Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4

This study deals with the problem of identifying atmospheric data influenced by local emissions that can result in spikes in time series of greenhouse gases and long-lived tracer measurements. We considered three spike detection methods known as coefficient of variation (COV), robust extraction of b...

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Published in:Atmospheric Measurement Techniques
Main Authors: Yazidi, Abdelhadi, Ramonet, Michel, Ciais, Philippe, Broquet, Gregoire, Pison, Isabelle, Abbaris, Amara, Brunner, Dominik, Conil, Sebastien, Delmotte, Marc, Gheusi, Francois, Guerin, Frederic, Hazan, Lynn, Kachroudi, Nesrine, Kouvarakis, Giorgos, Mihalopoulos, Nikolaos, Rivier, Leonard, Serça, Dominique
Format: Text
Language:English
Published: 2018
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Online Access:https://doi.org/10.5194/amt-11-1599-2018
https://amt.copernicus.org/articles/11/1599/2018/
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spelling ftcopernicus:oai:publications.copernicus.org:amt60390 2023-05-15T13:22:36+02:00 Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4 Yazidi, Abdelhadi Ramonet, Michel Ciais, Philippe Broquet, Gregoire Pison, Isabelle Abbaris, Amara Brunner, Dominik Conil, Sebastien Delmotte, Marc Gheusi, Francois Guerin, Frederic Hazan, Lynn Kachroudi, Nesrine Kouvarakis, Giorgos Mihalopoulos, Nikolaos Rivier, Leonard Serça, Dominique 2018-09-16 application/pdf https://doi.org/10.5194/amt-11-1599-2018 https://amt.copernicus.org/articles/11/1599/2018/ eng eng doi:10.5194/amt-11-1599-2018 https://amt.copernicus.org/articles/11/1599/2018/ eISSN: 1867-8548 Text 2018 ftcopernicus https://doi.org/10.5194/amt-11-1599-2018 2020-07-20T16:23:22Z This study deals with the problem of identifying atmospheric data influenced by local emissions that can result in spikes in time series of greenhouse gases and long-lived tracer measurements. We considered three spike detection methods known as coefficient of variation (COV), robust extraction of baseline signal (REBS) and standard deviation of the background (SD) to detect and filter positive spikes in continuous greenhouse gas time series from four monitoring stations representative of the European ICOS (Integrated Carbon Observation System) Research Infrastructure network. The results of the different methods are compared to each other and against a manual detection performed by station managers. Four stations were selected as test cases to apply the spike detection methods: a continental rural tower of 100 m height in eastern France (OPE), a high-mountain observatory in the south-west of France (PDM), a regional marine background site in Crete (FKL) and a marine clean-air background site in the Southern Hemisphere on Amsterdam Island (AMS). This selection allows us to address spike detection problems in time series with different variability. Two years of continuous measurements of CO 2 , CH 4 and CO were analysed. All methods were found to be able to detect short-term spikes (lasting from a few seconds to a few minutes) in the time series. Analysis of the results of each method leads us to exclude the COV method due to the requirement to arbitrarily specify an a priori percentage of rejected data in the time series, which may over- or underestimate the actual number of spikes. The two other methods freely determine the number of spikes for a given set of parameters, and the values of these parameters were calibrated to provide the best match with spikes known to reflect local emissions episodes that are well documented by the station managers. More than 96 % of the spikes manually identified by station managers were successfully detected both in the SD and the REBS methods after the best adjustment of parameter values. At PDM, measurements made by two analyzers located 200 m from each other allow us to confirm that the CH 4 spikes identified in one of the time series but not in the other correspond to a local source from a sewage treatment facility in one of the observatory buildings. From this experiment, we also found that the REBS method underestimates the number of positive anomalies in the CH 4 data caused by local sewage emissions. As a conclusion, we recommend the use of the SD method, which also appears to be the easiest one to implement in automatic data processing, used for the operational filtering of spikes in greenhouse gases time series at global and regional monitoring stations of networks like that of the ICOS atmosphere network. Text Amsterdam Island Copernicus Publications: E-Journals The Spike ENVELOPE(-37.317,-37.317,-54.017,-54.017) Atmospheric Measurement Techniques 11 3 1599 1614
institution Open Polar
collection Copernicus Publications: E-Journals
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language English
