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Considering the urban growth G = G (P, E) as a function of population growth P and
environmental and climatic change E the thesis studies the urban growth of Karachi
by studying the variations of P and E for Karachi and their interactions. Though, the
scope of E is large we keep restricting to temperature variations only. Karachi is
worth studying because of its high population growth rate and evidences of climatic
variability.
Chapter 1 looks into the trends of urban population growth of Karachi in global,
regional and national perspectives by using Reciprocal Logarithmic Model,
Polynomial Models and Exponential Growth Rate Model. The population growth rate
of Karachi is forecasted for (2011-2020) with the help of annual growth rate model.
Chapter 2 studies the district and town wise population-area relationship using
Hoover indices and Lorenz curves. It also studies the population density distribution
of Towns and slums (Katchi-Abadies) of Karachi. It is found that the town wise
pattern is better than the district wise distribution. The population density distribution
of 18 towns of Karachi is studied with the help of Flatten Gradient Density Model and
Spatial Interaction Models, the probability of change of the population density of the
towns is studied with the help of Spatial Interaction Model. Global Flatten Gradient
Density Model is developed to determine population densities of KKAs, results are
verified by log linear and linear exponential transformation models.
Chapter, 3 studies the variations of urban land temperature (ULT) of Karachi and the
xiArabian Sea surface temperature (SST) in the vicinity of Karachi using linear as well
as non liner models. The probabilistic behavior of the two data sets is also explored.
Comparing the variations of ULT of Karachi and less populated city of Hyderabad it
is tried to find that whether the rise of temperature of Karachi is a consequence of
heavy urbanization. Our ARIMA forecasts for SST predicts the months of May, June,
July, August and some days in October for the year 2010 to show extreme
temperatures which is confirmed by the actual 2010 records. For the long run our
models predict warm summers in 2014, 2016, 2018, and 2019. A good correlation
exists between urban land and sea surface temperatures.
Chapter 4 studies one of the possible consequences of the increase in SST. On the
basis of 120 years data of frequency of cyclones in the Arabian Sea this study
investigates the possibility of increase in the frequency of cyclones. Trends for May,
June, October, and November are found to be significantly increasing. The
Persistency of the data is tested with the help of Hurst exponents. For the above
mentioned months the Hurst exponents range between 0.83 and 0.98 indicating a high
level of persistency. The chapter ends with a study of possible impacts of the
increasing frequency of Arabian Sea cyclones on the coastal towns of Karachi
studied. It is found that Bin Qasim town is most vulnerable in view of its long coastal
length (11 Km) and Saddar and Clifton towns(509,915) is most vulnerable in view of
its large population.
Chapter 5 concludes the thesis and mentions the future aspects. |
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