Title
Online Sensor Drift Compensation for E-Nose Systems Using Domain Adaptation and Extreme Learning Machine.
Abstract
Sensor drift is a common issue in E-Nose systems and various drift compensation methods have received fruitful results in recent years. Although the accuracy for recognizing diverse gases under drift conditions has been largely enhanced, few of these methods considered online processing scenarios. In this paper, we focus on building online drift compensation model by transforming two domain adaptation based methods into their online learning versions, which allow the recognition models to adapt to the changes of sensor responses in a time-efficient manner without losing the high accuracy. Experimental results using three different settings confirm that the proposed methods save large processing time when compared with their offline versions, and outperform other drift compensation methods in recognition accuracy.
Year
DOI
Venue
2018
10.3390/s18030742
SENSORS
Keywords
Field
DocType
gas sensor,drift compensation,domain adaptation,online learning,extreme learning machine
Compensation methods,Online learning,Extreme learning machine,Domain adaptation,Electronic engineering,Artificial intelligence,Engineering,Online processing,Machine learning
Journal
Volume
Issue
ISSN
18
3.0
1424-8220
Citations 
PageRank 
References 
1
0.34
17
Authors
5
Name
Order
Citations
PageRank
Zhiyuan Ma1279.26
Guangchun Luo221225.81
Ke Qin3457.74
Nan Wang49327.47
Wei-na Niu583.26