The comprehensives of particulate matter studies are needed in predicting future haze occurrences in Malaysia. This paper presents the application of Artificial Neural Networks (ANN) and Multiple Linear Regressions (MLR) coupled with sensitivity analysis (SA) in order to recognize the pollutant relationship status over particulate matter (PM10) in eastern region. Eight monitoring studies were used, involving 14 input parameters as independent variables including meteorological factors. In order to investigate the efficiency of ANN and MLR performance, two different weather circumstances were selectedhaze and non-haze. The performance evaluation was characterized into two steps. Firstly, two models were developed based on ANN and MLR which d...
Abstract: An artificial neural network (ANN) was used to forecast natural airborne dust as well as f...
Air pollution was predicted in this study by using multiple linear regression and 42 different artif...
Poor urban air quality due to high concentrations of particulate matter (PM) remains a major public ...
The comprehensives of particulate matter studies are needed in predicting future haze occurrences in...
The most substantial air pollutant variables during haze episode in Northern region for 10-consecuti...
This study was conducted to determine the most significant parameters for the air-pollutant index (A...
Malaysia has been facing transboundary haze events every year in which the air contains particulate ...
Prediction of particulate matter (PM) in the air is an important issue in control and reduction of p...
In this study, potential of neural network to estimate daily mean PM10 concentration levels in Sakar...
This paper describes the application of principal component analysis (PCA) and artificial neural net...
The present study has been performed in residential educational campus located in a steel city, Rour...
The problem of air pollution is a frequently recurring situation and its management has social and e...
The insufficient number of ground-based stations for measuring Particulate Matter <10μm (PM10) in th...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
Particulate matter has significant effect to human health when the concentration level of this subst...
Abstract: An artificial neural network (ANN) was used to forecast natural airborne dust as well as f...
Air pollution was predicted in this study by using multiple linear regression and 42 different artif...
Poor urban air quality due to high concentrations of particulate matter (PM) remains a major public ...
The comprehensives of particulate matter studies are needed in predicting future haze occurrences in...
The most substantial air pollutant variables during haze episode in Northern region for 10-consecuti...
This study was conducted to determine the most significant parameters for the air-pollutant index (A...
Malaysia has been facing transboundary haze events every year in which the air contains particulate ...
Prediction of particulate matter (PM) in the air is an important issue in control and reduction of p...
In this study, potential of neural network to estimate daily mean PM10 concentration levels in Sakar...
This paper describes the application of principal component analysis (PCA) and artificial neural net...
The present study has been performed in residential educational campus located in a steel city, Rour...
The problem of air pollution is a frequently recurring situation and its management has social and e...
The insufficient number of ground-based stations for measuring Particulate Matter <10μm (PM10) in th...
AbstractLittle attention is given to applying the artificial neural network (ANN) modeling technique...
Particulate matter has significant effect to human health when the concentration level of this subst...
Abstract: An artificial neural network (ANN) was used to forecast natural airborne dust as well as f...
Air pollution was predicted in this study by using multiple linear regression and 42 different artif...
Poor urban air quality due to high concentrations of particulate matter (PM) remains a major public ...