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Since the deployment of 1G cellular networks, cellular operators are constantly striving
towards achieving higher data rates. Next generation networks are expected to meet the
demands of subscribers for high data rates. To meet these challenging requests of higher
data rates, the telecom research community is focusing its attention towards hexa
dimensional resource management techniques in next generation cellular networks.
These techniques include use of heterogeneous networks (hetnets), power allocation,
channel allocation, broad band and efficient spectrum utilization, noise control methods
and interference management. In next generation networks, a major portion of system
throughput enhancements is expected to come from device to device (D2D)
communication which is viewed as part of hetnets.
In this thesis, D2D communication is considered the main enabling feature of
hetnets to enhance throughput and its intelligent resource management is imperative.
The scope of this work is further broadened by integration of cognitive radio network
(CRN) concepts into the D2D resource management. To further boost data rates, D2D
concept is extended by incorporation of communication among devices to devices
(Ds2Ds) and their intelligent resource management.
Resource management is a domain wherein resources are intelligently allocated
to various users. Resource management aspects considered in this thesis include
admission control, mode selection and power allocation. This work considers D2D joint
resource allocation to maximize the overall throughput of cellular networks having
D2D capabilities while observing the sanctity of constraints of power, quality of service
(QoS) and interference. This problem is NP-complete and is classified as mixed integer
non-linear optimization problem. Computational complexity of the exhaustive search
algorithm (ESA) increases exponentially with the number of users. This makes it very
difficult to find optimal solution for such kind of problems. In this work, convergent solutions for solving the joint resource allocation problem in D2D communication has
been presented. By exploiting the special structure of the problem, outer approximation
algorithm (OAA) and mesh adaptive direct search (MADS) algorithms have been used
to obtain epsilon-optimal solution. Using joint utility function, different scenarios of
simulation results confirm effectiveness of MADS viz-a-viz OAA. Performance of
MADS was found to be equal to that of ESA.
Cognitive assisted D2D network is an emerging domain which utilizes
television (TV) white space spectrum. Joint resource allocation of CRN assisted D2D
networks along with constraints of transmit power, QoS and interference (related to TV
users) is considered in this thesis. The problem is mathematically modelled with a
utility function having two terms related to maximization of admitted users and
maximization of overall system throughput. MADS algorithm is adopted for solution
of NP-complete problems. Simulation results compare different scenarios using ESA
and MADS algorithm. Results of simulation testify to the fact that MADS provides
solution close to optimal with reasonable complexity.
In Ds2Ds resource management problem, the objective is to maximize energy
efficiency of Ds2Ds communication, subject to compliance of constraints related to
radio resources, quality of service (QoS) and interference. Performance of Ds2Ds is
bench marked with multi-homing technique and devices to device (Ds2D)
communication. The objective of maximization of energy efficiency reinforces the
much sought-after green communication. |
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