Abstract:
With the tremendous increase in the number of mobile devices and a plethora of
multimedia services, there is a demand for the development of a new access scheme
that can have properties of high capacity and spectral e ciency, low latency, and
capabilities to accommodate a massive number of devices. Non-orthogonal multiple
access (NOMA) is proposed as a promising access technology for beyond fth
generation (B5G) and sixth generation (6G) communication systems having all the
desired properties. Unlike orthogonal multiple access (OMA), the same physical
resource (e.g., frequency and time) but with di erent power is allocated to multiple
users in NOMA, which greatly increases spectral e ciency. The combination
of non-orthogonal multiple access (NOMA) and cooperative communications can
be a suitable solution for the fth-generation (5G) and beyond 5G (B5G) wireless
systems with massive connectivity, because it can improve fairness compared
to the non-cooperative NOMA. This thesis o ers a comprehensive approach to
this recently emerging technology, from the fundamental concepts of NOMA to
its combination with space-time block codes (STBC) to cooperate with users with
weak channel conditions, as well as analysis of the e ect of practical impairments
such as timing o sets, imperfect successive interference cancellation (SIC) and imperfect
channel state information (CSI). We derive closed-form expressions of the
received signals in the presence of such realistic impairments and then use them
to evaluate outage probability. Further, we provide intuitive insights into the impact
of each impairment on the outage performance through asymptotic analysis
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at a high transmit signal-to-noise ratio (SINR). We also compare the complexity
of STBC-CNOMA with existing cooperative NOMA protocols for a given number
of users.
Also, to meet the highly diverse quality-of-service (QoS) requirements of Internetof-
Things ( IoT) devices, we propose a novel Q-learning-based self-organizing and
self-optimizing multiple access technique for radio resource allocation in NOMA
systems. We optimize the sum-rate and spectral e ciency (SE) of the overall network
by using a Q-learning algorithm that assigns optimal bandwidth and power
to the users with the same range of data rate requirements. Simulation results
show that the proposed algorithm can signi cantly enhance the overall system
throughput and SE while satisfying heterogeneous QoS requirements.