基于机器学习算法的肉类腐败检测:避免食源性感染

Rudrahari S, Wasim Ahmed K, Vigneswaran R R, R. K
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摘要

近年来,人们的健康意识越来越强,对食品安全也越来越关注。市场上越来越多地出售变质的肉,而不是人们所需要的鲜肉。肉类腐败是影响全球每个人的主要问题。全球每年记录的食源性疾病病例达100万例。这是吃了腐肉的结果。变质的肉类含有许多有毒的挥发性有机化学物质。因此,有必要建立一个系统,可以在任何症状出现之前识别食物变质。通过使用合适的传感器并跟踪肉类产生的气体,该系统试图识别肉类的新鲜度。这项研究建议利用气体传感器来测量生肉释放的气体水平、温度和湿度,以确定它的新鲜程度。它利用机器学习算法来区分新鲜和变质的肉。各种传感器用于检测各种食品特性,如温度、湿度、氨气、H2S气体或甲烷。传感器为微控制器提供读数。这些读数作为机器学习算法的输入,决定肉是否变质。研究结果强调了预测肉类腐烂程度的潜在好处
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 Algorithm Based Meat Spoilage Detection: To Avoid Foodborne Infection
People are becoming more health conscious and paying more attention to food safety in recent years. Instead of the fresh meat that is needed, spoiled meat are increasingly being sold in marketplaces. Meat spoilage is a major issue that affects everyone in the globe. Million instances of food-borne disease are recorded globally each year. This is a result of eating rotten meat. Meat that has been spoiled includes a number of toxic volatile organic chemicals. Thus, it is imperative to have a system that can identify food deterioration before any symptoms appear. Using the proper sensors and keeping track of gases produced from meat, the system seeks to identify freshness of meat. This study suggests utilising gas sensors to measure the level of gases released by raw meat, temperature and humidity in order to determine how fresh it is. It makes use of machine learning algorithms to distinguish between fresh and spoiled meat. Various sensors are used to detect various food properties, such as temperature, moisture, ammonia gas, H2S gas, or methane. The sensors provide readings to the microcontroller. These readings serve as the input for the machine learning algorithm that decides whether the meat has spoiled or not. The findings highlight potential benefits of predicting meat rotting level
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