A Deep Learning-Based Approach for Cell Outage Compensation in NOMA Networks
Elaheh Vaezpour, Layla Majzoobi, Mohammad Akbari, Saeedeh Parsaeefard,, Halim Yanikomeroglu

TL;DR
This paper introduces a deep learning-based scheme for cell outage compensation in NOMA networks, optimizing user association and power allocation to improve fairness and spectral efficiency during cell failures.
Contribution
It proposes a novel low-complexity, near-optimal NOMA-based outage compensation method using a heuristic algorithm and a deep neural network for power allocation.
Findings
Approaches optimal spectral efficiency in outage scenarios.
Significantly improves fairness among users.
Increases the number of users served during outages.
Abstract
Cell outage compensation enables a network to react to a catastrophic cell failure quickly and serve users in the outage zone uninterruptedly. Utilizing the promising benefits of non-orthogonal multiple access (NOMA) for improving the throughput of cell edge users, we propose a newly NOMA-based cell outage compensation scheme. In this scheme, the compensation is formulated as a mixed integer non-linear program (MINLP) where outage zone users are associated to neighboring cells and their power are allocated with the objective of maximizing spectral efficiency, subject to maintaining the quality of service for the rest of the users. Owing to the importance of immediate management of cell outage and handling the computational complexity, we develop a low-complexity suboptimal solution for this problem in which the user association scheme is determined by a newly heuristic algorithm, and…
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Taxonomy
Methodstravel james
