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A novel sensor feature extraction based on kernel entropy component analysis for discrimination of indoor air contaminants

机译:基于核熵成分分析的新型传感器特征提取可判别室内空气污染物

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摘要

Component analysis techniques for feature extraction in multi-sensor system (electronic nose) have been studied in this paper. A novel nonlinear kernel based Renyi entropy component analysis method is presented to address the feature extraction problem in sensor array and improve the odor recognition performance of E-nose. Specifically, a kernel entropy component analysis (KECA) as a nonlinear dimension reduction technique based on the Renyi entropy criterion is presented in this paper. In terms of the popular support vector machine (SVM) learning technique, a joint KECA-SVM framework is proposed as a system for nonlinear feature extraction and multi-class gases recognition in E-nose community. In particular, the comparisons with PCA, KPCA and ICA based component analysis methods that select the principal components with respect to the largest eigen-values or correlation have been fully explored. Experimental results on formaldehyde, benzene, toluene, carbon monoxide, ammonia and nitrogen dioxide demonstrate that the KECA-SVM method outperforms other methods in classification performance of E-nose. The MATLAB implementation of this work is available online at http://www.escience.cn/people/lei/index.html (C) 2015 Elsevier B.V. All rights reserved.
机译:本文研究了用于多传感器系统(电子鼻)中特征提取的成分分析技术。提出了一种基于非线性核的Renyi熵成分分析方法,以解决传感器阵列中的特征提取问题,提高电子鼻的气味识别性能。具体而言,本文提出了一种基于仁义熵准则的核熵分量分析(KECA)作为非线性降维技术。根据流行的支持向量机(SVM)学习技术,提出了一个联合的KECA-SVM框架作为E-nose社区中非线性特征提取和多类气体识别的系统。特别是,已经充分探索了与基于PCA,KPCA和ICA的成分分析方法的比较,该方法针对最大特征值或相关性选择主要成分。对甲醛,苯,甲苯,一氧化碳,氨和二氧化氮的实验结果表明,KECA-SVM方法在电子鼻的分类性能方面优于其他方法。可在http://www.escience.cn/people/lei/index.html(C)2015 Elsevier B.V.在线获得该工作的MATLAB实现。保留所有权利。

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