利用神经网络方法在电子鼻系统中实现预浓缩器对低浓度蒸汽的识别

M. Rivai, Eddy Lybrech Talakua
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引用次数: 7

摘要

在环境监测、有害物质检测、调味食品或饮料生产等各种应用中,都需要具有高灵敏度和判别能力的蒸汽识别系统。目前,由气体传感器阵列和神经网络模式识别组成的电子鼻技术对低浓度气体的识别效果不佳。在本研究中,使用预浓缩器来提高蒸汽浓度,使电子鼻系统获得高灵敏度和选择性。实验结果表明,配备预浓缩器的电子鼻系统能够成功地识别低浓度的乙醇、苯和丙酮蒸气。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The implementation of preconcentrator in electronic nose system to identify low concentration of vapors using neural network method
Vapor identification system having high sensitive and discriminative capabilities is much needed in various applications such as in monitoring of environmental condition, detecting of hazardous substances, and producing of flavored foods or drinks and others. Nowadays, electronic nose technology which consists of gas sensor array and neural network pattern recognition could not recognize well for the low concentration vapors. In this research, the implementation of a preconcentrator was used to increase the vapor concentration allowing the electronic nose system to gain its high sensitivity and selectivity. The experimental result showed that the electronic nose system equipped with the preconcentrator could distinguish ethanol, benzene and acetone vapors in low concentrations successfully.
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