Numerical models are excellent tools for forecasting future weather events or air quality. The scientific and computational advancements in numerical models provided us with more accurate forecasts while promoting an understanding of various physical and chemical processes in the atmosphere. However, due to the simplified implementation of such processes, the understanding of modeling uncertainties was limited. In addition to this, these numerical models require significant computational resources and time to have a quality forecast. This thesis tries to mitigate the uncertainties which lead to large biases, using advanced deep neural network (DNN) models and integrate them into the existing numerical model to have better and faster weather...
The effects of air pollution on people, the environment, and the global economy are profound - and o...
Abstract In this paper, we propose a real-time prediction model that can respond to particulate matt...
Combating air pollution has proven to be a difficult task for countries with rapidly developing econ...
This study employs deep learning-based models for developing: fast, real-time air quality forecastin...
The advancement and development of new technology provide atmospheric scientists and modelers to acq...
[[abstract]]Timely regional air quality forecasting in a city is crucial and beneficial for supporti...
Air quality (mainly PM2.5) forecasting plays an important role in the early detection and control of...
Accurate pollutant prediction is essential in fields such as meteorology, meteorological disasters, ...
Many environmental variables, in particular, related to air or water quality, are measured in a limi...
Three-dimensional Eulerian chemical transport models such as CMAQ often report a significant model-m...
More timely and accurate air quality forecasting could contribute to better public health protection...
In this paper, a neural network approach is proposed for air quality forecasting based on the air qu...
Air quality forecasting has been regarded as the key problem of air pollution early warning and cont...
The fine particulate matter (e.g. PM2.5) gains an increasing concern of human health deterioration. ...
The effects of air pollution on people, the environment, and the global economy are profound - and o...
The effects of air pollution on people, the environment, and the global economy are profound - and o...
Abstract In this paper, we propose a real-time prediction model that can respond to particulate matt...
Combating air pollution has proven to be a difficult task for countries with rapidly developing econ...
This study employs deep learning-based models for developing: fast, real-time air quality forecastin...
The advancement and development of new technology provide atmospheric scientists and modelers to acq...
[[abstract]]Timely regional air quality forecasting in a city is crucial and beneficial for supporti...
Air quality (mainly PM2.5) forecasting plays an important role in the early detection and control of...
Accurate pollutant prediction is essential in fields such as meteorology, meteorological disasters, ...
Many environmental variables, in particular, related to air or water quality, are measured in a limi...
Three-dimensional Eulerian chemical transport models such as CMAQ often report a significant model-m...
More timely and accurate air quality forecasting could contribute to better public health protection...
In this paper, a neural network approach is proposed for air quality forecasting based on the air qu...
Air quality forecasting has been regarded as the key problem of air pollution early warning and cont...
The fine particulate matter (e.g. PM2.5) gains an increasing concern of human health deterioration. ...
The effects of air pollution on people, the environment, and the global economy are profound - and o...
The effects of air pollution on people, the environment, and the global economy are profound - and o...
Abstract In this paper, we propose a real-time prediction model that can respond to particulate matt...
Combating air pollution has proven to be a difficult task for countries with rapidly developing econ...