In this study, a methodological procedure combining a technique of meteorological normalisation, based on a random forest algorithm, with trend analysis and the change points detections in air quality time series is developed to analyse changes in pollutant concentrations levels. Data of air pollutants and meteorological parameters, collected over the period 2013–2019 in a rural area affected by anthropic sources of air pollutants, are used to test the procedure. The results appear to be promising in revealing, in a robust way, changes in pollutant levels not clearly observable in the original data
Understanding the dynamic of atmospheric pollution is an important tool for managing air quality. Th...
When studying air pollution measurements at different sites in a spatial area, we may search for a t...
Outdoor air pollution costs millions of premature deaths annually, mostly due to anthropogenic fine ...
Interventions used to improve air quality are often difficult to detect in air quality time series d...
For the most part, air pollution is governed by emissions, but it can be affected by meteorological ...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in a...
Abstract Traditional statistical methods (TSM) and machine learning (ML) methods have been widely us...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
Air quality monitoring data are useful in different areas of research and have varied applications, ...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
The impacts of poor air quality on human health are becoming more apparent. Businesses and governmen...
This repo includes the GEOS-Chem simulations and R scripts that are needed to replicate and evaluate...
Abstract Urban air pollution is a health hazard linked to anthropogenic emissions. Reliable evaluati...
Several cities have built on-the-ground air quality monitoring stations to measure daily concentrati...
This study presents the assessment of the quantitative influence of atmospheric circulation on the p...
Understanding the dynamic of atmospheric pollution is an important tool for managing air quality. Th...
When studying air pollution measurements at different sites in a spatial area, we may search for a t...
Outdoor air pollution costs millions of premature deaths annually, mostly due to anthropogenic fine ...
Interventions used to improve air quality are often difficult to detect in air quality time series d...
For the most part, air pollution is governed by emissions, but it can be affected by meteorological ...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in a...
Abstract Traditional statistical methods (TSM) and machine learning (ML) methods have been widely us...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
Air quality monitoring data are useful in different areas of research and have varied applications, ...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
The impacts of poor air quality on human health are becoming more apparent. Businesses and governmen...
This repo includes the GEOS-Chem simulations and R scripts that are needed to replicate and evaluate...
Abstract Urban air pollution is a health hazard linked to anthropogenic emissions. Reliable evaluati...
Several cities have built on-the-ground air quality monitoring stations to measure daily concentrati...
This study presents the assessment of the quantitative influence of atmospheric circulation on the p...
Understanding the dynamic of atmospheric pollution is an important tool for managing air quality. Th...
When studying air pollution measurements at different sites in a spatial area, we may search for a t...
Outdoor air pollution costs millions of premature deaths annually, mostly due to anthropogenic fine ...