Automated identification of local contamination in remote atmospheric composition time series

A common challenge of atmospheric measurements in remote environments is to identify pollution from nearby activities that interfere with the purpose of the observations. Pollution, particularly from combustion, typically reveals itself in enhanced particle- , CO2 or CO concentrations and affects ma...

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Main Authors: Beck, Ivo, Baccarini, Andrea, Angot, Hélène, Dada, Lubna, Quéléver, Lauriane, Jokinen, Tuija, Laurila, Tiia, Lampimaki, Markus, Boyer, Matthew, Gong, Xianda, Bukowiecki, Nicolas, Gysel-Beer, Martin, Petäjä, Tuukka, Wang, Jian, Schmale, Julia
Format: Text
Language:unknown
Published: 2023
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Online Access:http://infoscience.epfl.ch/record/300255
https://doi.org/10.5281/zenodo.5761101
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spelling ftinfoscience:oai:infoscience.epfl.ch:300255 2024-01-14T10:04:44+01:00 Automated identification of local contamination in remote atmospheric composition time series Beck, Ivo Baccarini, Andrea Angot, Hélène Dada, Lubna Quéléver, Lauriane Jokinen, Tuija Laurila, Tiia Lampimaki, Markus Boyer, Matthew Gong, Xianda Bukowiecki, Nicolas Gysel-Beer, Martin Petäjä, Tuukka Wang, Jian Schmale, Julia 2023-02-17T09:38:02Z http://infoscience.epfl.ch/record/300255 https://doi.org/10.5281/zenodo.5761101 unknown http://infoscience.epfl.ch/record/300255 https://doi.org/10.5281/zenodo.5761101 http://infoscience.epfl.ch/record/300255 Text 2023 ftinfoscience https://doi.org/10.5281/zenodo.5761101 2023-12-18T00:49:58Z A common challenge of atmospheric measurements in remote environments is to identify pollution from nearby activities that interfere with the purpose of the observations. Pollution, particularly from combustion, typically reveals itself in enhanced particle- , CO2 or CO concentrations and affects many atmospheric variables. It can vary in time scales from a few seconds to several hours. Here, we present an automated algorithm used to clean the year-long continuous (10s-time resolution) dataset of particle concentration measurements collected during the Multidisciplinary drifting Observatory for the Study of Arctic Climate (MOSAiC) expedition onboard RV Polarstern. We identify pollution in our dataset based on the gradient, i.e., time derivative, of the particle number concentration. If this gradient exceeds a certain threshold, the data is flagged as polluted. We describe the performance of the algorithm and compare it to other commonly-used techniques. This method has two main advantages: It allows the detection of pollution from both stationary and non-stationary sources, and polluted periods can be identified without a need for other datasets (e.g., wind direction or CO2 concentration). This algorithm will be made open-source and user-friendly to allow wide use in the MOSAiC and larger atmospheric chemistry community. Text Arctic EPFL Infoscience (Ecole Polytechnique Fédérale Lausanne) Arctic
institution Open Polar
collection EPFL Infoscience (Ecole Polytechnique Fédérale Lausanne)
op_collection_id ftinfoscience
language unknown
description A common challenge of atmospheric measurements in remote environments is to identify pollution from nearby activities that interfere with the purpose of the observations. Pollution, particularly from combustion, typically reveals itself in enhanced particle- , CO2 or CO concentrations and affects many atmospheric variables. It can vary in time scales from a few seconds to several hours. Here, we present an automated algorithm used to clean the year-long continuous (10s-time resolution) dataset of particle concentration measurements collected during the Multidisciplinary drifting Observatory for the Study of Arctic Climate (MOSAiC) expedition onboard RV Polarstern. We identify pollution in our dataset based on the gradient, i.e., time derivative, of the particle number concentration. If this gradient exceeds a certain threshold, the data is flagged as polluted. We describe the performance of the algorithm and compare it to other commonly-used techniques. This method has two main advantages: It allows the detection of pollution from both stationary and non-stationary sources, and polluted periods can be identified without a need for other datasets (e.g., wind direction or CO2 concentration). This algorithm will be made open-source and user-friendly to allow wide use in the MOSAiC and larger atmospheric chemistry community.
format Text
author Beck, Ivo
Baccarini, Andrea
Angot, Hélène
Dada, Lubna
Quéléver, Lauriane
Jokinen, Tuija
Laurila, Tiia
Lampimaki, Markus
Boyer, Matthew
Gong, Xianda
Bukowiecki, Nicolas
Gysel-Beer, Martin
Petäjä, Tuukka
Wang, Jian
Schmale, Julia
spellingShingle Beck, Ivo
Baccarini, Andrea
Angot, Hélène
Dada, Lubna
Quéléver, Lauriane
Jokinen, Tuija
Laurila, Tiia
Lampimaki, Markus
Boyer, Matthew
Gong, Xianda
Bukowiecki, Nicolas
Gysel-Beer, Martin
Petäjä, Tuukka
Wang, Jian
Schmale, Julia
Automated identification of local contamination in remote atmospheric composition time series
author_facet Beck, Ivo
Baccarini, Andrea
Angot, Hélène
Dada, Lubna
Quéléver, Lauriane
Jokinen, Tuija
Laurila, Tiia
Lampimaki, Markus
Boyer, Matthew
Gong, Xianda
Bukowiecki, Nicolas
Gysel-Beer, Martin
Petäjä, Tuukka
Wang, Jian
Schmale, Julia
author_sort Beck, Ivo
title Automated identification of local contamination in remote atmospheric composition time series
title_short Automated identification of local contamination in remote atmospheric composition time series
title_full Automated identification of local contamination in remote atmospheric composition time series
title_fullStr Automated identification of local contamination in remote atmospheric composition time series
title_full_unstemmed Automated identification of local contamination in remote atmospheric composition time series
title_sort automated identification of local contamination in remote atmospheric composition time series
publishDate 2023
url http://infoscience.epfl.ch/record/300255
https://doi.org/10.5281/zenodo.5761101
geographic Arctic
geographic_facet Arctic
genre Arctic
genre_facet Arctic
op_source http://infoscience.epfl.ch/record/300255
op_relation http://infoscience.epfl.ch/record/300255
https://doi.org/10.5281/zenodo.5761101
op_doi https://doi.org/10.5281/zenodo.5761101
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