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Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models

The aim of this study was to establish a method for predicting heavy metal concentrations in PM(1) (aerosol particles with an aerodynamic diameter ≤ 1.0 μm) based on back propagation artificial neural network (BP-ANN) and support vector machine (SVM) methods. The annual average PM(1) concentration w...

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Autores principales: Li, Huiming, Dai, Qian’ying, Yang, Meng, Li, Fengying, Liu, Xuemei, Zhou, Mengfan, Qian, Xin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier Ltd. 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7340598/
https://www.ncbi.nlm.nih.gov/pubmed/32721685
http://dx.doi.org/10.1016/j.chemosphere.2020.127571
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author Li, Huiming
Dai, Qian’ying
Yang, Meng
Li, Fengying
Liu, Xuemei
Zhou, Mengfan
Qian, Xin
author_facet Li, Huiming
Dai, Qian’ying
Yang, Meng
Li, Fengying
Liu, Xuemei
Zhou, Mengfan
Qian, Xin
author_sort Li, Huiming
collection PubMed
description The aim of this study was to establish a method for predicting heavy metal concentrations in PM(1) (aerosol particles with an aerodynamic diameter ≤ 1.0 μm) based on back propagation artificial neural network (BP-ANN) and support vector machine (SVM) methods. The annual average PM(1) concentration was 26.31 μg/m(3) (range: 7.00–73.40 μg/m(3)). The concentrations of most metals were higher in winter and lower in autumn and summer. Mn and Ni had the highest noncarcinogenic risk, and Cr the highest carcinogenic risk. The hazard index was below safe limit, and the integrated carcinogenic risk was less than precautionary value. There were no obvious differences in the simulation performances of BP-ANN and SVM models. However, in both models many elements had better simulation effects when input variables were atmospheric pollutants (SO(2), NO(2), CO, O(3) and PM(2.5)) rather than PM(1) and meteorological factors (temperature, relative humidity, atmospheric pressure and wind speed). Models performed better for Pb, Tl and Zn, as evidenced by training R and test R values consistently >0.85, whereas their performances for Ti and V were relatively poor. Predicted results by the fully trained models showed atmospheric heavy metal pollution was heavier in December and January and lighter in August and July of 2019. For the period covering the COVID-19 outbreak in China, from January to March 2020, most of the predicted element concentrations were lower than in 2018 and 2019, and the concentrations of nearly all metals were lowest during the nationwide implementation of countermeasures taken against the pandemic.
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spelling pubmed-73405982020-07-08 Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models Li, Huiming Dai, Qian’ying Yang, Meng Li, Fengying Liu, Xuemei Zhou, Mengfan Qian, Xin Chemosphere Article The aim of this study was to establish a method for predicting heavy metal concentrations in PM(1) (aerosol particles with an aerodynamic diameter ≤ 1.0 μm) based on back propagation artificial neural network (BP-ANN) and support vector machine (SVM) methods. The annual average PM(1) concentration was 26.31 μg/m(3) (range: 7.00–73.40 μg/m(3)). The concentrations of most metals were higher in winter and lower in autumn and summer. Mn and Ni had the highest noncarcinogenic risk, and Cr the highest carcinogenic risk. The hazard index was below safe limit, and the integrated carcinogenic risk was less than precautionary value. There were no obvious differences in the simulation performances of BP-ANN and SVM models. However, in both models many elements had better simulation effects when input variables were atmospheric pollutants (SO(2), NO(2), CO, O(3) and PM(2.5)) rather than PM(1) and meteorological factors (temperature, relative humidity, atmospheric pressure and wind speed). Models performed better for Pb, Tl and Zn, as evidenced by training R and test R values consistently >0.85, whereas their performances for Ti and V were relatively poor. Predicted results by the fully trained models showed atmospheric heavy metal pollution was heavier in December and January and lighter in August and July of 2019. For the period covering the COVID-19 outbreak in China, from January to March 2020, most of the predicted element concentrations were lower than in 2018 and 2019, and the concentrations of nearly all metals were lowest during the nationwide implementation of countermeasures taken against the pandemic. Elsevier Ltd. 2020-12 2020-07-08 /pmc/articles/PMC7340598/ /pubmed/32721685 http://dx.doi.org/10.1016/j.chemosphere.2020.127571 Text en © 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.
spellingShingle Article
Li, Huiming
Dai, Qian’ying
Yang, Meng
Li, Fengying
Liu, Xuemei
Zhou, Mengfan
Qian, Xin
Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models
title Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models
title_full Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models
title_fullStr Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models
title_full_unstemmed Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models
title_short Heavy metals in submicronic particulate matter (PM(1)) from a Chinese metropolitan city predicted by machine learning models
title_sort heavy metals in submicronic particulate matter (pm(1)) from a chinese metropolitan city predicted by machine learning models
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7340598/
https://www.ncbi.nlm.nih.gov/pubmed/32721685
http://dx.doi.org/10.1016/j.chemosphere.2020.127571
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