Abstract:
Cognitive or intelligent radio has emerged as a promising technology to ameliorate
the spectrum utilization by exploiting the unused spectrum bands. Cognitive radio is
proposed in literature as an intelligent wireless communication system that is aware of
its surrounding environment. It allows unlicensed or secondary user, to utilize the vacant
spectrum at any time with no or less interference to the licensed users. Generally,
cognitive radio creates networks in order to better identify spectrum vacancies, avoid
induced interference and accordingly, boost their revenue. One of the major challenge
in cognitive radio communication, now a days, is high consumption of energy, resulting
in limitation of implementation specifically in battery-powered devices.
The cognitive radio communication deals with three main steps such as spectrum
sensing, allocation and reliable transmission. The initial step involves the detection
of licensed user signals in order to determine the availability of a spectrum band for
transmission. The spectrum sensing which deals with single primary and secondary
node is known as single node spectrum sensing. It has been reported by previous studies
that fading, shadowing and hidden node problem may affect the detection quality
of single node sensing. It is therefore possible to improve the performance in such
cases by employing multiuser diversity. In cooperative spectrum sensing (multiuser
sensing), multiple secondary nodes work in collaboration with each other. The locally
generated sensing results are exchanged in order to make a global decision regarding
spectrum occupancy. However, due to overhead of multiple nodes, cooperative sensing
consumes a significant amount of energy, which is a challenge for the cognitive users.
Moreover, increasing number of sensing channels and periodicity of cooperative sensing
further complicates the problem. Hence, energy efficiency in cooperative spectrum
sensing have led to a proliferation of research in cognitive radio.
In this thesis, multiple energy efficiency maximization algorithms/schemes for cooperative
spectrum sensing are proposed. There are three models of collaboration viz.
centralized, distributed and hierarchical, here, we consider centralized model. The proposed
work comprises of optimization of energy efficiency at local sensing, reporting
and transmission stage. This includes the optimization of number of secondary users,
sensing time and transmission time. The optimization is carried out in fading and nonfading
environment and at different SNR levels. The performance of the proposed
work is evaluated in terms of energy efficiency and detection accuracy.
The first objective of this dissertation is to optimize the sensing and transmission
time to increase the bits transmitted per frame so as to achieve maximum energy efficiency
for single cognitive radio. To maximize the energy efficiency a Sub Optimal
Iterative Search Algorithm (SOISA) is proposed. This problem also considers the
i
interference occurred due to secondary user transmission to the primary user. The proposed
algorithm shows the superiority in terms of complexity and high value of energy
efficiency as compared to the other existing algorithms. The effects of change in sensing
time, transmission time and transmission power on energy efficiency are shown by
the simulation results.
Following this, the maximization of energy efficiency by optimizing the hard decision
fusion in case of multiple users cooperative spectrum sensing is considered as
another problem. A method to improve the energy efficiency by optimizing the number
of secondary users is proposed and the results are compared in frequency selective fading
and non fading environments. Three hard decision fusion rules viz. OR rule, AND
rule, and k-out-of-N rule are compared with respect to energy efficiency and number
of secondary users. It is clear after simulation that k-out-of-N rule outperforms others
in term of energy efficiency and Global probability-of-false-alarm.
The above two problems optimized the sensing and transmission time and number
of secondary users, separately. It is, however, possible to jointly optimize the above
three parameters to achieve maximum energy efficiency in the cooperative spectrum
sensing scenario. Therefore, joint optimization of sensing, transmission time and number
of secondary users is proposed with the protection of primary user from secondary
user transmission. In order to solve the problem, first the optimal expression for the
number of secondary users is obtained and then an iterative sub optimal algorithm is
proposed to achieve optimal sensing and transmission time. The effectiveness of this
work is demonstrated by extensive simulation results and illustrations. Herein, comprehensive
approaches for energy-efficiency maximization are proposed with different
algorithms. The aim of these comprehensive approaches is to improve energy efficiency
and provide consistency of the proposed algorithms. The simulation results
reveal that the energy efficiency is achieved as high as 10:4957 bits/Hz/Joule, which is
maximum as compared to other algorithms and methods.
The Non Orthogonal Multiple Access (NOMA) enabled cognitive radio technique
will increase the application of cognitive radio into future 5 G systems. The NOMA
enabled cognitive radio is proposed to improve the energy efficiency of single cognitive
radio networks. Here, the energy efficiency maximization problem with down link
NOMA technique is studied. A base station is assumed which is equipped with two
antennas, one for primary user and another for secondary user. The energy efficiency
maximization problem is formed as the ratio of maximum achievable sum rate and
total power consumed. Further, the energy efficiency is maximized for the NOMA and
compared with other existing conventional multiplexing techniques.