Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/131157
Title: Application of Artificial Neural Networks in Dairy Products and Biosensors in Drying Products
Authors: Hosseinvand, A.
Rabi, M. N. F.
Haidari, A.
Kumar, A.
Amruddin, M.
Issue Date: 2023
Publisher: United Scientific Group
Citation: Hosseinvand, A, Rabi, MNF, Haidari, A, Kumar, A & Amruddin, M 2023, 'Application of Artificial Neural Networks in Dairy Products and Biosensors in Drying Products', Journal of Food Chemistry and Nanotechnology, Том. 9, № 4, стр. 172 - 175.
Hosseinvand, A., Rabi, M. N. F., Haidari, A., Kumar, A., & Amruddin, M. (2023). Application of Artificial Neural Networks in Dairy Products and Biosensors in Drying Products. Journal of Food Chemistry and Nanotechnology, 9(4), 172 - 175.
Abstract: Undoubtedly, one of the perishable groups in food science classification is dairy products. Dairy group foods provide nutrients that are vital for the health and maintenance of the body. Moreover, agriculture products with the lowest waste are strategist products for all the countries. Artificial neural networks (ANNs) are used in almost all industries such as science, technology, medicine and engineering due to their optimal efficiency. They have been used in analysis as well as the possibility of predicting shelf life in food industries. This article ana-lyzes the available information and articles related to the use of ANNs in predicting the shelf life of dairy products such as milk, yogurt, butter, and cheese, which can be useful from the point of view of consumers, regulatory organizations, re-searchers, and academics be very productive. The objective of this review was to highlight the application of ANNs in food science technology on deliberated for usual dairy products in food market. The collected results in this research indicat-ed that this computing system followed mathematical models and these methods are always used in food science technologies as input and output in algorithms. © 2023 Hosseinvand et al.
Keywords: ARTIFICIAL NEURAL NETWORK
DAIRY PRODUCT
MATHEMATICAL MODELS
SHELF LIFE
URI: http://elar.urfu.ru/handle/10995/131157
Access: info:eu-repo/semantics/openAccess
SCOPUS ID: 85185143198
PURE ID: 53792104
ISSN: 2471-4291
DOI: 10.17756/jfcn.2023-164
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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