食品科学 ›› 2026, Vol. 47 ›› Issue (2): 347-356.doi: 10.7506/spkx1002-6630-20250722-181

• 专题论述 • 上一篇    下一篇

机器学习在酱卤肉制品质量控制中的研究与应用

李青,李宛玲,刘思露,孙健,徐幸莲,王虎虎   

  1. (1.新疆农业大学食品科学与药学学院,新疆 乌鲁木齐 830052;2.南京农业大学食品科学技术学院,肉品质量控制与新资源创制全国重点实验室,江苏 南京 210000)
  • 出版日期:2026-01-25 发布日期:2026-02-05
  • 基金资助:
    新疆特色烤卤鸡工业转换技术研发与产业化示范项目(2023B02033); 马肉马脂高附加值产品研发及品质提升项目(2024B02013-3-2-2)

Research and Application of Machine Learning in the Quality Control of Soy Sauce and Pot-Roast Meat Products

LI Qing, LI Wanling, LIU Silu, SUN Jian, XU Xinglian, WANG Huhu   

  1. (1. College of Food Science and Pharmacy, Xinjiang Agricultural University, ürümqi 830052, China;2. National Key Laboratory of Meat Quality Control and New Resource Creation, College of Food Science and Technology, Nanjing Agricultural University, Nanjing 210000, China)
  • Online:2026-01-25 Published:2026-02-05

摘要: 随着食品行业的发展,酱卤肉制品市场规模不断扩大,传统质量控制方法在原料筛选、加工工艺、风味分析等方面存在主观性强、效率低、难以精准预测等天然局限,严重制约酱卤肉制品产业高质量发展。机器学习作为先进的数据分析和建模技术,为解决这些难题提供了新的手段。基于此,本文论述了机器学习技术在酱卤肉制品质量控制中的应用,重点聚焦原料肉新鲜度评估、加工适宜性分析、香辛料筛选复配、加工工艺优化、风味预测标准化、质量融合分级及货架期预测等方面,并探讨了当前面临的挑战及未来的发展趋势,旨在为酱卤肉制品质量控制提供技术参考。

关键词: 机器学习;酱卤肉制品;质量;风味;预测;控制

Abstract: The growing food industry has led to the continuous expansion of the market of soy sauce and pot-roast meat products. However, traditional quality control methods have inherent limitations such as strong subjectivity, low efficiency, and poor predictability in areas including raw material selection, processing techniques, and flavor analysis, which severely restrict the high-quality development of the soy sauce and pot-roasted meat products industry. Machine learning, as an advanced data analysis and modeling technique, offers new solutions to these challenges. Against this background, this review discusses the application of machine learning in the quality control of soy sauce and pot-roast meat products, focusing on the assessment of raw meat freshness, analysis of processing suitability, selection and blending of spices, optimization of processing techniques, standardization of flavor prediction, quality grading based on data fusion, and shelf-life prediction. It also explores the current challenges and future trends in order to provide a technical reference for the quality control of soy sauce and pot-roast meat products.

Key words: machine learning; soy sauce and pot-roast meat products; quality; flavor; prediction; control

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