In order to efficiently detect four drug precursor molecules in presence of interfering species and background air, using a EC-QCLPAS sensor operating in the mid-infrared region, a complex strategy of spectral response simulation has been developed. In this context, spectra of gases from literature databases have been collected, denoised by means of the Wavelet Transform and mixed together according to a concentration matrix, which was specifically designed to represent a comprehensive combination of possible realistic cases. To scale database spectra to the appropriate concentration levels, an ad-hoc algorithm based on a sigmoidal transfer function has been used. In this way the baseline shape and intensity is preserved. Afterwards, a preliminary wavelength selection has been carried out to exclude noisy regions. The optimal range has finally been defined by maximizing the classification efficiency for all the target gases by means of Partial Least Squares-Discriminant Analysis.

A Feature Selection Strategy for the Development of a New Drug Sensing SystemSensors / Ulrici, Alessandro; Calderisi, Marco; Seeber, Renato; J., Uotila; A., Secchi; A. M., Fiorello; M., Dispenza. - STAMPA. - 162:(2014), pp. 183-187. ( 1st National Conference on Sensors Rome, ita 15-17 Febbraio 2012) [10.1007/978-1-4614-3860-1_32].

A Feature Selection Strategy for the Development of a New Drug Sensing SystemSensors

ULRICI, Alessandro
;
CALDERISI, MARCO;SEEBER, Renato;
2014

Abstract

In order to efficiently detect four drug precursor molecules in presence of interfering species and background air, using a EC-QCLPAS sensor operating in the mid-infrared region, a complex strategy of spectral response simulation has been developed. In this context, spectra of gases from literature databases have been collected, denoised by means of the Wavelet Transform and mixed together according to a concentration matrix, which was specifically designed to represent a comprehensive combination of possible realistic cases. To scale database spectra to the appropriate concentration levels, an ad-hoc algorithm based on a sigmoidal transfer function has been used. In this way the baseline shape and intensity is preserved. Afterwards, a preliminary wavelength selection has been carried out to exclude noisy regions. The optimal range has finally been defined by maximizing the classification efficiency for all the target gases by means of Partial Least Squares-Discriminant Analysis.
2014
Inglese
1st National Conference on Sensors
Rome, ita
15-17 Febbraio 2012
Lecture Notes in Electrical EngineeringSensors
162
183
187
5
9781461438595
9781461438601
Springer
STATI UNITI D'AMERICA
New York
Nazionale
Contributo
Feature Selection; Drug Precursors
Ulrici, Alessandro; Calderisi, Marco; Seeber, Renato; J., Uotila; A., Secchi; A. M., Fiorello; M., Dispenza
Atti di CONVEGNO::Relazione in Atti di Convegno
273
7
A Feature Selection Strategy for the Development of a New Drug Sensing SystemSensors / Ulrici, Alessandro; Calderisi, Marco; Seeber, Renato; J., Uotila; A., Secchi; A. M., Fiorello; M., Dispenza. - STAMPA. - 162:(2014), pp. 183-187. ( 1st National Conference on Sensors Rome, ita 15-17 Febbraio 2012) [10.1007/978-1-4614-3860-1_32].
open
info:eu-repo/semantics/conferenceObject
   CUSTOM - Drugs And PreCUrsor Sensing By ComplemenTing Low COst Multiple Techniques
   FP7
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/995116
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