dc.description.abstract | In Malaysia, the predominant air pollutants are suspended particulate matter (SPM) and
nitrogen dioxide (NO2). This research is on PM10 as they may trigger harm to human health
as well as environment. Six distributions, namely Weibull, log-normal, gamma, Rayleigh,
Gumbel and Frechet were chosen to model the PM10 observations at two industrial areas:
Nilai and Shah Alam. One-year period hourly average data for 2007 was used for this
research. For parameters estimation, method of maximum likelihood estimation (MLE) was
selected. Four performance indicators that are mean absolute error (MAE), root mean
squared error (RMSE), coefficient of determination (R2) and prediction accuracy (PA), were
applied to determine the goodness-of-fit criteria of the distributions. The best distribution
that fits with the PM10 observations was found to be gamma distribution for Nilai whereas
for Shah Alam, log-normal distribution is more appropriate. The probabilities of the
exceedences concentration were calculated and the return period for the coming year was
predicted from the cumulative density function (cdf) obtained from the best-fit distributions.
For the 2006 data, Nilai was predicted to exceed 150 μg/m3 for 2.7 days in 2007 with a
return period of one occurrence per 137 days. Shah Alam was predicted to exceed 150
μg/m3 for 5.9 days in 2007 with a return period of one occurrence per 62 days. Both areas
do not exceed the MAAQG of 150 μg/m3 based on 2007 data. | en_US |