The dissertation investigated the creation of an anomaly detection approach to identify anomalies in the SGW elements of a LTE network. Unsupervised techniques were compared and used to identify and remove anomalies in the training data set. This “cleaned” data set was then used to train an autoencoder in an semi-supervised approach. The resultant autoencoder was able to indentify normal observations. A subsequent data set was then analysed by the autoencoder. The resultant reconstruction errors were then compared to the ground truth events to investigate the effectiveness of the autoencoder’s anomaly detection capability
Network anomaly detection system enables to monitor computer network that behaves differently from t...
Data analysis to identifying attacks/anomalies is a crucial task in anomaly detection and network an...
Anomaly detection has attracted the attention of researchers from a variety of backgrounds as it fin...
Functioning mobile telecommunication networks are taken for granted in present-day society. The netw...
This paper proposes an anomaly detection framework that utilizes key performance indicators (KPIs) a...
Anomalies in telecommunication networks can be signs of errors or malfunctions, which can originate ...
Word processed copy.Includes bibliographical references (leaves 118-121).In this research, we presen...
Communication networks are complex systems consisting of many components each producing a multitude ...
Unsupervised anomaly detection algorithms are applied with the purpose of identifying performance re...
Functioning mobile telecommunication networks are taken for granted in present-day society. The netw...
We propose an unsupervised learning based anomaly detection framework for identifying cells experien...
Huge amounts of operation data are constantly collected from the performance monitoring and system l...
International audienceA mobile operator offers many mobile data communication services to its users,...
The efficient and effective monitoring of mobile networks is vital given the number of users who rel...
The increasing popularity of networking devices at workplaces leads to an exponential increase in th...
Network anomaly detection system enables to monitor computer network that behaves differently from t...
Data analysis to identifying attacks/anomalies is a crucial task in anomaly detection and network an...
Anomaly detection has attracted the attention of researchers from a variety of backgrounds as it fin...
Functioning mobile telecommunication networks are taken for granted in present-day society. The netw...
This paper proposes an anomaly detection framework that utilizes key performance indicators (KPIs) a...
Anomalies in telecommunication networks can be signs of errors or malfunctions, which can originate ...
Word processed copy.Includes bibliographical references (leaves 118-121).In this research, we presen...
Communication networks are complex systems consisting of many components each producing a multitude ...
Unsupervised anomaly detection algorithms are applied with the purpose of identifying performance re...
Functioning mobile telecommunication networks are taken for granted in present-day society. The netw...
We propose an unsupervised learning based anomaly detection framework for identifying cells experien...
Huge amounts of operation data are constantly collected from the performance monitoring and system l...
International audienceA mobile operator offers many mobile data communication services to its users,...
The efficient and effective monitoring of mobile networks is vital given the number of users who rel...
The increasing popularity of networking devices at workplaces leads to an exponential increase in th...
Network anomaly detection system enables to monitor computer network that behaves differently from t...
Data analysis to identifying attacks/anomalies is a crucial task in anomaly detection and network an...
Anomaly detection has attracted the attention of researchers from a variety of backgrounds as it fin...