This study employs deep learning-based models for developing: fast, real-time air quality forecasting systems; a post-processing tool for bias-correcting the chemical transport model; and a reliable hybrid hurricane tracking model. A deep convolutional neural network (CNN) algorithm, which is an advanced deep learning algorithm, was employed to predict the hourly ozone concentrations each day (24 hours in advance) for the entire year using several meteorological variables and air pollution concentrations from the previous day. The CNN model showed a reasonable performance with an average index of agreement (IOA) of 0.84-0.89 and a Pearson correlation coefficient of 0.74-0.81. Although the CNN model successfully captured daily trends of the ...
Facing the severe air pollution phenomenon in urban areas and the subsequent low visibility event in...
Air quality forecasting has become an essential factor in facilitating sustainable development world...
Artificial neural networks (ANNs) are well suited to solve complex and highly non-linear problems. V...
Numerical models are excellent tools for forecasting future weather events or air quality. The scien...
The advancement and development of new technology provide atmospheric scientists and modelers to acq...
Three-dimensional Eulerian chemical transport models such as CMAQ often report a significant model-m...
Machine learning techniques like deep learning gained enormous momentum in recent years. This was ma...
Weather Normalized Models (WNMs) are modeling methods used for assessing air contaminants under a bu...
Weather Normalized Models (WNMs) are modeling methods used for assessing air contaminants under a bu...
Accurate pollutant prediction is essential in fields such as meteorology, meteorological disasters, ...
Air quality forecasting has been regarded as the key problem of air pollution early warning and cont...
Air quality (mainly PM2.5) forecasting plays an important role in the early detection and control of...
More timely and accurate air quality forecasting could contribute to better public health protection...
Artificial neural networks (ANNs) are well suited to solve complex and highly non-linear problems. V...
Tracking the path and forecasting the intensity of hurricanes are challenging. Dynamical models prod...
Facing the severe air pollution phenomenon in urban areas and the subsequent low visibility event in...
Air quality forecasting has become an essential factor in facilitating sustainable development world...
Artificial neural networks (ANNs) are well suited to solve complex and highly non-linear problems. V...
Numerical models are excellent tools for forecasting future weather events or air quality. The scien...
The advancement and development of new technology provide atmospheric scientists and modelers to acq...
Three-dimensional Eulerian chemical transport models such as CMAQ often report a significant model-m...
Machine learning techniques like deep learning gained enormous momentum in recent years. This was ma...
Weather Normalized Models (WNMs) are modeling methods used for assessing air contaminants under a bu...
Weather Normalized Models (WNMs) are modeling methods used for assessing air contaminants under a bu...
Accurate pollutant prediction is essential in fields such as meteorology, meteorological disasters, ...
Air quality forecasting has been regarded as the key problem of air pollution early warning and cont...
Air quality (mainly PM2.5) forecasting plays an important role in the early detection and control of...
More timely and accurate air quality forecasting could contribute to better public health protection...
Artificial neural networks (ANNs) are well suited to solve complex and highly non-linear problems. V...
Tracking the path and forecasting the intensity of hurricanes are challenging. Dynamical models prod...
Facing the severe air pollution phenomenon in urban areas and the subsequent low visibility event in...
Air quality forecasting has become an essential factor in facilitating sustainable development world...
Artificial neural networks (ANNs) are well suited to solve complex and highly non-linear problems. V...