Interventions used to improve air quality are often difficult to detect in air quality time series due to the complex nature of the atmosphere. Meteorological normalisation is a technique which controls for meteorology/weather over time in an air quality time series so intervention exploration (and trend analysis) can be assessed in a robust way. A meteorological normalisation technique, based on the random forest machine learning algorithm was applied to routinely collected observations from two locations where known interventions were imposed on transportation activities which were expected to change ambient pollutant concentrations. The application of progressively stringent limits on the content of sulfur in marine fuels was very clearl...
It is well-known that a large part of the year-to-year variation in annual distribution of daily con...
In this paper, the impact of smart traffic interventions on air quality was assessed in Thatcham, We...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
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...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
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 a...
The impacts of poor air quality on human health are becoming more apparent. Businesses and governmen...
Over the past few decades, due to human activities, industrialization, and urbanization,&n...
Normalisation of environmental data aims at clarifying the human impact on the environment by suppre...
For the most part, air pollution is governed by emissions, but it can be affected by meteorological ...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
Air quality monitoring data are useful in different areas of research and have varied applications, ...
It is well-known that a large part of the year-to-year variation in annual distribution of daily con...
In this paper, the impact of smart traffic interventions on air quality was assessed in Thatcham, We...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
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...
Meteorological normalisation is a technique which accounts for changes in meteorology over time in ...
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 a...
The impacts of poor air quality on human health are becoming more apparent. Businesses and governmen...
Over the past few decades, due to human activities, industrialization, and urbanization,&n...
Normalisation of environmental data aims at clarifying the human impact on the environment by suppre...
For the most part, air pollution is governed by emissions, but it can be affected by meteorological ...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
China has implemented two national clean air actions in 2013–2017 and 2018–2020, respectively, with ...
Air quality monitoring data are useful in different areas of research and have varied applications, ...
It is well-known that a large part of the year-to-year variation in annual distribution of daily con...
In this paper, the impact of smart traffic interventions on air quality was assessed in Thatcham, We...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...