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Foods


Title:Enhancing Shelf Life Prediction of Fresh Pizza with Regression Models and Low Cost Sensors
Author(s):Wunderlich P; Pauli D; Neumaier M; Wisser S; Danneel HJ; Lohweg V; Dorksen H;
Address:"inIT-Institute Industrial IT, OWL University of Applied Sciences and Arts, 32657 Lemgo, Germany. Institute for Life Science Technologies (ILT.NRW), OWL University of Applied Sciences and Arts, 32657 Lemgo, Germany"
Journal Title:Foods
Year:2023
Volume:20230322
Issue:6
Page Number: -
DOI: 10.3390/foods12061347
ISSN/ISBN:2304-8158 (Print) 2304-8158 (Electronic) 2304-8158 (Linking)
Abstract:"The waste of food presents a challenge for achieving a sustainable world. In Germany alone, over 10 million tonnes of food are discarded annually, with a worldwide total exceeding 1.3 billion tonnes. A significant contributor to this issue are consumers throwing away still edible food due to the expiration of its best-before date. Best-before dates currently include large safety margins, but more precise and cost effective prediction techniques are required. To address this challenge, research was conducted on low-cost sensors and machine learning techniques were developed to predict the spoilage of fresh pizza. The findings indicate that combining a gas sensor, such as volatile organic compounds or carbon dioxide, with a random forest or extreme gradient boosting regressor can accurately predict the day of spoilage. This provides a more accurate and cost-efficient alternative to current best-before date determination methods, reducing food waste, saving resources, and improving food safety by reducing the risk of consumers consuming spoiled food"
Keywords:food waste low-cost sensors machine learning regression models spoilage prediction sustainability;
Notes:"PubMed-not-MEDLINEWunderlich, Paul Pauli, Daniel Neumaier, Michael Wisser, Stephanie Danneel, Hans-Jurgen Lohweg, Volker Dorksen, Helene eng 13FH3I03IA/German Federal Ministry of Education and Research (BMBF)/ Switzerland 2023/03/30 Foods. 2023 Mar 22; 12(6):1347. doi: 10.3390/foods12061347"

 
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