Quantification of toxic metals using machine learning techniques and spark emission spectroscopy

<p>The United States Environmental Protection Agency (US EPA) list of hazardous air pollutants (HAPs) includes toxic metal suspected or associated with development of cancer. Traditional techniques for detecting and quantifying toxic metals in the atmosphere are either not real time, hindering...

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Main Authors: S. A. Davari, A. S. Wexler
Format: Article
Language:English
Published: Copernicus Publications 2020-10-01
Series:Atmospheric Measurement Techniques
Online Access:https://amt.copernicus.org/articles/13/5369/2020/amt-13-5369-2020.pdf
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spelling doaj-dc3a9fc539e44bcd8a7beb5eb4a6e4562020-11-25T03:29:22ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482020-10-01135369537710.5194/amt-13-5369-2020Quantification of toxic metals using machine learning techniques and spark emission spectroscopyS. A. Davari0A. S. Wexler1A. S. Wexler2A. S. Wexler3Air Quality Research Center (AQRC), University of California, Davis, 95616, Davis, USAAir Quality Research Center (AQRC), University of California, Davis, 95616, Davis, USADepartment of Mechanical and Aerospace Engineering, Civil and Environmental Engineering, University of California, Davis, 95616, Davis, USALand, Air and Water Resources, University of California, Davis, 95616, Davis, USA<p>The United States Environmental Protection Agency (US EPA) list of hazardous air pollutants (HAPs) includes toxic metal suspected or associated with development of cancer. Traditional techniques for detecting and quantifying toxic metals in the atmosphere are either not real time, hindering identification of sources, or limited by instrument costs. Spark emission spectroscopy is a promising and cost-effective technique that can be used for analyzing toxic metals in real time. Here, we have developed a cost-effective spark emission spectroscopy system to quantify the concentration of toxic metals targeted by the US EPA. Specifically, Cr, Cu, Ni, and Pb solutions were diluted and deposited on the ground electrode of the spark emission system. The least absolute shrinkage and selection operator (LASSO) was optimized and employed to detect useful features from the spark-generated plasma emissions. The optimized model was able to detect atomic emission lines along with other features to build a regression model that predicts the concentration of toxic metals from the observed spectra. The limits of detections (LODs) were estimated using the detected features and compared to the traditional single-feature approach. LASSO is capable of detecting highly sensitive features in the input spectrum; however, for some toxic metals the single-feature LOD marginally outperforms LASSO LOD. The combination of low-cost instruments with advanced machine learning techniques for data analysis could pave the path forward for data-driven solutions to costly measurements.</p>https://amt.copernicus.org/articles/13/5369/2020/amt-13-5369-2020.pdf
collection DOAJ
language English
format Article
sources DOAJ
author S. A. Davari
A. S. Wexler
A. S. Wexler
A. S. Wexler
spellingShingle S. A. Davari
A. S. Wexler
A. S. Wexler
A. S. Wexler
Quantification of toxic metals using machine learning techniques and spark emission spectroscopy
Atmospheric Measurement Techniques
author_facet S. A. Davari
A. S. Wexler
A. S. Wexler
A. S. Wexler
author_sort S. A. Davari
title Quantification of toxic metals using machine learning techniques and spark emission spectroscopy
title_short Quantification of toxic metals using machine learning techniques and spark emission spectroscopy
title_full Quantification of toxic metals using machine learning techniques and spark emission spectroscopy
title_fullStr Quantification of toxic metals using machine learning techniques and spark emission spectroscopy
title_full_unstemmed Quantification of toxic metals using machine learning techniques and spark emission spectroscopy
title_sort quantification of toxic metals using machine learning techniques and spark emission spectroscopy
publisher Copernicus Publications
series Atmospheric Measurement Techniques
issn 1867-1381
1867-8548
publishDate 2020-10-01
description <p>The United States Environmental Protection Agency (US EPA) list of hazardous air pollutants (HAPs) includes toxic metal suspected or associated with development of cancer. Traditional techniques for detecting and quantifying toxic metals in the atmosphere are either not real time, hindering identification of sources, or limited by instrument costs. Spark emission spectroscopy is a promising and cost-effective technique that can be used for analyzing toxic metals in real time. Here, we have developed a cost-effective spark emission spectroscopy system to quantify the concentration of toxic metals targeted by the US EPA. Specifically, Cr, Cu, Ni, and Pb solutions were diluted and deposited on the ground electrode of the spark emission system. The least absolute shrinkage and selection operator (LASSO) was optimized and employed to detect useful features from the spark-generated plasma emissions. The optimized model was able to detect atomic emission lines along with other features to build a regression model that predicts the concentration of toxic metals from the observed spectra. The limits of detections (LODs) were estimated using the detected features and compared to the traditional single-feature approach. LASSO is capable of detecting highly sensitive features in the input spectrum; however, for some toxic metals the single-feature LOD marginally outperforms LASSO LOD. The combination of low-cost instruments with advanced machine learning techniques for data analysis could pave the path forward for data-driven solutions to costly measurements.</p>
url https://amt.copernicus.org/articles/13/5369/2020/amt-13-5369-2020.pdf
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