奶酪制作中的机器学习:方法、应用和未来

IF 7.6 2区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Daniel Pardo, Manuel Castillo, Mehmet Oguz Mulayim, Jesus Cerquides
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引用次数: 0

摘要

奶酪的制作是一个复杂的过程,涉及许多阶段,涉及多种因素和复杂的物理化学元素之间的相互作用。了解这一过程并优化其阶段已经引起了许多研究的注意。近年来,机器学习(ML)由于能够捕获复杂和非线性模式,已成为数据分析和建模的最先进工具之一。在食品科学和工程领域,这些算法已经开始被用作更传统的统计和数学预测模型的替代方案。本文探讨了机器学习应用于奶酪研究的主要研究,从生产阶段(即发酵或凝固过程)到最终产品(即掺假或食品欺诈的检测)。我们特别回顾了2014年1月至2025年1月期间发表的42篇论文,目的是找出共同的方法。首先,我们解释了使这些方法更接近没有ML应用经验的研究人员所需的主要概念。然后,我们分析了选定的出版物,以详细说明感兴趣的任务和提出的算法来解决它们。最后,我们发现了将机器学习纳入未来奶酪研究的差距和机会。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning in Cheese-Making: Methods, Applications, and the Future

Cheese-making is a complex process involving numerous stages, with multiple factors contributing and complex interactions occurring among the physicochemical elements involved. Understanding the process and optimizing its stages has attracted the attention of numerous investigations. In recent years, Machine Learning (ML) has established itself as one of the most advanced tools for data analysis and modeling thanks to its ability to capture complex and non-linear patterns. In the area of food science and engineering, these algorithms have started to be used as an alternative to more traditional statistical and mathematical prediction models. This paper explores the main research on ML applied to the study of cheese, from its production stages (i.e., fermentation or coagulation process) to the final product (i.e., detection of adulterations or food fraud). Particularly, we review 42 papers published between January 2014 and January 2025, with the aim of identifying common approaches. First, we present an explanation of the main concepts required to bring these approaches closer to researchers who are not experienced in applying ML. Then, we analyze the selected publications to detail the tasks of interest and the algorithms proposed to solve them. Finally, we detect gaps and opportunities to incorporate ML into future cheese research.

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来源期刊
Food Engineering Reviews
Food Engineering Reviews FOOD SCIENCE & TECHNOLOGY-
CiteScore
14.20
自引率
1.50%
发文量
27
审稿时长
>12 weeks
期刊介绍: Food Engineering Reviews publishes articles encompassing all engineering aspects of today’s scientific food research. The journal focuses on both classic and modern food engineering topics, exploring essential factors such as the health, nutritional, and environmental aspects of food processing. Trends that will drive the discipline over time, from the lab to industrial implementation, are identified and discussed. The scope of topics addressed is broad, including transport phenomena in food processing; food process engineering; physical properties of foods; food nano-science and nano-engineering; food equipment design; food plant design; modeling food processes; microbial inactivation kinetics; preservation technologies; engineering aspects of food packaging; shelf-life, storage and distribution of foods; instrumentation, control and automation in food processing; food engineering, health and nutrition; energy and economic considerations in food engineering; sustainability; and food engineering education.
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