DocumentCode :
1762168
Title :
Role of Exposure and Recovery Transients in Classification of Gases/Odors With Thick Film Sensor Array
Author :
Sunny ; Kumar, Vipin ; Mishra, V.N. ; Dwivedi, Raaz ; Das, R.R.
Author_Institution :
Dept. of Electron. Eng., Indian Inst. of Technol. (Banaras Hindu Univ.), Varanasi, India
Volume :
13
Issue :
6
fYear :
2014
fDate :
Nov. 2014
Firstpage :
1266
Lastpage :
1272
Abstract :
In the present study, the effect of exposure (falling transients) and recovery (rising transients) responses of thick film gas sensor array on the classification and quantification accuracy of gas sensing system has been studied. The exposure and recovery data were extracted from the already published dynamic responses of a thick film gas sensor array. These datasets were individually fed to the multilayer feed-forward neural network with back propagation (BPNN) algorithm. The classification accuracy obtained for exposure responses was 81.2% while 84.3% for recovery responses. The same trend was obtained after applying principal component analysis, and our newly proposed average slope multiplication (ASM) feature techniques for data preprocessing. ASM transformed data showed 93.7% and 95.8% classification accuracy for exposure responses and recovery data, respectively. The simultaneous quantification results also followed the same trend, where ASM transformed data provided maximum 89.6% and 91.6% accuracy for exposure and recovery data, respectively, with relatively very less number of epochs required for network learning with simpler neural architecture. Thus, recovery or response readings alone can be used with the proposed ASM feature technique to get promising results in gas identification and/or quantification system. This can reduce data complexity, save computational time and, thus, can help in realizing real time gas sensing systems.
Keywords :
array signal processing; backpropagation; dynamic response; feature extraction; feedforward neural nets; gas sensors; neural net architecture; principal component analysis; sensor arrays; signal classification; ASM feature techniques; BPNN algorithm; average slope multiplication feature techniques; back propagation neural network algorithm; classification accuracy; data preprocessing; dynamic responses; exposure data; falling transients; gas sensing system; gases classification; multilayer feedforward neural network; network learning; neural architecture; odor classification; principal component analysis; recovery data; recovery transients; rising transients; thick film gas sensor array; Accuracy; Arrays; Gases; Neurons; Principal component analysis; Thick film sensors; Transient analysis; Average slope; Average slope (AS); cross validation; dynamic response; gas sensor array; neural classifier; thick film;
fLanguage :
English
Journal_Title :
Nanotechnology, IEEE Transactions on
Publisher :
ieee
ISSN :
1536-125X
Type :
jour
DOI :
10.1109/TNANO.2014.2361605
Filename :
6917047
Link To Document :
بازگشت