利用机器学习辅助元素分析加强食品真实性控制

IF 7 1区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY
Ying Yang , Lu Zhang , Xinquan Qu , Wenqi Zhang , Junling Shi , Xiaoguang Xu
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引用次数: 0

摘要

随着人们对食品真实性的关注与日俱增,能够解决相关问题的高效、准确技术对于提高公众对食品的信任度至关重要。本综述阐述了食品真实性的两个主要方面,即食品可追溯性和食品质量控制。更明确地说,它们是食品原产地和有机食品的可追溯性、食品掺假和重金属的检测。该书介绍了食品溯源和食品质量控制的主要内容,并指出了常用的形态学和有机化合物检测方法的局限性,强调了利用机器学习技术将食品中的元素作为检测指标来解决食品真实性问题的优势。以元素为检测对象具有显著的稳定性优势,机器学习技术可以结合大量数据样本,既保证了准确性又提高了效率。此外,通过比较它们的准确性,可以找到最合适的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Enhanced food authenticity control using machine learning-assisted elemental analysis

Enhanced food authenticity control using machine learning-assisted elemental analysis
With the increasing attention being paid to the authenticity of food, efficient and accurate techniques that can solve relevant problems are crucial for improving public trust in food. This review explains two main aspects of food authenticity, namely food traceability and food quality control. More explicitly, they are the traceability of food origin and organic food, detection of food adulteration and heavy metals. It also points out the limitations of the commonly used morphology and organic compound detection methods, and highlights the advantages of combining the elements in food as detection indicators using machine learning technology to solve the problem of food authenticity. Taking elements as detection objects has the significant advantages of stability, machine learning technology can combine large data samples, ensuring both the accuracy and efficiency. In addition, the most suitable algorithm can be found by comparing their accuracy.
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来源期刊
Food Research International
Food Research International 工程技术-食品科技
CiteScore
12.50
自引率
7.40%
发文量
1183
审稿时长
79 days
期刊介绍: Food Research International serves as a rapid dissemination platform for significant and impactful research in food science, technology, engineering, and nutrition. The journal focuses on publishing novel, high-quality, and high-impact review papers, original research papers, and letters to the editors across various disciplines in the science and technology of food. Additionally, it follows a policy of publishing special issues on topical and emergent subjects in food research or related areas. Selected, peer-reviewed papers from scientific meetings, workshops, and conferences on the science, technology, and engineering of foods are also featured in special issues.
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