Abstract:
The occurrence of heavy rainfalls in Sri Lanka results in significant damage to agriculture, ecology,
infrastructure systems, disruption of human activities, injuries and the loss of life. The modelling of extreme
rainfall has to be developed to manage the natural resources and the built environment to face the impacts of
climate change. The main goal of this study is to find the best fitting distribution to the extreme daily rainfalls
measured over the Colombo region for the years 1900-2009 by using the maximum likelihood approach. The
study also predicts the extreme rainfalls for return periods and their confidence bands. In this study extreme
rainfall events are defined by two different methods based on (1) the annual maximums of the daily rainfalls and
(2) the daily rainfalls exceeds some specific threshold value. The Generalized Extreme Value distribution and
the Generalized Pareto distribution are fitted to data corresponding to the methods 1 and 2 to describe the
extremes of rainfall and to predict its future behaviour. Finally we find the evidence to suggest that the Gumbel
distribution provides the most appropriate model for the annual maximums of daily rainfall and the Exponential
distribution gives the reasonable model for the daily rainfall data over the threshold value of 100mm for the
Colombo location. We derive estimates of 5, 10, 20, 50 and 100 years return levels and its corresponding
confidence intervals for extreme daily rainfalls.