Affiliation:
1. Department of Information and Communication Technology, Faculty of Technology University of Sri Jayewardenepura Gangodawila Nugegoda 10250 Sri Lanka
2. Department of Biosystems Technology, Faculty of Technology University of Sri Jayewardenepura Gangodawila Nugegoda 10250 Sri Lanka
Abstract
SummaryEnsuring the freshness of fish is essential to guaranteeing safer products for consumers. A classification model was developed using the PEN3 electronic nose to predict fish freshness with its storage day. Frigate tuna (Auxis thazard) was used for odour sampling along with the total volatile base nitrogen (TVB‐N), at 4 °C for 14 days every other day. Random forest and support vector machine (SVM) were performed to develop freshness classification models based on PEN3 data and 100% and 99.8% accuracies were obtained, respectively, in distinguishing the eight storage day classes. The PEN3 sensors including W2S, W1S, W1W, W3S, and W6S were identified as key sensors for fish freshness. TVB‐N analysis advances the freshness prediction of e‐nose and three freshness levels were identified as ‘Fresh’, applicable from the 0th to the 6th day; ‘Moderately fresh’, lasting from the 7th to the 9th day; and ‘Unsuitable for consumption’, applicable from the 10th day onwards.
Funder
University of Sri Jayewardenepura