description This study deals with the problem of identifying atmospheric data influenced by local emissions that can result in spikes in time series of greenhouse gases and long-lived tracer measurements. We considered three spike detection methods known as coefficient of variation (COV), robust extraction of baseline signal (REBS) and standard deviation of the background (SD) to detect and filter positive spikes in continuous greenhouse gas time series from four monitoring stations representative of the European ICOS (Integrated Carbon Observation System) Research Infrastructure network. The results of the different methods are compared to each other and against a manual detection performed by station managers. Four stations were selected as test cases to apply the spike detection methods: a continental rural tower of 100 m height in eastern France (OPE), a high-mountain observatory in the south-west of France (PDM), a regional marine background site in Crete (FKL) and a marine clean-air background site in the Southern Hemisphere on Amsterdam Island (AMS). This selection allows us to address spike detection problems in time series with different variability. Two years of continuous measurements of CO 2 , CH 4 and CO were analysed. All methods were found to be able to detect short-term spikes (lasting from a few seconds to a few minutes) in the time series. Analysis of the results of each method leads us to exclude the COV method due to the requirement to arbitrarily specify an a priori percentage of rejected data in the time series, which may over- or underestimate the actual number of spikes. The two other methods freely determine the number of spikes for a given set of parameters, and the values of these parameters were calibrated to provide the best match with spikes known to reflect local emissions episodes that are well documented by the station managers. More than 96 % of the spikes manually identified by station managers were successfully detected both in the SD and the REBS methods after the best adjustment of parameter values. At PDM, measurements made by two analyzers located 200 m from each other allow us to confirm that the CH 4 spikes identified in one of the time series but not in the other correspond to a local source from a sewage treatment facility in one of the observatory buildings. From this experiment, we also found that the REBS method underestimates the number of positive anomalies in the CH 4 data caused by local sewage emissions. As a conclusion, we recommend the use of the SD method, which also appears to be the easiest one to implement in automatic data processing, used for the operational filtering of spikes in greenhouse gases time series at global and regional monitoring stations of networks like that of the ICOS atmosphere network.
format Text
author Yazidi, Abdelhadi
Ramonet, Michel
Ciais, Philippe
Broquet, Gregoire
Pison, Isabelle
Abbaris, Amara
Brunner, Dominik
Conil, Sebastien
Delmotte, Marc
Gheusi, Francois
Guerin, Frederic
Hazan, Lynn
Kachroudi, Nesrine
Kouvarakis, Giorgos
Mihalopoulos, Nikolaos
Rivier, Leonard
Serça, Dominique
spellingShingle Yazidi, Abdelhadi
Ramonet, Michel
Ciais, Philippe
Broquet, Gregoire
Pison, Isabelle
Abbaris, Amara
Brunner, Dominik
Conil, Sebastien
Delmotte, Marc
Gheusi, Francois
Guerin, Frederic
Hazan, Lynn
Kachroudi, Nesrine
Kouvarakis, Giorgos
Mihalopoulos, Nikolaos
Rivier, Leonard
Serça, Dominique
Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4
author_facet Yazidi, Abdelhadi
Ramonet, Michel
Ciais, Philippe
Broquet, Gregoire
Pison, Isabelle
Abbaris, Amara
Brunner, Dominik
Conil, Sebastien
Delmotte, Marc
Gheusi, Francois
Guerin, Frederic
Hazan, Lynn
Kachroudi, Nesrine
Kouvarakis, Giorgos
Mihalopoulos, Nikolaos
Rivier, Leonard
Serça, Dominique
author_sort Yazidi, Abdelhadi
title Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4
title_short Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4
title_full Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4
title_fullStr Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4
title_full_unstemmed Identification of spikes associated with local sources in continuous time series of atmospheric CO, CO2 and CH4
title_sort identification of spikes associated with local sources in continuous time series of atmospheric co, co2 and ch4
publishDate 2018
url https://doi.org/10.5194/amt-11-1599-2018
https://amt.copernicus.org/articles/11/1599/2018/
long_lat ENVELOPE(-37.317,-37.317,-54.017,-54.017)
geographic The Spike
geographic_facet The Spike
genre Amsterdam Island
genre_facet Amsterdam Island
op_source eISSN: 1867-8548
op_relation doi:10.5194/amt-11-1599-2018
https://amt.copernicus.org/articles/11/1599/2018/
op_doi https://doi.org/10.5194/amt-11-1599-2018
container_title Atmospheric Measurement Techniques
container_volume 11
container_issue 3
container_start_page 1599
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