Olfactory classification using electronic nose system via artificial neural network

Aaron Paulo D. Heredia, F. Cruz, Jessie R. Balbin, Wen-Yaw Chung
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引用次数: 11

Abstract

Olfaction, according to modern research, has not yet been classified based on its known properties. Unlike the sense of taste and sight, the sense of smell does not have any known dimensions of category. Modern technologies of Electronic nose (E-nose) systems were used in analyzing smells. This study aimed to categorize different clusters of smell and differentiate their levels of reaction to an E-nose system comprising of different sensors. MQ - Metal-Oxide semiconductor gas sensors were used coupled with artificial neural network (ANN) using MATLAB to evaluate the systems capability of discrimination. Interfacing was done using Arduino Microcontroller for communication. MQ5 Gas sensor gave the most variance. This result confirmed that the system's ability to be used in future applications was suggested.
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利用人工神经网络对电子鼻系统进行嗅觉分类
根据现代研究,嗅觉还没有根据其已知的特性进行分类。与味觉和视觉不同,嗅觉没有任何已知的范畴。利用现代电子鼻技术对气味进行分析。本研究旨在对不同的气味集群进行分类,并区分它们对由不同传感器组成的电子鼻系统的反应水平。利用MATLAB将MQ -金属氧化物半导体气体传感器与人工神经网络(ANN)相结合,对系统的识别能力进行了评价。接口采用Arduino单片机进行通信。MQ5气体传感器给出的方差最大。这一结果证实了该系统在未来应用中的可行性。
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