Mixed vapour identification using partition column-QCMs and Artificial Neural Network

M. Rivai, A. Arifin, Eva Inaiyah Agustin
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引用次数: 12

Abstract

This Paper presents the identification of mixed vapour using electronic nose system composed of Quartz Crystal Microbalance (QCM) sensor array and a partition column of gas chromatography. The polymer coated QCMs produced a specific frequency shift. The data set was processed by an Artificial Neural Network using Backpropagation algorithm as a pattern recognition. The result showed that this equipment was able to identify five types of vapours namely benzene, acetone, isopropyl alcohol, non-polar and polar mixture (i.e. benzene and acetone), and also polar and polar mixture (i.e. isopropyl alcohol and acetone) with the identification rate of 96%.
基于分区柱- qcm和人工神经网络的混合蒸汽识别
本文介绍了用石英晶体微天平(QCM)传感器阵列和气相色谱隔板柱组成的电子鼻系统对混合蒸汽进行鉴别。聚合物涂层的qcm产生了特定的频移。采用反向传播算法对数据集进行人工神经网络处理作为模式识别。结果表明,该装置能够对苯、丙酮、异丙醇、非极性和极性混合物(即苯和丙酮)以及极性和极性混合物(即异丙醇和丙酮)五种蒸汽进行识别,识别率为96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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