DocumentCode
1757574
Title
Assessment and Optimization for Novel Gas Materials Through the Evaluation of Mixed Response Surface Models
Author
Bertocci, Francesco ; Fort, Ada ; Vignoli, Valerio ; Shahin, Luay ; Mugnaini, Marco ; Berni, Rossella
Author_Institution
Dept. of Inf. Eng. & Math., Univ. of Siena, Siena, Italy
Volume
64
Issue
4
fYear
2015
fDate
42095
Firstpage
1084
Lastpage
1092
Abstract
In this paper, an innovative methodology aimed at improving the development of novel gas sensors through a process optimization is carried out by applying mixed response surface (RS) models. High accuracy measurements of new conductometric metal oxide gas sensors, obtained by an efficient control of the working conditions, are gathered. The response of metal-oxide-semiconductor gas sensors changes significantly when the sensors operate at different temperatures and target gas concentrations. To consider all the sources of variability there involved, the RS methodology was applied, including random effects, to improve and optimize the performance of these new gas sensors. More precisely, the optimization is performed exploiting a limited number of observations, systematically collected with an ad hoc measurement system, and it considers external sources of variability, satisfying at the same time stringent requirements. Furthermore, the statistical results and the relative assessment of novel gas materials are obtained by considering fixed as well as random effects, where random variables are considered for better controlling the optimization step.
Keywords
chemical variables measurement; gas sensors; optimisation; random processes; response surface methodology; statistical analysis; RS model; ad hoc measurement system; conductometric metal oxide gas sensor; gas material; metal-oxide-semiconductor gas sensor; mixed response surface model; optimization; random effect; statistical analysis; target gas concentration; Arrays; Gas detectors; Materials; Optimization; Temperature measurement; Temperature sensors; Carbon monoxide (CO) detection; electronic nose; metal--oxide--semiconductors (MOXs); metal???oxide???semiconductors (MOXs); process optimization; response surface (RS) methodology; response surface (RS) methodology.;
fLanguage
English
Journal_Title
Instrumentation and Measurement, IEEE Transactions on
Publisher
ieee
ISSN
0018-9456
Type
jour
DOI
10.1109/TIM.2014.2364106
Filename
6985661
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