Accurately predicting ambient dust plays a crucial role in air quality management and hazard mitigation. Dust emission is a complex, non-linear response to several climatic variables. This study explores the accuracy of Artificial Intelligence (AI) models: an adaptive-network-based fuzzy inference system (ANFIS) and a multi-layered perceptron artificial neural network (mlp-NN), over the Southwestern United States (SWUS), based on the observed dust data from IMPROVE stations. The ambient fine dust (PM2.5) and coarse dust (PM10) concentrations on monthly and seasonal timescales from 1990–2020 are modeled using average daily maximum wind speed (W), average precipitation (P), and average air temperature (T) available from the North American Reg...
The arising air pollution has addressed much attention globally due to its detrimental effects on hu...
Air pollution is one of humanity's most critical environmental issues and is considered contentious ...
In this work, a novel spatio-temporal air quality prediction framework is proposed, and its developm...
Aeolian dust has widespread consequences on health, the environment, and the hydrology over a region...
Abstract: An artificial neural network (ANN) was used to forecast natural airborne dust as well as f...
Dust storms are believed to play an essential role in many climatological, geochemical, and environm...
Poor urban air quality due to high concentrations of particulate matter (PM) remains a major public ...
Nowadays, pollutants continue to be released into the atmosphere in increasing amounts with each pas...
Artificial neural networks (ANN) are non-linear mapping structures analogous to the functioning of t...
Air quality time series consists of complex linear and non-linear patterns and are difficult to fore...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
Recently, several factors such as the physical growth of cities and the increased number of industri...
This study uses machine learning (ML) models for a high-resolution prediction (0.1°×0.1°) of air fin...
Dust is a common cause of health risks and also a cause of climate change, one of the most threateni...
Dust weather is common and disastrous at the Tibetan Plateau. This study selected a typical case of ...
The arising air pollution has addressed much attention globally due to its detrimental effects on hu...
Air pollution is one of humanity's most critical environmental issues and is considered contentious ...
In this work, a novel spatio-temporal air quality prediction framework is proposed, and its developm...
Aeolian dust has widespread consequences on health, the environment, and the hydrology over a region...
Abstract: An artificial neural network (ANN) was used to forecast natural airborne dust as well as f...
Dust storms are believed to play an essential role in many climatological, geochemical, and environm...
Poor urban air quality due to high concentrations of particulate matter (PM) remains a major public ...
Nowadays, pollutants continue to be released into the atmosphere in increasing amounts with each pas...
Artificial neural networks (ANN) are non-linear mapping structures analogous to the functioning of t...
Air quality time series consists of complex linear and non-linear patterns and are difficult to fore...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
Recently, several factors such as the physical growth of cities and the increased number of industri...
This study uses machine learning (ML) models for a high-resolution prediction (0.1°×0.1°) of air fin...
Dust is a common cause of health risks and also a cause of climate change, one of the most threateni...
Dust weather is common and disastrous at the Tibetan Plateau. This study selected a typical case of ...
The arising air pollution has addressed much attention globally due to its detrimental effects on hu...
Air pollution is one of humanity's most critical environmental issues and is considered contentious ...
In this work, a novel spatio-temporal air quality prediction framework is proposed, and its developm...