利用电子鼻测定菲律宾番茄菜系随时间和温度的腐败程度

M. V. Caya, F. Cruz, Patricia Joy R. Blas, Miriam M. Cagalingan, R. Malbas, Wen-Yaw Chung
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引用次数: 14

摘要

每个人对食物是否变质有不同的看法,这可能会导致对食物状况的错误假设。对食物状况的误解可能导致食源性疾病。由于这种预测混乱,对食品变质分类的电子鼻系统的需求仍然存在。本研究旨在利用电子鼻检测以番茄为基础的菲律宾菜的食物变质。具体而言,本研究旨在开发一种具有一系列传感器的设备,以检测以番茄为基础的菲律宾菜所排放的气体,并实现人工神经网络作为传感器数据读取分类的算法。电子鼻系统的硬件部分采用Gizduino 1281、树莓派3型号B、20×4液晶屏、7个MQ气体传感器和1个温湿度传感器。采用随机梯度下降和反向传播算法对人工神经网络数据进行训练。以番茄为基础的菲律宾菜被放置在传感器室下方,以便于识别菜肴本身发出的气体传感器。这项研究可能有助于对食物是否变质进行分类。这种电子鼻系统可以确定一种特定的以番茄为基础的菲律宾菜的腐败程度。研究人员将0到12级定为腐败等级。这些水平对应于从第一天早上7点开始每四小时观察一次食物的时间。随着实验的继续,食物也经常在5级到6级之间变质。基于混淆矩阵,电子鼻系统的误差率为3.85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determining spoilage level against time and temperature of tomato-based Filipino cuisines using electronic nose
Every person has different perspective on whether a food is spoiled, and this may lead to wrong assumptions on the food's condition. Misinterpretation on food condition could lead to food-borne illness. The need for electronic nose system for classifying if a food is spoiled is still in demand due to this prediction confusion. This study aims to detect food spoilage of tomato-based Filipino cuisines using an electronic nose. Specifically, this research aims to develop a device with an array of sensors to detect the gases emitted by spoiled tomato-based Filipino cuisines and implement Artificial Neural Network as an algorithm for the classification of the data reading of the sensor. The hardware part of the e-nose system makes use of Gizduino 1281, Raspberry Pi 3 model B, 20×4 LCD Screen, 7 MQ gas sensors, and 1 temperature/humidity sensor. Stochastic Gradient Descent together with Back propagation algorithm is used for training the Artificial Neural Network data. The tomato-based Filipino cuisine is placed below the sensor chamber for easy recognition of the gas sensors emitted by the cuisine itself. The study could be useful in classifying whether food is spoiled. This electronic nose system could determine spoilage level of a specific tomato-based Filipino cuisine. The researchers assigned level 0 to 12 as the spoilage level. These levels correspond to the time when the food is observed every four hours starting 7:00 AM of Day 1. As the experiment continued, it was also that the food often spoiled between levels 5 and 6. Based on the confusion matrix, the error rate of the electronic nose system is 3.85%.
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