TITLE:
A Precoding Real-Time Buffer Based Self-Healing Solution for 5G Networks
AUTHORS:
Tamer Omar, Thomas Ketseoglou, Omar Naffaa, Asatur Marzvanyan, Connor Carr
KEYWORDS:
Self-Healing, MIMO-Beamforming, Millimeter Wavelength, Base Station, Latency
JOURNAL NAME:
Journal of Computer and Communications,
Vol.9 No.6,
June
8,
2021
ABSTRACT: In order to meet key requirements imposed by transitioning to a 5G network, new network management techniques must be employed in order to increase network reliability and efficiency. Most notably, it is important that a Self-Organizing Network (SON) is able to recover autonomously from network failure or congestion through Self-Healing procedures (i.e. autonomous detection, diagnosis, and correction). This paper aims to develop a self-healing algorithm that can effectively “heal” a 5G network by testing a proposed self-healing algorithm within a network simulator that adheres to current 5G standards. The simulator developed in this paper aims to model a network of small cells that can inherit one of multiple states (healthy, congested, and failing) to validate the effectiveness of a programmed self-healing algorithm in recovering a simulated network. Results show that the application of a self-healing in a network is able to resolve issues related to Quality of Service (QoS) and reduced network data rates in portions of a network that are in a partially congested or failing state.