期刊论文详细信息
Atmospheric Pollution Research
Changes in urban air pollution after a shift in anthropogenic activity analysed with ensemble learning, competitive learning and unsupervised clustering
article
Mira Hulkkonen1  Antti Lipponen2  Tero Mielonen2  Harri Kokkola2  Nønne L. Prisle1 
[1] Nano and Molecular Systems Research Unit, P.O. BOX 8000, University of Oulu;Finnish Meteorological Institute, Atmospheric Research Centre of Eastern Finland;Center for Atmospheric Research, P.O. BOX 4500, University of Oulu
关键词: Air pollution;    Particulate matter;    Change analysis;    Random forest;    Self-organizing map;   
DOI  :  10.1016/j.apr.2022.101393
学科分类:农业科学(综合)
来源: Dokuz Eylul Universitesi * Department of Environmental Engineering
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【 摘 要 】

Urban air pollution is a health hazard linked to anthropogenic emissions. Reliable evaluation of changes in pollutants due to altered emissions requires considering meteorological and other variability influencing concentrations. Here, a combination of ensemble learning, competitive learning and unsupervised clustering is proposed and applied to leverage the change analysis of particulate matter (PM 2.5 ) and other pollutants. Machine Learning (ML) algorithms Random Forest (RF) and Self-Organizing Map (SOM) were trained with historical meteorological data, pollutant concentrations and traffic indicators. The importance of different variables for local PM 2.5 was determined with RF. SOM was configured for multivariable cluster analysis. The trained SOM enabled predicting a cluster for new data representing conditions with shifted anthropogenic activity. The prediction forms a benchmark for the analysed period with maximized meteorological similarity, which facilitates identifying changes in ambient pollutants due to changed emissions. The method was applied to data from the start of COVID-19 pandemic, 3/2020, when emissions suddenly decreased. For measurements from Helsinki, Finland, the SOM yielded a statistically significant change in PM 2.5 (−0.7%), NO 2 (−33%) and O 3 (+17%). Comparing data from 3/2020 to data from 3/2017–2019 produced different results (PM 2.5 −1.7%, NO 2 −37%, O 3 −4.0%). Statistical indicators confirmed better compatibility between the analysed period and its benchmark when using the SOM prediction instead of calendar-based selection: Average RMSRE was 19%-points lower and Willmott's d r 41% higher with SOM than with 3/2017–2019. Based on the case study and method evaluation, using ML for multivariate analysis of changed air pollution is feasible and yields meaningful results.

【 授权许可】

CC BY   

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