The accurate prediction of air contaminant dispersion is essential to air quality monitoring and the emergency management of contaminant gas leakage incidents in chemical industry parks. Conventional atmospheric dispersion models can seldom give accurate predictions due to inaccurate input parameters. In order to improve the prediction accuracy of dispersion models, two data assimilation methods (i.e., the typical particle filter & the combination of a particle filter and expectation-maximization algorithm) are proposed to assimilate the virtual Unmanned Aerial Vehicle (UAV) observations with measurement error into the atmospheric dispersion model. Two emission cases with different dimensions of state parameters are considered. To test ...
Data assimilation is a process where an improved prediction is obtained from a weighted combination ...
International audienceMonitoring air pollution plumes in emergency situations (industrial accidents,...
Air pollution in urban areas is mainly due to the intense use of motorized transport for travelling....
The accurate prediction of hazardous gas dispersion process is essential to air quality monitoring a...
The accurate prediction of hazardous gas dispersion process is essential to air quality monitoring a...
Abstract — Data assimilation in the context of puff based dispersion models is studied. A representa...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
The problem of air pollution around urbanized area across Europe is strongly related to ozone. Ozone...
Atmospheric transport models and observations from monitoring networks are commonly used aids for fo...
Uncertainty factors in atmospheric dispersion models may influence the reliability of model predicti...
To model the atmospheric dispersion of radionuclides released from nuclear accident is very importan...
Assimilation of observational data from ground stations and satellites has been identified as a tech...
AbstractThe problem of correcting the pollutant source emission rate and the wind velocity field inp...
Abstract — Exploitation of the data assimilation methodology in the field of radiation protection is...
The challenges of understanding the impacts of air pollution require detailed information on the sta...
Data assimilation is a process where an improved prediction is obtained from a weighted combination ...
International audienceMonitoring air pollution plumes in emergency situations (industrial accidents,...
Air pollution in urban areas is mainly due to the intense use of motorized transport for travelling....
The accurate prediction of hazardous gas dispersion process is essential to air quality monitoring a...
The accurate prediction of hazardous gas dispersion process is essential to air quality monitoring a...
Abstract — Data assimilation in the context of puff based dispersion models is studied. A representa...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
The problem of air pollution around urbanized area across Europe is strongly related to ozone. Ozone...
Atmospheric transport models and observations from monitoring networks are commonly used aids for fo...
Uncertainty factors in atmospheric dispersion models may influence the reliability of model predicti...
To model the atmospheric dispersion of radionuclides released from nuclear accident is very importan...
Assimilation of observational data from ground stations and satellites has been identified as a tech...
AbstractThe problem of correcting the pollutant source emission rate and the wind velocity field inp...
Abstract — Exploitation of the data assimilation methodology in the field of radiation protection is...
The challenges of understanding the impacts of air pollution require detailed information on the sta...
Data assimilation is a process where an improved prediction is obtained from a weighted combination ...
International audienceMonitoring air pollution plumes in emergency situations (industrial accidents,...
Air pollution in urban areas is mainly due to the intense use of motorized transport for travelling....