Mayumi and Hidayat, Shidiq Nur and Dharmawan, Agus Budi and Rianjanu, Aditya and Wibirama, Sunu and Roto, Roto and Triyana, Kuwat and Wasisto, Hutomo Suryo (2023) Rapid analysis of meat floss origin using a supervised machine learning-based electronic nose towards food authentication. NPJ SCIENCE OF FOOD, 7 (1).

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Abstract

Authentication of meat floss origin has been highly critical for its consumers due to existing potential risks of having allergic diseases or religion perspective related to pork-containing foods. Herein, we developed and assessed a compact portable electronic nose (e-nose) comprising gas sensor array and supervised machine learning with a window time slicing method to sniff and to classify different meat floss products. We evaluated four different supervised learning methods for data classification (i.e., linear discriminant analysis (LDA), quadratic discriminant analysis (QDA), k-nearest neighbors (k-NN), and random forest (RF)). Among them, an LDA model equipped with five-window-extracted feature yielded the highest accuracy values of >99% for both validation and testing data in discriminating beef, chicken, and pork flosses. The obtained e-nose results were correlated and confirmed with the spectral data from Fourier-transform infrared (FTIR) spectroscopy and gas chromatography-mass spectrometry (GC-MS) measurements. We found that beef and chicken had similar compound groups (i.e., hydrocarbons and alcohol). Meanwhile, aldehyde compounds (e.g., dodecanal and 9-octadecanal) were found to be dominant in pork products. Based on its performance evaluation, the developed e-nose system shows promising results in food authenticity testing, which paves the way for ubiquitously detecting deception and food fraud attempts.

Item Type: Article
Subjects: Q Science > QC Physics
Divisions: Faculty of Mathematics and Natural Sciences > Physics Department
Depositing User: Sri JUNANDI
Date Deposited: 22 Nov 2024 08:37
Last Modified: 22 Nov 2024 08:37
URI: https://ir.lib.ugm.ac.id/id/eprint/12083

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