Title of article :
A Proactive Context-Aware Self-Healing Scheme for 5G Using Machine Learning
Author/Authors :
Nikmanesh, Shirin Department of Technology and Engineering - Central Tehran Branch Islamic Azad University Tehran, Iran , Akbari, Mohammad Communication Technology Faculty ICT Research Institute (ITRC) Tehran, Iran
Abstract :
Future mobile communication networks particularly 5G networks require to be efficient, reliable and agile
to fulfill the targeted performance requirements. All layers of the network management need to be more intelligent due
to the density and complexity anticipated for 5G networks. In this regard, one of the enabling technologies to manage
the future mobile communication networks is Self-Organizing Network (SON). Three common types of SON are selfconfiguration,
Self-Healing (SH) and self-optimization. In this paper, a framework is developed to analyze proactive SH
by investigating the effect of recovery actions executed in sub-health states. Our proposed framework considers both
detection and compensation processes. Learning method is employed to classify the system into several sub-health
(faulty) states in detection process. The system is modeled by Markov Decision Process (MDP) in compensation process
in which the equivalent Linear Programing (LP) approach is utilized to find the action or policy that maximizes a given
performance metric. Numerical results obtained in several scenarios with different goals demonstrate that the optimized
proposed algorithm in compensation process outperforms the algorithm with randomly selected actions.
Keywords :
K-means clustering , machine learning , linear programming , markov decision problem (MDP) , fault detection and compensation , self-healing , self-organizing networks (SON) , fifth generation cellular network (5G) , component
Journal title :
International Journal of Information and Communication Technology Research