Exploring Informative Response Features of Two Temperature Modulated Gas Sensors at a Wide Range of Relative Humidity

Hannaneh Mahdavi, S. Rahbarpour, S. Hosseini-Golgoo, H. Jamaati
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引用次数: 1

Abstract

The response signals of temperature modulated gas sensors contain essential information about measured target gas that must be separated from other correlated, redundant, or noisy data. This issue becomes more critical when variations in environmental factors such as relative humidity of target gas or background odors affect the sensor response. Conductance values of two electronic noses based on a single TGS-2602 and a single FIS SP-53B sensors to four gases and clean air at a wide range of relative humidity levels were measured for analyzing the response features. The role of each feature and increasing the number of features in the accuracy of an SVM classifier are investigated. A method is proposed based on removing non-informative features and compared to four conventional feature selection techniques. It is shown that our proposed scheme with a simple SVM classifier results in 96.7% detection accuracy for TGS-2602 and 98.8% for FIS SP-53B, which is up to the accuracy value of common or advanced methods of selecting features. It is concluded that employing feature selection techniques is more beneficial for the TGS-2602 dataset, which had more destructive features than FIS SP-53B. In conclusion, when working with an E-Nose dataset, it is first necessary to explore the important features to find out whether feature selection is required or not, and if needed, which feature selection method provides the best accuracy.
两种温度调制气体传感器在大相对湿度范围内的信息响应特性研究
温度调制气体传感器的响应信号包含有关被测目标气体的基本信息,这些信息必须与其他相关的、冗余的或有噪声的数据分开。当环境因素(如目标气体的相对湿度或背景气味)的变化影响传感器响应时,这个问题变得更加关键。测量了基于单个TGS-2602和单个FIS SP-53B传感器的两个电子鼻对四种气体和清洁空气在宽相对湿度水平下的电导值,分析了响应特征。研究了每个特征的作用以及增加特征数量对SVM分类器精度的影响。提出了一种基于去除非信息特征的方法,并与四种传统的特征选择技术进行了比较。结果表明,采用简单SVM分类器的方案对TGS-2602的检测准确率为96.7%,对FIS SP-53B的检测准确率为98.8%,达到了常用或高级特征选择方法的精度值。结果表明,与FIS SP-53B相比,TGS-2602数据集具有更多的破坏性特征,采用特征选择技术对TGS-2602数据集更有利。综上所述,在处理E-Nose数据集时,首先有必要探索重要特征,以确定是否需要特征选择,如果需要,哪种特征选择方法提供最好的准确性。
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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