4.7 Article

Mitigating spread of contamination in meat supply chain management using deep learning

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SCIENTIFIC REPORTS
卷 12, 期 1, 页码 -

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NATURE PORTFOLIO
DOI: 10.1038/s41598-022-08993-5

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Industry 4.0 recommends transitioning from traditional manufacturing to automated industrial practices in supply chain management, along with the use of new technologies to ensure sustainable supply chains and reduce food loss. Artificial intelligence techniques, such as deep learning, can increase productivity in perishable product supply chains by reducing costs, improving accuracy, accelerating processes, and reducing the carbon footprint of food. In meat supply chain management, a classification model trained by DCNN and PSO algorithms achieves 100% accuracy in distinguishing wholesome meat from spoiled ones.
Industry 4.0 recommends a paradigm shift from traditional manufacturing to automated industrial practices, especially in different parts of supply chain management. Besides, the Sustainable Development Goal (SDG) 12 underscores the urgency of ensuring a sustainable supply chain with novel technologies including Artificial Intelligence to decrease food loss, which has the potential of mitigating food waste. These new technologies can increase productivity, especially in perishable products of the supply chain by reducing expenses, increasing the accuracy of operations, accelerating processes, and decreasing the carbon footprint of food. Artificial intelligence techniques such as deep learning can be utilized in various sections of meat supply chain management--where highly perishable products like spoiled meat need to be separated from wholesome ones to prevent cross-contamination with food-borne pathogens. Therefore, to automate this process and prevent meat spoilage and/or improve meat shelf life which is crucial to consumer meat preferences and sustainable consumption, a classification model was trained by the DCNN and PSO algorithms with 100% accuracy, which discerns wholesome meat from spoiled ones.

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