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基于电子鼻的气体阵列传感器用于检测受 污染的金枪鱼()

Gas Array Sensors based on Electronic Nose for Detection of Tuna () Contaminated by .

作者信息

Astuti Suryani Dyah, Isyrofie Achmad Ilham Fanany Al, Nashichah Roichatun, Kashif Muhammad, Mujiwati Tri, Susilo Yunus, Syahrom Ardiyansyah

机构信息

Forensic Sciences Studies Research Group, Magister of Forensic, Post Graduate School, Airlangga University, Johor, Malaysia.

Department of Physics, Magister of Biomedical Engineering, Faculty of Science and Technology, Airlangga University, Johor, Malaysia.

出版信息

J Med Signals Sens. 2022 Nov 10;12(4):306-316. doi: 10.4103/jmss.jmss_139_21. eCollection 2022 Oct-Dec.

Abstract

BACKGROUND

Fish is a food ingredient that is consumed throughout the world. When fishes die, their freshness begins to decrease. The freshness of the fish can be determined by the aroma it produces. The purpose of this study is to monitor the odor of fish using a collection of gas sensors that can detect distinct odors.

METHODS

The sensor was tested with three kinds of samples, namely , tuna, and tuna that was contaminated with bacteria. During the process of collecting sensor data, all samples were placed in a vacuum so that the gas or aroma produced was not contaminated with other aromas. Eight sensors were used which were designed and implemented in an electronic nose (E-nose) device that can withstand aroma. The data collection process was carried out for 48 h, with an interval of 6 h for each data collection. Data processing was performed by using the principal component analysis and support vector machine (SVM) methods to obtain a plot score visualization and classification and to determine the aroma pattern of the fish.

RESULTS

The results of this study indicate that the E-nose system is able to smell fish based on the hour with 95% of the cumulative variance of the main component in the classification test between fresh tuna and tuna fish contaminated with .

CONCLUSION

The SVM classifier was able to classify the healthy and unhealthy fish with an accuracy of 99%. The sensors that provided the highest response are the TGS 825 and TGS 826 sensors.

摘要

背景

鱼类是一种在全球范围内被食用的食物成分。当鱼死亡时,其新鲜度开始下降。鱼的新鲜度可以通过其产生的气味来确定。本研究的目的是使用一组能够检测不同气味的气体传感器来监测鱼的气味。

方法

该传感器用三种样品进行测试,即金枪鱼和被细菌污染的金枪鱼。在收集传感器数据的过程中,所有样品都被置于真空中,以使产生的气体或气味不被其他气味污染。使用了八个传感器,这些传感器在一个能够承受气味的电子鼻(E-nose)设备中进行设计和实现。数据收集过程持续48小时,每次数据收集间隔6小时。通过使用主成分分析和支持向量机(SVM)方法进行数据处理,以获得绘图分数可视化和分类,并确定鱼的气味模式。

结果

本研究结果表明,电子鼻系统能够根据时间来嗅出鱼的气味,在新鲜金枪鱼和被污染的金枪鱼之间的分类测试中,主成分的累积方差达到95%。

结论

支持向量机分类器能够以99%的准确率对健康鱼和不健康鱼进行分类。响应最高的传感器是TGS 825和TGS 826传感器。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e0e3/9885512/41087d56d9ad/JMSS-12-306-g010.jpg

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