Section-IV presents the simulations and analysis of
the result. Finally Section V concludes this work.
2 RELATED WORK AND
BACKGROUND
(Jiang et al., 2013) presented a scheme for chan-
nel allocation and reallocation in cognitive radio net-
works. They used a multidimensional Markov chain
and a multi antenna interface which was connected
with only one channel, that was also used for chan-
nel allocation. In this paper, the channel alloca-
tion behavior in server and non server based system
was studied and analysed. The researchers presented
an analytic model and defined the performance met-
rics namely blocking probability, dropping probabil-
ity and throughput for secondary users. From the
simulation analysis, it was found that the proposed
scheme improved the performance of cognitive radio
system. They considered multiple antennas with one
channel only.
(Bayhan and Alag
¨
oz, 2014) presented a scheme
for best fit channel selection in cognitive radio net-
works. For this, a Markov model based scheme was
developed and used for theoretical analysis of best
fit channel selection. Also, the concept of spectrum
fragmentation was introduced. The performance of
proposed scheme over longest ideal time based chan-
nel selection scheme is crucial in terms of spectrum
utilization. From the simulation analysis, it was ob-
served that the proposed scheme preformed well and
provided significant results in practical situations. In
this work, only discrete state space is considered.
(Jalali et al., 2015) presented a dynamic chan-
nel access strategy for underlay cognitive radio net-
works using markov model. The researchers intro-
duced a partial channel occupancy (PCO) mode. The
PCO mode provides a partial occupied bandwidth to
secondary users, when secondary users co-exist with
primary users. They developed a continuous time
markov chain based model, that was used to evalu-
ate the performance of licensed and unlicensed net-
works. Furthermore, a cost against gain analysis were
presented and used to check the applicability of the
proposed technique for a given traffic scenario. The
proposed scheme was well supported by simulation
analysis.
(Gelabert et al., 2010) presented a discrete time
Markov chain model for spectrum sharing between
primary and secondary users with imperfect sens-
ing. The researchers introduced the concept of spec-
trum awareness implementation approach. Using this
approach, the miss-detection and false alarm proba-
bilities were defined and discussed. With the help
of these probabilities, a discrete time markov chain
model was presented and derived. Based on the
Markov model, a scheme was presented and simu-
lated using a system level simulator. Through the
simulation analysis, the error in spectrum sensing was
analyzed and it was found that the spectrum sensing
could be improved by setting the value of interfer-
ence. The proposed scheme works only for central-
ized manner not distributed manner.
(Bedeer et al., 2014) presented an approach based
on multi objective optimization, that was used to in-
vestigate the optimal link adaptation of OFDM based
cognitive radio system. The researchers in this work
presented an algorithm in such a way that the through-
put of the system was maximized and the transmit
power was minimized with respect to licensed and un-
licensed users. The proposed algorithm was analysed
and simulated. From the simulation analysis, it was
found that the performance of the proposed algorithm
tends to an exhaustive search for the discrete optimal
allocations with a reduced computational effort. In
this work, an imperfect sensing was considered but
in imperfect sensing, the interference constraints may
get violated. The interference violation has not been
considered in this work.
(Qin et al., 2009) presented the multi objective op-
timization model using genetic algorithm. To imple-
ment the genetic algorithm, the chromosome is used
to identify the influence of evolving a radio. Using
this chromosome, Multi Objective Cognitive Radio
(MOCR) algorithm was proposed. The performance
of the algorithm was analyzed and simulated. The re-
sult shows that the proposed algorithm provides bet-
ter results. In this work, only routing constraints were
used to design the chromosome. Some other parame-
ters can be used to design chromosome.
(Suliman et al., 2009) presented the analysis of
cognitive radio networks with imperfect sensing. The
researchers developed two dimensional Markov chain
model with the help of false alarm probabilities and
missed detection probabilities. Using this model, the
behaviour of the network was analysed. In addition,
the balance equation from the Markov chain and pri-
mary user termination probabilities were also defined
and evaluated. From the simulation analysis, it was
observed that as per the changes in the arrival rate of
primary users, the probability of successful commu-
nication for secondary users decreased. In this work,
the state equation is defined only for few cases, which
may be extended for some other cases as well.
(Wen et al., 2012) presented a Max overall perfor-
mance algorithm using the concept of genetic algo-
rithm. They defined the Max Sum Bandwidth (MSB)
Channel Allocation in Cognitive Radio Networks using Evolutionary Technique
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