Abstract:
Tropospheric ozone is main pollutant of important concern in Malaysia due to its
contributions to high number of unhealthy days recorded in many industrial, urban and
suburban area. Furthermore, tropospheric ozone is responsible for adverse effects on
human health, vegetation and building materials. Thus, prediction of ozone
concentration is significant to provide early warning system in order to reduce the
exposure of population especially sensitive groups to certain level of ozone pollution.
In Malaysia, studies on applying different types of approaches including regression
models, neural network and probability distribution to predict ozone concentration have
been established, yet a model with good predicting ability has to be identified and used
so as to develop effective warning strategies. This study aims to study the application
of multiple linear regression (MLR) model and artificial neural network (ANN) models
in predicting ozone concentration at Cheras and Petaling Jaya for year 2012. Stepwise
method was used to choose the independent variables to develop linear regression
model using Statistical Package for Social Sciences (SPSS) software while a
feedforward algorithm was used to prepare the neural network using Matrix Laboratory
(MATLAB) software. The evaluation of the performance of MLR and ANN models
was conducted using performance indicators including coefficient of determination
(R
2
), prediction accuracy (PA), root mean squared error (RMSE) and normalised
absolute error (NAE). Higher accuracy measure and smaller error measure of ANN
model showed that ANN model performed slightly better than MLR model. The result
of this study could be used as an input in policy framework in order to control the
magnitude of ozone pollution impacts in Malaysia.