Machine learning-based optimal temperature management model for safety and quality control of perishable food supply chain

被引:0
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作者
Joy Eze [1 ]
Yanqing Duan [4 ]
Elias Eze [3 ]
Ramakrishnan Ramanathan [2 ]
Tahmina Ajmal [4 ]
机构
[1] Goldsmiths University of London,Department of Computing, School of Professional Studies, Science and Technology
[2] New Cross,Department of Management, College of Business Administration
[3] University of Sharjah,School of Architecture, Computing and Engineering
[4] University of East London,Business and Management Research Institute
[5] University of Bedfordshire,School of Computer Science and Technology
[6] Institute for Research in Engineering and Sustainable Environment,undefined
[7] University of Bedfordshire,undefined
关键词
Food technology; Cold supply chain; Food waste; Modelling; Perishable foods; Machine learning; Food temperature control; -means clustering;
D O I
10.1038/s41598-024-70638-6
中图分类号
学科分类号
摘要
The management of a food supply chain is difficult and complex because of the product's short shelf-life, time-sensitivity, and perishable nature which must be carefully considered to minimize food waste. Temperature-controlled perishable food supply chain provides the highly crucial facilities necessary to maintain the quality and safety of the product. The storage temperature is the most vital factor in maintaining both the quality and shelf-life of a perishable food. Adequate storage temperature control ensures that perishable foods are transported to the end-users in good quality and safe to consume. This paper presents perishable food storage temperature control through mathematical optimal control model where the storage temperature is regarded as the control variable and the deterioration of the perishable food’s quality follows the first-order reaction. The optimal storage temperature for a single perishable food is determined by applying the Pontryagin's maximum principle to solve the optimal control model problem. For multi-temperature commodities supply chain, an unsupervised machine learning (ML) method, called k-means clustering technique is used to determine the temperature clusters for a range of perishables. Based on descriptive analysis, it is observed that the k-means clustering technique is effective in identifying the best suitable storage temperature clusters for quality control of multi-commodity supply chain.
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