基于化学计量学的电子鼻在猪油和橄榄油气味模式分类中的应用

Imam Tazi, M. Muthmainnah, S. Suyono, Avin Ainur, Fajrul Falah, Arum Sinda Santika
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引用次数: 3

摘要

设计了一种基于化学计量学的电子鼻,利用气味模式分类对猪油和橄榄油进行分析。电子鼻(电子鼻)是由来自半导体的几个化学传感器组合而成的。数据检索是通过汽化样品完成的,然后由传感器捕获并由电子鼻(电子鼻)识别。电子鼻的输出数据是每个传感器释放的电压。分析的样品为100%橄榄油、100%猪油以及橄榄油和猪油以50%:50%的比例混合。利用线性判别分析(LDA)方法进行模式分类的结果表明,各样本的聚类效果良好,第一判别函数值占87.9%,第二判别函数值占12.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CHEMOMETRIC-BASED ELECTRONIC NOSE APPLICATION TO PORK OIL AND OLIVE OIL USING THE ODOR PATTERN CLASSIFICATIONS
A chemometric-based electronic nose has designed for analyzing pork oil and olive oil  using the odor pattern classifications. The electronic nose (e-nose) built from a combination of several chemical sensors derived from a semiconductor. The data retrieval was done by vaporizing the sample, then being captured by the sensor and identified by the electronic nose (e-nose). The output data from the electronic nose is the voltage released by each sensor. The analyzed samples were 100% olive oil, 100% pork oil and a combination of olive oil and pork oil with a ratio of 50%: 50%. The result of pattern classification using linear discriminant analysis (LDA) method shows that each sample is clustered well with the percentage of first discriminant function value is 87,9% and second discriminant function is 12,1%.
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