Title of article
Two-dimensional wavelet transform feature extraction for porous silicon chemical sensors Original Research Article
Author/Authors
José S. Murgu?a، نويسنده , , Alexander Vergara، نويسنده , , Cecilia Vargas-Olmos، نويسنده , , Travis J. Wong، نويسنده , , Jordi Fonollosa، نويسنده , , Ram?n Huerta، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
15
From page
1
To page
15
Abstract
Designing reliable, fast responding, highly sensitive, and low-power consuming chemo-sensory systems has long been a major goal in chemo-sensing. This goal, however, presents a difficult challenge because having a set of chemo-sensory detectors exhibiting all these aforementioned ideal conditions are still largely un-realizable to-date. This paper presents a unique perspective on capturing more in-depth insights into the physicochemical interactions of two distinct, selectively chemically modified porous silicon (pSi) film-based optical gas sensors by implementing an innovative, based on signal processing methodology, namely the two-dimensional discrete wavelet transform. Specifically, the method consists of using the two-dimensional discrete wavelet transform as a feature extraction method to capture the non-stationary behavior from the bi-dimensional pSi rugate sensor response. Utilizing a comprehensive set of measurements collected from each of the aforementioned optically based chemical sensors, we evaluate the significance of our approach on a complex, six-dimensional chemical analyte discrimination/quantification task problem. Due to the bi-dimensional aspects naturally governing the optical sensor response to chemical analytes, our findings provide evidence that the proposed feature extractor strategy may be a valuable tool to deepen our understanding of the performance of optically based chemical sensors as well as an important step toward attaining their implementation in more realistic chemo-sensing applications.
Keywords
Optical porous silicon gas sensor , Feature extraction , Two-dimensional wavelet transform , Gas discrimination and quantification , support vector machines
Journal title
Analytica Chimica Acta
Serial Year
2013
Journal title
Analytica Chimica Acta
Record number
1029479
Link To Document