Edge Computing Aware NOMA for 5G Networks
Abbas Kiani, Nirwan Ansari

TL;DR
This paper introduces an edge computing aware NOMA scheme for 5G networks that optimizes energy consumption of MEC users by joint resource allocation and user clustering, enhancing network efficiency and latency reduction.
Contribution
It proposes a novel NOMA-based framework integrating edge computing and resource optimization, including a heuristic clustering algorithm and convex power control, for improved MEC performance.
Findings
Reduced MEC users' uplink energy consumption.
Effective joint allocation of frequency and computing resources.
Enhanced network capacity and latency performance.
Abstract
With the fast development of Internet of things (IoT), the fifth generation (5G) wireless networks need to provide massive connectivity of IoT devices and meet the demand for low latency. To satisfy these requirements, Non-Orthogonal Multiple Access (NOMA) has been recognized as a promising solution for 5G networks to significantly improve the network capacity. In parallel with the development of NOMA techniques, Mobile Edge Computing (MEC) is becoming one of the key emerging technologies to reduce the latency and improve the Quality of Service (QoS) for 5G networks. In order to capture the potential gains of NOMA in the context of MEC, this paper proposes an edge computing aware NOMA technique which can enjoy the benefits of uplink NOMA in reducing MEC users' uplink energy consumption. To this end, we formulate a NOMA based optimization framework which minimizes the energy consumption…
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