易腐性
机器学习
计算机科学
人工智能
保质期
稳健性(进化)
质量(理念)
工程类
业务
营销
化学
机械工程
生物化学
哲学
认识论
基因
作者
Dawei Li,Lin Bai,Sheng Wang,Ying Sun
出处
期刊:Foods
[MDPI AG]
日期:2024-09-24
卷期号:13 (19): 3025-3025
标识
DOI:10.3390/foods13193025
摘要
Fruits and vegetables are valued for their flavor and high nutritional content, but their perishability and seasonality present challenges for storage and marketing. To address these, it is essential to accurately monitor their quality and predict shelf life. Unlike traditional methods, machine learning efficiently handles large datasets, identifies complex patterns, and builds predictive models to estimate food shelf life. These models can be continuously refined with new data, improving accuracy and robustness over time. This article discusses key machine learning methods for predicting shelf life and quality control of fruits and vegetables, with a focus on storage conditions, physicochemical properties, and non-destructive testing. It emphasizes advances such as dataset expansion, model optimization, multi-model fusion, and integration of deep learning and non-destructive testing. These developments aim to reduce resource waste, provide theoretical basis and technical guidance for the formation of modern intelligent agricultural supply chains, promote sustainable green development of the food industry, and foster interdisciplinary integration in the field of artificial intelligence.
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