The present article deals with statistical university network traffic, by applying the methods of self-similarity and chaos analysis. The object of measurement is Šiauliai University LitNet network node maintaining institutions of education of the northern Lithuania region. Time series of network traffic characteristics are formed by registering amount of information packets in a node at different regimes of network traffic and different values of discretion of registered information are present. Measurement results are processed by calculating Hurst index and estimating reliability of analysis results by applying the statistical method. Investigation of the network traffic allowed us drawing conclusions that time series bear features of se...
Abstract- Last scientific publication shows that real network traffic is self-similar and its proper...
We present procedures and tools for the analysis of network traffic measurements. The tools consist ...
This paper exploits a newish self-organizing clustering method to analyze network data. The method i...
The present article deals with statistical university network traffic, by applying the methods of se...
The field of the dissertation research is features of computer network packet traffic, the impact of...
The article analyses the indicators implemented for investigating the network self-similarity: the H...
The field of the dissertation research is features of computer network packet traffic, the impact of...
Fractal nature of computer network traffic involves a big impact on performance of queueing systems ...
The self-similarity properties of the considered traffic were checked on different time scales obtai...
?As the number of hosts connected to the corporate network, increasing not only the amount of infor...
The optimal computer network performance models require accurate traffic models, which can capture t...
There is a growing evidence that aggregated traffic in a variety of network, with different extent ...
Performing research on live network traffic requires the traffic to be well documented and described...
Many researchers have discussed the effects of heavy-tailedness in network traffic patterns and show...
Network traffic measurement studies have shown the presence of self-similar behavior in both local a...
Abstract- Last scientific publication shows that real network traffic is self-similar and its proper...
We present procedures and tools for the analysis of network traffic measurements. The tools consist ...
This paper exploits a newish self-organizing clustering method to analyze network data. The method i...
The present article deals with statistical university network traffic, by applying the methods of se...
The field of the dissertation research is features of computer network packet traffic, the impact of...
The article analyses the indicators implemented for investigating the network self-similarity: the H...
The field of the dissertation research is features of computer network packet traffic, the impact of...
Fractal nature of computer network traffic involves a big impact on performance of queueing systems ...
The self-similarity properties of the considered traffic were checked on different time scales obtai...
?As the number of hosts connected to the corporate network, increasing not only the amount of infor...
The optimal computer network performance models require accurate traffic models, which can capture t...
There is a growing evidence that aggregated traffic in a variety of network, with different extent ...
Performing research on live network traffic requires the traffic to be well documented and described...
Many researchers have discussed the effects of heavy-tailedness in network traffic patterns and show...
Network traffic measurement studies have shown the presence of self-similar behavior in both local a...
Abstract- Last scientific publication shows that real network traffic is self-similar and its proper...
We present procedures and tools for the analysis of network traffic measurements. The tools consist ...
This paper exploits a newish self-organizing clustering method to analyze network data. The method i...