Cargando…

An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy

We demonstrate the successful implementation of an artificial neural network (ANN) to eliminate detrimental spectral shifts imposed in the measurement of laser absorption spectrometers (LASs). Since LASs rely on the analysis of the spectral characteristics of biological and chemical molecules, their...

Descripción completa

Detalles Bibliográficos
Autores principales: Chin, Sanghoon, Van Zaen, Jérôme, Denis, Séverine, Muntané, Enric, Schröder, Stephan, Martin, Hans, Balet, Laurent, Lecomte, Steve
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10575262/
https://www.ncbi.nlm.nih.gov/pubmed/37837060
http://dx.doi.org/10.3390/s23198232
_version_ 1785120883883376640
author Chin, Sanghoon
Van Zaen, Jérôme
Denis, Séverine
Muntané, Enric
Schröder, Stephan
Martin, Hans
Balet, Laurent
Lecomte, Steve
author_facet Chin, Sanghoon
Van Zaen, Jérôme
Denis, Séverine
Muntané, Enric
Schröder, Stephan
Martin, Hans
Balet, Laurent
Lecomte, Steve
author_sort Chin, Sanghoon
collection PubMed
description We demonstrate the successful implementation of an artificial neural network (ANN) to eliminate detrimental spectral shifts imposed in the measurement of laser absorption spectrometers (LASs). Since LASs rely on the analysis of the spectral characteristics of biological and chemical molecules, their accuracy and precision is especially prone to the presence of unwanted spectral shift in the measured molecular absorption spectrum over the reference spectrum. In this paper, an ANN was applied to a scanning grating-based mid-infrared trace gas sensing system, which suffers from temperature-induced spectral shifts. Using the HITRAN database, we generated synthetic gas absorbance spectra with random spectral shifts for training and validation. The ANN was trained with these synthetic spectra to identify the occurrence of spectral shifts. Our experimental verification unambiguously proves that such an ANN can be an excellent tool to accurately retrieve the gas concentration from imprecise or distorted spectra of gas absorption. Due to the global shift of the measured gas absorption spectrum, the accuracy of the retrieved gas concentration using a typical least-mean-squares fitting algorithm was considerably degraded by 40.3%. However, when the gas concentration of the same measurement dataset was predicted by the proposed multilayer perceptron network, the sensing accuracy significantly improved by reducing the error to less than ±1% while preserving the sensing sensitivity.
format Online
Article
Text
id pubmed-10575262
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-105752622023-10-14 An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy Chin, Sanghoon Van Zaen, Jérôme Denis, Séverine Muntané, Enric Schröder, Stephan Martin, Hans Balet, Laurent Lecomte, Steve Sensors (Basel) Article We demonstrate the successful implementation of an artificial neural network (ANN) to eliminate detrimental spectral shifts imposed in the measurement of laser absorption spectrometers (LASs). Since LASs rely on the analysis of the spectral characteristics of biological and chemical molecules, their accuracy and precision is especially prone to the presence of unwanted spectral shift in the measured molecular absorption spectrum over the reference spectrum. In this paper, an ANN was applied to a scanning grating-based mid-infrared trace gas sensing system, which suffers from temperature-induced spectral shifts. Using the HITRAN database, we generated synthetic gas absorbance spectra with random spectral shifts for training and validation. The ANN was trained with these synthetic spectra to identify the occurrence of spectral shifts. Our experimental verification unambiguously proves that such an ANN can be an excellent tool to accurately retrieve the gas concentration from imprecise or distorted spectra of gas absorption. Due to the global shift of the measured gas absorption spectrum, the accuracy of the retrieved gas concentration using a typical least-mean-squares fitting algorithm was considerably degraded by 40.3%. However, when the gas concentration of the same measurement dataset was predicted by the proposed multilayer perceptron network, the sensing accuracy significantly improved by reducing the error to less than ±1% while preserving the sensing sensitivity. MDPI 2023-10-03 /pmc/articles/PMC10575262/ /pubmed/37837060 http://dx.doi.org/10.3390/s23198232 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Chin, Sanghoon
Van Zaen, Jérôme
Denis, Séverine
Muntané, Enric
Schröder, Stephan
Martin, Hans
Balet, Laurent
Lecomte, Steve
An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy
title An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy
title_full An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy
title_fullStr An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy
title_full_unstemmed An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy
title_short An Artificial Neural Network to Eliminate the Detrimental Spectral Shift on Mid-Infrared Gas Spectroscopy
title_sort artificial neural network to eliminate the detrimental spectral shift on mid-infrared gas spectroscopy
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10575262/
https://www.ncbi.nlm.nih.gov/pubmed/37837060
http://dx.doi.org/10.3390/s23198232
work_keys_str_mv AT chinsanghoon anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT vanzaenjerome anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT denisseverine anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT muntaneenric anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT schroderstephan anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT martinhans anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT baletlaurent anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT lecomtesteve anartificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT chinsanghoon artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT vanzaenjerome artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT denisseverine artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT muntaneenric artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT schroderstephan artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT martinhans artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT baletlaurent artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy
AT lecomtesteve artificialneuralnetworktoeliminatethedetrimentalspectralshiftonmidinfraredgasspectroscopy