利用便携式拉曼光谱识别威士忌的学习算法

IF 6.2 2区 农林科学 Q1 FOOD SCIENCE & TECHNOLOGY Current Research in Food Science Pub Date : 2024-01-01 DOI:10.1016/j.crfs.2024.100729
Kwang Jun Lee , Alexander C. Trowbridge , Graham D. Bruce , George O. Dwapanyin , Kylie R. Dunning , Kishan Dholakia , Erik P. Schartner
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引用次数: 0

摘要

由于威士忌行业的品牌替代和质量控制问题日益突出,对威士忌等高价值产品进行可靠的识别至关重要。我们开发了一个新颖的框架,通过将机器学习模型与便携式拉曼设备相结合,可以直接从原始光谱数据中进行威士忌分析,无需人工干预。我们证明,机器学习模型对 28 种商业样品的品牌或产品识别准确率可达 99% 以上。为了证明这种方法的灵活性,我们利用相同的算法对乙醇浓度进行了量化,并测量了加标威士忌样品中的甲醇含量。为了证明这些算法在实际环境中的潜在用途,我们在通过原始威士忌酒瓶进行的光谱测量中测试了我们的算法。在机器学习的帮助下,我们采用了迄今为止尚未应用于威士忌品牌识别的光束几何形状,从而方便了穿透瓶子的测量。无需倾析,大大提高了这项技术的实用性和商业潜力,使其能够用于检测假冒或掺假的烈酒和其他高价值液体。本文所建立的技术旨在作为一种快速、非破坏性的初步筛选机制,用于检测伪造和篡改的烈酒,以补充更全面、更严格的分析方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Learning algorithms for identification of whisky using portable Raman spectroscopy

Reliable identification of high-value products such as whisky is vital due to rising issues of brand substitution and quality control in the industry. We have developed a novel framework that can perform whisky analysis directly from raw spectral data with no human intervention by integrating machine learning models with a portable Raman device. We demonstrate that machine learning models can achieve over 99% accuracy in brand or product identification across twenty-eight commercial samples. To demonstrate the flexibility of this approach, we utilized the same algorithms to quantify ethanol concentrations, as well as measuring methanol levels in spiked whisky samples. To demonstrate the potential use of these algorithms in a real-world environment we tested our algorithms on spectral measurements performed through the original whisky bottle. Through the bottle measurements are facilitated by a beam geometry hitherto not applied to whisky brand identification in conjunction with machine learning. Removing the need for decanting greatly enhances the practicality and commercial potential of this technique, enabling its use in detecting counterfeit or adulterated spirits and other high-value liquids. The techniques established in this paper aim to function as a rapid and non-destructive initial screening mechanism for detecting falsified and tampered spirits, complementing more comprehensive and stringent analytical methods.

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来源期刊
Current Research in Food Science
Current Research in Food Science Agricultural and Biological Sciences-Food Science
CiteScore
7.40
自引率
3.20%
发文量
232
审稿时长
84 days
期刊介绍: Current Research in Food Science is an international peer-reviewed journal dedicated to advancing the breadth of knowledge in the field of food science. It serves as a platform for publishing original research articles and short communications that encompass a wide array of topics, including food chemistry, physics, microbiology, nutrition, nutraceuticals, process and package engineering, materials science, food sustainability, and food security. By covering these diverse areas, the journal aims to provide a comprehensive source of the latest scientific findings and technological advancements that are shaping the future of the food industry. The journal's scope is designed to address the multidisciplinary nature of food science, reflecting its commitment to promoting innovation and ensuring the safety and quality of the food supply.
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