作者
AHMAD KHUSRO
发表日期
2015
机构
JAMIA MILLIA ISLAMIA NEW DELHI
简介
Quantitative analysis of gases, by means of semiconductor sensor arrays and pattern-recognition techniques such as artificial neural networks, has been the goal of a great deal of work over the last few years. However, the lack of selectivity, repeatability and drifts of the sensors, have limited the applications of these systems to qualitative or semi-quantitative gas analysis. While the steady-state response of the sensors is usually the signal to be processed in such analysis systems, our method consists of processing both, transient and steady-state information. The sensor transient behaviour is characterised through the measure of its conductance rise time (Tr), when there is a step change in the gas concentration. Tr is characteristic of each gas/sensor pair, concentration-independent and shows higher repeatability than the steady state measurements. An array of four thick-film tin oxide gas sensors and pattern-recognition techniques are used to discriminate and quantify among ethanol, toluene and o-xylene [concentration range: 25, 50 and 100 ppm].
The classifier techniques among which I am going to draw the comparison among them are-PRINCIPAL COMPONENT ANALYSIS (PCA), LINEAR DISCRIMINANT ANALYSIS (LDA), SUPPORT VECTOR MACHINES (SVM) and NAÏVE BAYES CLASSIFIER. The performance evaluation of these techniques has been studied and the comparison is also drawn among them.
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