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      The relationship between air pollution and COVID-19-related deaths: An application to three French cities

      research-article
        a , b , c
      Applied Energy
      Elsevier Ltd.
      COVID-19, air pollution, Particulate Matter, Machine Learning, Artificial Neural Networks, ANNs, Artificial Neural Networks, CMAQ, Community Multiscale Air Quality, CO, Carbon Monoxide, CH4, Methane, COVID-19, Coronavirus Disease 19, D2C, Causal Direction from Dependency, GAM, Generalized Additive Model, GHG, Greenhouse Gas, ML, Machine Learning, NO2, Nitrogen Dioxide, NOx, Nitrogen Oxides, O3, Ozone, PM2.5, Particulate Matter with an aerodynamic diameter < 2.5 µm, PM10, Particulate Matter with an aerodynamic diameter < 10.0 µm, SO2, Sulfur Dioxide, SO3, Sulphur Trioxide, SOx, Sulphur Oxides, VOC, Volatile Organic Compounds

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          Abstract

          Being heavily dependent to oil products (mainly gasoline and diesel), the French transport sector is the main emitter of Particulate Matter (PMs) whose critical levels induce harmful health effects for urban inhabitants. We selected three major French cities (Paris, Lyon, and Marseille) to investigate the relationship between the Coronavirus Disease 19 (COVID-19) outbreak and air pollution. Using Artificial Neural Networks (ANNs) experiments, we have determined the concentration of PM 2.5 and PM 10 linked to COVID-19-related deaths. Our focus is on the potential effects of Particulate Matter (PM) in spreading the epidemic. The underlying hypothesis is that a pre-determined particulate concentration can foster COVID-19 and make the respiratory system more susceptible to this infection. The empirical strategy used an innovative Machine Learning (ML) methodology. In particular, through the so-called cutting technique in ANNs, we found new threshold levels of PM 2.5 and PM 10 connected to COVID-19: 17.4 µg/m 3 (PM 2.5) and 29.6 µg/m 3 (PM 10) for Paris; 15.6 µg/m 3 (PM 2.5) and 20.6 µg/m 3 (PM 10) for Lyon; 14.3 µg/m 3 (PM 2.5) and 22.04 µg/m 3 (PM 10) for Marseille. Interestingly, all the threshold values identified by the ANNs are higher than the limits imposed by the European Parliament. Finally, a Causal Direction from Dependency (D2C) algorithm is applied to check the consistency of our findings.

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          Recent trends in global production and utilization of bio-ethanol fuel

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            Estimation of the contribution of road traffic emissions to particulate matter concentrations from field measurements: A review

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              Is Open Access

              Ambient Influenza and Avian Influenza Virus during Dust Storm Days and Background Days

              Background The spread of influenza and highly pathogenic avian influenza (H5N1) presents a significant threat to human health. Avian influenza outbreaks in downwind areas of Asian dust storms (ADS) suggest that viruses might be transported by dust storms. Objectives We developed a technique to measure ambient influenza and avian influenza viruses. We then used this technique to measure concentrations of these viruses on ADS days and background days, and to assess the relationships between ambient influenza and avian influenza viruses, and air pollutants. Methods A high-volume air sampler was used in parallel with a filter cassette to evaluate spiked samples and unspiked samples. Then, air samples were monitored during ADS seasons using a filter cassette coupled with a real-time quantitative polymerase chain reaction (qPCR) assay. Air samples were monitored during ADS season (1 January to 31 May 2006). Results We successfully quantified ambient influenza virus using the filtration/real-time qPCR method during ADS days and background days. To our knowledge, this is the first report describing the concentration of influenza virus in ambient air. In both the spiked and unspiked samples, the concentration of influenza virus sampled using the filter cassette was higher than that using the high-volume sampler. The concentration of ambient influenza A virus was significantly higher during the ADS days than during the background days. Conclusions Our data imply the possibility of long-range transport of influenza virus.
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                Author and article information

                Journal
                Appl Energy
                Appl Energy
                Applied Energy
                Elsevier Ltd.
                0306-2619
                0306-2619
                12 September 2020
                12 September 2020
                : 115835
                Affiliations
                [a ]Roma Tre University
                [b ]University of Teramo
                [c ]Paris 1 Panthéon-Sorbonne University
                Article
                S0306-2619(20)31312-X 115835
                10.1016/j.apenergy.2020.115835
                7486865
                32952266
                7d4cd129-4045-4065-b95e-73fc3442184e
                © 2020 Elsevier Ltd. All rights reserved.

                Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active.

                History
                : 19 May 2020
                : 22 August 2020
                : 27 August 2020
                Categories
                Article

                covid-19,air pollution,particulate matter,machine learning,artificial neural networks,anns, artificial neural networks,cmaq, community multiscale air quality,co, carbon monoxide,ch4, methane,covid-19, coronavirus disease 19,d2c, causal direction from dependency,gam, generalized additive model,ghg, greenhouse gas,ml, machine learning,no2, nitrogen dioxide,nox, nitrogen oxides,o3, ozone,pm2.5, particulate matter with an aerodynamic diameter < 2.5 µm,pm10, particulate matter with an aerodynamic diameter < 10.0 µm,so2, sulfur dioxide,so3, sulphur trioxide,sox, sulphur oxides,voc, volatile organic compounds

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