Feature Ensemble Learning for Sensor Array Data Classification Under Low-Concentration Gas

被引:14
作者
Zhao, Leilei [1 ]
Tian, Fengchun [2 ]
Qian, Junhui [1 ]
Li, Hantao [1 ]
Wu, Zhiyuan [1 ]
机构
[1] Chongqing Univ, Sch Microelect & Commun Engn, Chongqing 400044, Peoples R China
[2] Chongqing Univ, Chongqing Key Lab Biopercept & Intelligent Inform, Chongqing 400044, Peoples R China
关键词
Extreme learning machine (ELM); feature ensemble learning; gas sensor array (GSA); low-concentration gases classification; overfitting problem; ELECTRONIC NOSE; FEATURE-EXTRACTION;
D O I
10.1109/TIM.2023.3251416
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Gas sensor array (GSA) data usually has high-dimensional features and a small sample size. When a classifier is directly used for GSA data classification, it is prone to overfitting and has a high time cost. The traditional solution is to perform feature dimensionality reduction before classification. However, selecting a suitable dimensionality reduction method is time-consuming and laborious, and some features useful for classification may be lost after dimensionality reduction, especially for the weak sensor response data to low-concentration gases. In this article, we proposed a feature ensemble-based extreme learning machine framework (FE-ELM) for GSA data classification. In FE-ELM, downsampling is first performed on the time series of each sensor, and then the downsampled features of different sensors are combined to obtain fused feature subsets. Next, a base ELM is trained independently on each fused feature subset with all training samples by solving the least-squares problem. The final FE-ELM predictions for input samples are obtained by voting the prediction results of all base ELMs. Compared with traditional methods, the proposed method solves the overfitting problem and can be directly used for GSA data classification without prior feature dimension reduction. Furthermore, the ensemble of all base classifiers with little loss of original features enables the proposed FE-ELM to have a more efficient and robust classification performance. Experimental results on data from both homemade GSA under low-concentration gases (ppb) and publicly available confirm that the proposed FE-ELM exceeds traditional methods and extends the detection limit of the sensor array.
引用
收藏
页数:9
相关论文
共 35 条
[1]   Extracting features from phase space of EEG signals in brain-computer interfaces [J].
Fang, Yonghui ;
Chen, Minyou ;
Zheng, Xufei .
NEUROCOMPUTING, 2015, 151 :1477-1485
[2]   Deep Neural Networks for Sensor-Based Human Activity Recognition Using Selective Kernel Convolution [J].
Gao, Wenbin ;
Zhang, Lei ;
Huang, Wenbo ;
Min, Fuhong ;
He, Jun ;
Song, Aiguo .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70
[3]   ODRP: A Deep Learning Framework for Odor Descriptor Rating Prediction Using Electronic Nose [J].
Guo, Juan ;
Cheng, Yu ;
Luo, Dehan ;
Wong, Kin-Yeung ;
Hung, Kevin ;
Li, Xin .
IEEE SENSORS JOURNAL, 2021, 21 (13) :15012-15021
[4]   NEURAL NETWORK ENSEMBLES [J].
HANSEN, LK ;
SALAMON, P .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 1990, 12 (10) :993-1001
[5]   A European Respiratory Society technical standard: exhaled biomarkers in lung disease [J].
Horvath, Ildiko ;
Barnes, Peter J. ;
Loukides, Stelios ;
Sterk, Peter J. ;
Hogman, Marieann ;
Olin, Anna-Carin ;
Amann, Anton ;
Antus, Balazs ;
Baraldi, Eugenio ;
Bikov, Andras ;
Boots, Agnes W. ;
Bos, Lieuwe D. ;
Brinkman, Paul ;
Bucca, Caterina ;
Carpagnano, Giovanna E. ;
Corradi, Massimo ;
Cristescu, Simona ;
de Jongste, Johan C. ;
Dinh-Xuan, Anh-Tuan ;
Dompeling, Edward ;
Fens, Niki ;
Fowler, Stephen ;
Hohlfeld, Jens M. ;
Holz, Olaf ;
Jobsis, Quirijn ;
Van De Kant, Kim ;
Knobel, Hugo H. ;
Kostikas, Konstantinos ;
Lehtimaki, Lauri ;
Lundberg, Jon ;
Montuschi, Paolo ;
Van Muylem, Alain ;
Pennazza, Giorgio ;
Reinhold, Petra ;
Ricciardolo, Fabio L. M. ;
Rosias, Philippe ;
Santonico, Marco ;
van der Schee, Marc P. ;
van Schooten, Frederik-Jan ;
Spanevello, Antonio ;
Tonia, Thomy ;
Vink, Teunis J. .
EUROPEAN RESPIRATORY JOURNAL, 2017, 49 (04)
[6]   Trends in extreme learning machines: A review [J].
Huang, Gao ;
Huang, Guang-Bin ;
Song, Shiji ;
You, Keyou .
NEURAL NETWORKS, 2015, 61 :32-48
[7]   Extreme Learning Machine for Regression and Multiclass Classification [J].
Huang, Guang-Bin ;
Zhou, Hongming ;
Ding, Xiaojian ;
Zhang, Rui .
IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS PART B-CYBERNETICS, 2012, 42 (02) :513-529
[8]   Channel-Equalization-HAR: A Light-weight Convolutional Neural Network for Wearable Sensor Based Human Activity Recognition [J].
Huang, Wenbo ;
Zhang, Lei ;
Wu, Hao ;
Min, Fuhong ;
Song, Aiguo .
IEEE TRANSACTIONS ON MOBILE COMPUTING, 2023, 22 (09) :5064-5077
[9]   Shallow Convolutional Neural Networks for Human Activity Recognition Using Wearable Sensors [J].
Huang, Wenbo ;
Zhang, Lei ;
Gao, Wenbin ;
Min, Fuhong ;
He, Jun .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70
[10]   Chemical sensors for electronic nose systems [J].
James, D ;
Scott, SM ;
Ali, Z ;
O'Hare, WT .
MICROCHIMICA ACTA, 2005, 149 (1-2) :1-17