Several factors are found to influence either short or long-term burstiness in Transmission Control Protocol (TCP) flow across many networking facilities and services. Predicting such self-similar traffic has become necessary to achieve better performance. In this study, ANN model was deployed to simulate College Campus network traffic. A Feed Forward Backpropagation Artificial Neural Network (ANN) and Wireshark tools were implemented to study the network Scenario. The predicted series were then compared with the corresponding real traffic series (Mobile Telephone-Network (MTN)-Nigeria). Suitable performance measurements of the Means Square Error (MSE) and the Regression Coefficient were used. Our results showed that burstiness is present i...
With the rapid development of the Internet infrastructure, in recent years, Internet traffic classi...
The paper presents the results of building neural network predictive models of the occupancy of the ...
The authors discuss a technique that offers the combination of shared bandwidth and rejection rate p...
Several factors are found to influence either short or long-term burstiness in Transmission Control ...
This paper proposes using artificial neural network (ANN)-based architectures for modeling and predi...
Introduction The aim of this research is to develop a tool that can accurately, quickly and simply c...
Artificial Neural Networks (ANNs) have attracted increasing attention from researchers in many field...
Abstract – Artificial Neural Networks have for long been used for nonlinear pattern recognition and ...
In this master’s thesis are discussed static properties of network traffic trace. There are also add...
Different mathematical models exist for modelling TCP algorithms and interrelations between TCP and ...
Artificial Neural Networks (ANNs) have been used in many fields for a variety of applications, and p...
The appliance of machine learning to TCP/IP traffic flows is not new. However, this projects aims to...
Modeling network traffic is complex and difficult. This is especially true on large-scale global net...
In a wireless network environment accurate and timely estimation or prediction of network traffic ha...
The dynamics of data traffic intensity is examined using traffic measurements at the interface switc...
With the rapid development of the Internet infrastructure, in recent years, Internet traffic classi...
The paper presents the results of building neural network predictive models of the occupancy of the ...
The authors discuss a technique that offers the combination of shared bandwidth and rejection rate p...
Several factors are found to influence either short or long-term burstiness in Transmission Control ...
This paper proposes using artificial neural network (ANN)-based architectures for modeling and predi...
Introduction The aim of this research is to develop a tool that can accurately, quickly and simply c...
Artificial Neural Networks (ANNs) have attracted increasing attention from researchers in many field...
Abstract – Artificial Neural Networks have for long been used for nonlinear pattern recognition and ...
In this master’s thesis are discussed static properties of network traffic trace. There are also add...
Different mathematical models exist for modelling TCP algorithms and interrelations between TCP and ...
Artificial Neural Networks (ANNs) have been used in many fields for a variety of applications, and p...
The appliance of machine learning to TCP/IP traffic flows is not new. However, this projects aims to...
Modeling network traffic is complex and difficult. This is especially true on large-scale global net...
In a wireless network environment accurate and timely estimation or prediction of network traffic ha...
The dynamics of data traffic intensity is examined using traffic measurements at the interface switc...
With the rapid development of the Internet infrastructure, in recent years, Internet traffic classi...
The paper presents the results of building neural network predictive models of the occupancy of the ...
The authors discuss a technique that offers the combination of shared bandwidth and rejection rate p...