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Call Admission Control (CAC) and Dynamic Channel Assignments (DCA)
are important decision-making problems in mobile cellular
communication systems. Current research in mobile communication
considers them as two independent problems, although the former
greatly depends on the resulting free channels obtained as the
outcome of the latter. This book provides a solution to the CAC
problem, considering DCA as an integral part of decision-making for
call admission. Further, current technical resources ignore
movement issues of mobile stations and fluctuation in network load
(incoming calls) in the control strategy used for call admission.
In addition, the present techniques on call admission offers
solution globally for the entire network, instead of considering
the cells independently. CAC here has been formulated by two
alternative approaches. The first approach aimed at handling the
uncertainty in the CAC problem by employing fuzzy comparators. The
second approach is concerned with formulation of CAC as an
optimization problem to minimize call drop, satisfying a set of
constraints on feasibility and availability of channels, hotness of
cells, and velocity and angular displacement of mobile stations.
Evolutionary techniques, including Genetic Algorithm and
Biogeography Based Optimization, have been employed to solve the
optimization problems. The proposed approaches outperform
traditional methods with respect to grade and quality of services.
Call Admission Control (CAC) and Dynamic Channel Assignments (DCA)
are important decision-making problems in mobile cellular
communication systems. Current research in mobile communication
considers them as two independent problems, although the former
greatly depends on the resulting free channels obtained as the
outcome of the latter. This book provides a solution to the CAC
problem, considering DCA as an integral part of decision-making for
call admission. Further, current technical resources ignore
movement issues of mobile stations and fluctuation in network load
(incoming calls) in the control strategy used for call admission.
In addition, the present techniques on call admission offers
solution globally for the entire network, instead of considering
the cells independently. CAC here has been formulated by two
alternative approaches. The first approach aimed at handling the
uncertainty in the CAC problem by employing fuzzy comparators. The
second approach is concerned with formulation of CAC as an
optimization problem to minimize call drop, satisfying a set of
constraints on feasibility and availability of channels, hotness of
cells, and velocity and angular displacement of mobile stations.
Evolutionary techniques, including Genetic Algorithm and
Biogeography Based Optimization, have been employed to solve the
optimization problems. The proposed approaches outperform
traditional methods with respect to grade and quality of services.
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