Dispersion prediction plays a significant role in the management and emergency response to hazardous gas emissions and accidental leaks. Compared with conventional atmospheric dispersion models, machine leaning (ML) models have both high accuracy and efficiency in terms of prediction, especially in field cases. However, selection of model type and the inputs of the ML model are still essential problems. To address this issue, two ML models (i.e., the back propagation (BP) network and support vector regression (SVR) with different input selections (i.e., original monitoring parameters and integrated Gaussian parameters) are proposed in this paper. To compare the performances of presented ML models in field cases, these models are evaluated u...
Predictive models are essential in dam safety assessment. Both deterministic and statistical models ...
Greenhouse gas (GHG) emissions from open-pit mines pose a global climate challenge, which necessitat...
Empirical spatial air pollution models have been applied extensively to assess exposure in epidemiol...
Dispersion prediction plays a significant role in the management and emergency response to hazardous...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
In the event of an accidental or intentional hazardous material release in the atmosphere, researche...
Machine learning (ML) plays an important role in atmospheric environment prediction, having been wid...
Aeolian dust has widespread consequences on health, the environment, and the hydrology over a region...
In this paper it has been assumed that the use of artificial intelligence algorithms to predict the ...
An atmospheric particular matter, commonly recognized as PM, contains solid particles and liquid dro...
Air pollution is one of humanity's most critical environmental issues and is considered contentious ...
Supervised and unsupervised machine learning algorithms are used to perform statistical and logical ...
Sulfur dioxide (SO2) is an issue of increasing public concern due to its recognized adverse effects ...
Source term estimation (STE) is crucial for understanding and addressing hazardous gas leakages in t...
Predictive models are essential in dam safety assessment. Both deterministic and statistical models ...
Greenhouse gas (GHG) emissions from open-pit mines pose a global climate challenge, which necessitat...
Empirical spatial air pollution models have been applied extensively to assess exposure in epidemiol...
Dispersion prediction plays a significant role in the management and emergency response to hazardous...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
Current studies show that traditional deterministic models tend to struggle to capture the non-linea...
In the event of an accidental or intentional hazardous material release in the atmosphere, researche...
Machine learning (ML) plays an important role in atmospheric environment prediction, having been wid...
Aeolian dust has widespread consequences on health, the environment, and the hydrology over a region...
In this paper it has been assumed that the use of artificial intelligence algorithms to predict the ...
An atmospheric particular matter, commonly recognized as PM, contains solid particles and liquid dro...
Air pollution is one of humanity's most critical environmental issues and is considered contentious ...
Supervised and unsupervised machine learning algorithms are used to perform statistical and logical ...
Sulfur dioxide (SO2) is an issue of increasing public concern due to its recognized adverse effects ...
Source term estimation (STE) is crucial for understanding and addressing hazardous gas leakages in t...
Predictive models are essential in dam safety assessment. Both deterministic and statistical models ...
Greenhouse gas (GHG) emissions from open-pit mines pose a global climate challenge, which necessitat...
Empirical spatial air pollution models have been applied extensively to assess exposure in epidemiol...