Root cause analysis (RCA) is a common and recurring task performed by operators of cellular networks. It is done mainly to keep customers satisfied with the quality of offered services and to maximize return on investment (ROI) by minimizing and where possible eliminating the root causes of faults in cellular networks. Currently, the actual detection and diagnosis of faults or potential faults is still a manual and slow process often carried out by network experts who manually analyze and correlate various pieces of network data such as, alarms, call traces, configuration management (CM) and key performance indicator (KPI) data in order to come up with the most probable root cause of a given network fault. In this paper, we propose an autom...
Mobile traffic and number of connected devices have been increasing exponentially nowadays, with cus...
AbstractThis paper presents a novel approach for self-healing in cellular networks based on the appl...
We propose an unsupervised learning based anomaly detection framework for identifying cells experien...
Root cause analysis (RCA) is a common and recurring task performed by operators of cellular networks...
International audienceToday's network operators strive to create self-healing cellular networks that...
AbstractThe recent developments in cellular networks, along with the increase in services, users and...
International audienceWith the growth of cellular networks, the supervision and troubleshooting task...
This doctoral dissertation is aimed at the creation of comprehensive and innovative Self-Organizing ...
AbstractThe Self-Organizing Networks (SON) paradigm proposes a set of functions to automate network ...
Mobile networks represent a considerable industry globally and are known to rely on robust and highl...
Abstract—The Self-Organizing Networks (SON) concept in-cludes the functional area known as self-heal...
A self‐healing block in self‐organizing network consists of two modules, namely cell outage detectio...
Troubleshooting encompasses a variety of processes required for the solution of mobile network degra...
In this paper, we suggest a new research direction and a future vision for Self-Healing (SH) in Self...
The demand for mobile data traffic is about to explode and this drives operators to find ways to fur...
Mobile traffic and number of connected devices have been increasing exponentially nowadays, with cus...
AbstractThis paper presents a novel approach for self-healing in cellular networks based on the appl...
We propose an unsupervised learning based anomaly detection framework for identifying cells experien...
Root cause analysis (RCA) is a common and recurring task performed by operators of cellular networks...
International audienceToday's network operators strive to create self-healing cellular networks that...
AbstractThe recent developments in cellular networks, along with the increase in services, users and...
International audienceWith the growth of cellular networks, the supervision and troubleshooting task...
This doctoral dissertation is aimed at the creation of comprehensive and innovative Self-Organizing ...
AbstractThe Self-Organizing Networks (SON) paradigm proposes a set of functions to automate network ...
Mobile networks represent a considerable industry globally and are known to rely on robust and highl...
Abstract—The Self-Organizing Networks (SON) concept in-cludes the functional area known as self-heal...
A self‐healing block in self‐organizing network consists of two modules, namely cell outage detectio...
Troubleshooting encompasses a variety of processes required for the solution of mobile network degra...
In this paper, we suggest a new research direction and a future vision for Self-Healing (SH) in Self...
The demand for mobile data traffic is about to explode and this drives operators to find ways to fur...
Mobile traffic and number of connected devices have been increasing exponentially nowadays, with cus...
AbstractThis paper presents a novel approach for self-healing in cellular networks based on the appl...
We propose an unsupervised learning based anomaly detection framework for identifying cells experien...