The literature review had identified that the extreme value theory is widely used in hydrological studies. However, its contribution in air pollution is indisputably important. This paper assesses the use of extreme value distributions of the two-parameter Gumbel, two and three-parameter Weibull, Generalized Extreme Value (GEV) and two and three-parameter Generalized Pareto Distribution (GPD) on the maximum concentration of daily PM10 data recorded in the year 2005 in Shah Alam, Selangor. Parameters estimations for all distributions were evaluated using the method of Maximum Likelihood Estimator (MLE). The goodness-of-fit of the distribution was determined using six performance indicators namely; the accuracy measures which include Predic...
The aim of this study is to determine the behavior of extreme PM10 levels monitored at three air mon...
AbstractIn Malaysia, the predominant air pollutants are suspended particulate matter (SPM) and nitro...
We present three different approaches to modelling extreme values of daily air pollution data. We fi...
The literature review had identified that the extreme value theory is widely used in hydrological st...
The study of air quality is closely associated to air pollution. Air pollution is of the main concer...
One of the concerns of the air pollution studies is to compute the concentrations of one or more pol...
Extreme value theory is a very well-known statistical analysis for modeling extreme data in environm...
The purpose of the study was to determine the best distribution to predict the extreme concentration...
When consider the extreme level of pollutant concentration, the Extreme Value Theory (EVT) is a best...
Where air pollution control is concerned, the rare (extreme) event is typically more significant th...
Extreme value (EV) theory has raised researcher intention for modeling and forecasting of catastroph...
The high particulate matter (PM10) level is the prominent issue causing various impacts to human hea...
AbstractThe aim of this study is to determine the behavior of extreme PM10 levels monitored at three...
This study is focus on a bivariate extreme of renormalized componentwise maxima with generalized ext...
Awareness of catastrophic events brings the attention to work out the relationship of these events b...
The aim of this study is to determine the behavior of extreme PM10 levels monitored at three air mon...
AbstractIn Malaysia, the predominant air pollutants are suspended particulate matter (SPM) and nitro...
We present three different approaches to modelling extreme values of daily air pollution data. We fi...
The literature review had identified that the extreme value theory is widely used in hydrological st...
The study of air quality is closely associated to air pollution. Air pollution is of the main concer...
One of the concerns of the air pollution studies is to compute the concentrations of one or more pol...
Extreme value theory is a very well-known statistical analysis for modeling extreme data in environm...
The purpose of the study was to determine the best distribution to predict the extreme concentration...
When consider the extreme level of pollutant concentration, the Extreme Value Theory (EVT) is a best...
Where air pollution control is concerned, the rare (extreme) event is typically more significant th...
Extreme value (EV) theory has raised researcher intention for modeling and forecasting of catastroph...
The high particulate matter (PM10) level is the prominent issue causing various impacts to human hea...
AbstractThe aim of this study is to determine the behavior of extreme PM10 levels monitored at three...
This study is focus on a bivariate extreme of renormalized componentwise maxima with generalized ext...
Awareness of catastrophic events brings the attention to work out the relationship of these events b...
The aim of this study is to determine the behavior of extreme PM10 levels monitored at three air mon...
AbstractIn Malaysia, the predominant air pollutants are suspended particulate matter (SPM) and nitro...
We present three different approaches to modelling extreme values of daily air pollution data. We fi...