Meteorological normalisation is a technique which accounts for changes in meteorology over time in an air quality time series. Controlling for such changes helps support robust trend analysis because there is more certainty that the observed trends are due to changes in emissions or chemistry, not changes in meteorology. Predictive random forest models (RF; a decision tree machine learning technique) were grown for 31 air quality monitoring sites in Switzerland using surface meteorological, synoptic scale, boundary layer height, and time variables to explain daily PM10 concentrations. The RF models were used to calculate meteorologically normalised trends which were formally tested and evaluated using the Theil–Sen estimator. Between 1997 a...
A statistical modelling of PM10 concentration (2006–2015) is applied to understand the behaviour, t...
The global COVID-19 pandemic that began in late December 2019 led to unprecedented lockdowns worldwi...
International audienceAir pollution, in particular high concentrations of particulate matter smaller...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
Interventions used to improve air quality are often difficult to detect in air quality time series d...
In this study, a methodological procedure combining a technique of meteorological normalisation, bas...
Traditional statistical methods (TSM) and machine learning (ML) methods have been widely used to sep...
This study presents the assessment of the quantitative influence of atmospheric circulation on the p...
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...
This study presents the assessment of the quantitative influence of atmospheric circulation on the p...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
A statistical modelling of PM10 concentration (2006–2015) is applied to understand the behaviour, t...
The global COVID-19 pandemic that began in late December 2019 led to unprecedented lockdowns worldwi...
International audienceAir pollution, in particular high concentrations of particulate matter smaller...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
Interventions used to improve air quality are often difficult to detect in air quality time series d...
In this study, a methodological procedure combining a technique of meteorological normalisation, bas...
Traditional statistical methods (TSM) and machine learning (ML) methods have been widely used to sep...
This study presents the assessment of the quantitative influence of atmospheric circulation on the p...
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...
This study presents the assessment of the quantitative influence of atmospheric circulation on the p...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
A statistical modelling of PM10 concentration (2006–2015) is applied to understand the behaviour, t...
The global COVID-19 pandemic that began in late December 2019 led to unprecedented lockdowns worldwi...
International audienceAir pollution, in particular high concentrations of particulate matter smaller...