Abstract:
Air pollution is a major problem in Sri Lanka due to rapid urbanization and the development
of industries. In Sri Lanka, the quality of air has a profound impact on the
economy. The most obvious of these impacts is related to health problems associated with
poor air quality and the corresponding cost of medical care and treatments. Therefore,
it is important to build air quality models, which are mathematical descriptions of the
concentration of ambient pollutants. In this study, the main focus is on the pollutant
dispersion models and decision support models.
Wavelet approach is used to identify, whether there is a specific period during the
year in which the pollutant concentration oscillates and to investigate the relationship
between air quality and meteorological phenomena. According to the results, pollutants
have similar periodic oscillatory behavior from January to March and from October to
December, due to the monsoon effect in Sri Lanka.
The dispersion of air pollutants of petroleum refinery process in Sapugaskanda, Sri
Lanka is modeled using two different dispersion models such as advcction diffusion equation
and turbulence model. The turbulence model is used to account for velocity, mass
and heat transfer, dissipation rate and turbulent kinetic energy of pollutants. The finite
difference method is used to solve the problem numerically and two dimensional solutions
are obtained. Sensitivity analysis is carried out considering the advection diffusion
equation in order to identify the dynamic behavior of air pollution model with respect to
parameters.
Dispersion models and other methods available to measure air quality based on direct
measures of concentration of pollutants. The concentration of air pollutants cannot be
measured continuously in countries like Sri Lanka due to limited number of resources.
Therefore, indirect measurements are considered to build decision support models. Five
most significant factors such as industries, population density, traffic intensity, green
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coverage and weather conditions are considered. The boundaries of the factors cannot be
well defined. Therefore, fuzzy set theory is applied. These decision support models are
used to identify the levels of the air pollution in Colombo Municipal Council area and
to develop control strategies to improve the quality of air. These models can be used to
identify the air pollution risk in other cities in Sri Lanka
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