Milk Quality Prediction Using Machine Learning

Drashti Bhavsar, Yash Jobanputra, Nirmal Keshari Swain, Debabrata Swain
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Abstract

Milk is the main dietary supply for every individual. High-quality milk shouldn't contain any adulterants. Dairy products are sold everywhere in society. Yet, the local milk vendors use a wide range of adulterants in their products, permanently altering the evaporated. Using milk that has gone bad can have serious health consequences. On October 18 of this year, the Food Safety and Standards Authority of India (FSSAI), the nation's top food safety authority, released the final result of the National Milk Safety and Quality Survey (NMSQS) and declared the milk readily available in India to be "mostly safe." According to an FSSAI survey, 68.4% of the milk in India is tainted. The quality of milk cannot be checked by any equipment or special system. Milk that has not been pasteurized has not been treated to get rid of harmful bacteria. Infected raw milk may contain Salmonella, Campylobacter, Cryptosporidium, E. coli, Listeria, Brucella, and other dangerous pathogens. These microorganisms pose a major risk to your family's health. Manually analyzing the various milk constituents can be very challenging when determining the quality of the milk. Analyzing and discovering with the aid of machine learning can help with this endeavor. Here a machine learning-based milk quality prediction system is developed. The proposed technology has shown 99.99% classification accuracy.
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利用机器学习预测牛奶质量
牛奶是每个人的主要食物来源。高品质的牛奶不应该含有任何掺假物质。社会上到处都有奶制品出售。然而,当地的牛奶商贩却在产品中使用各种掺假物质,永久性地改变牛奶的蒸发。使用变质的牛奶会对健康造成严重后果。今年 10 月 18 日,印度最高食品安全机构--印度食品安全与标准局(FSSAI)公布了全国牛奶安全与质量调查(NMSQS)的最终结果,宣布印度市面上的牛奶 "基本安全"。根据 FSSAI 的一项调查,印度有 68.4% 的牛奶受到污染。牛奶的质量无法通过任何设备或特殊系统进行检测。没有经过巴氏杀菌的牛奶没有经过去除有害细菌的处理。受感染的生牛奶可能含有沙门氏菌、弯曲杆菌、隐孢子虫、大肠杆菌、李斯特菌、布鲁氏菌和其他危险病原体。这些微生物对您家人的健康构成重大威胁。在确定牛奶质量时,手动分析各种牛奶成分可能非常具有挑战性。借助机器学习进行分析和发现有助于完成这项工作。这里开发了一个基于机器学习的牛奶质量预测系统。该技术的分类准确率高达 99.99%。
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