Abstract: This article presents three methods to forecast accurately the amount of traffic in TCP=IP based networks: a novel neural network ensemble approach and two important adapted time series methods (ARIMA and Holt-Winters). In order to assess their accuracy, several experiments were held using real-world data from two large Internet service providers. In addition, different time scales (5min, 1 h and 1 day) and distinct forecasting lookaheads were analysed. The experiments with the neural ensemble achieved the best results for 5min and hourly data, while the Holt-Winters is the best option for the daily forecasts. This research opens possibilities for the development of more efficient traffic engineering and anomaly detection tools, w...
Wide area networking infrastructures (WANs), particularly science and research WANs, are the backbon...
An artificial neural network (ANN) can improve forecasts through pattern recognition of historical d...
The paper presents the results of building neural network predictive models of the occupancy of the ...
This article presents three methods to forecast accurately the amount of traffic in TCP=IP based net...
By improving Internet traffic forecasting, more efficient TCP/IP traffic control and anomaly detecti...
Part 1: Systems, Networks and ArchitecturesInternational audienceInternet traffic prediction is an i...
Forecasting Internet traffic is receiving an increasing attention from the computer networks domain....
Abstract--There have been a number of methods presented by various researchers for traffic predictio...
The advance knowledge of future traffic load is helpful for network service providers to optimize th...
Research of Prediction of Internet Traffic Using Methods of Neural Networks Aim of the work: investi...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
An application of time series prediction, to traffic forecasting in ATM networks, using neural nets ...
Artificial Neural Networks (ANNs) have been used in many fields for a variety of applications, and p...
Wide area networking infrastructures (WANs), particularly science and research WANs, are the backbon...
An artificial neural network (ANN) can improve forecasts through pattern recognition of historical d...
The paper presents the results of building neural network predictive models of the occupancy of the ...
This article presents three methods to forecast accurately the amount of traffic in TCP=IP based net...
By improving Internet traffic forecasting, more efficient TCP/IP traffic control and anomaly detecti...
Part 1: Systems, Networks and ArchitecturesInternational audienceInternet traffic prediction is an i...
Forecasting Internet traffic is receiving an increasing attention from the computer networks domain....
Abstract--There have been a number of methods presented by various researchers for traffic predictio...
The advance knowledge of future traffic load is helpful for network service providers to optimize th...
Research of Prediction of Internet Traffic Using Methods of Neural Networks Aim of the work: investi...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
Internet traffic modelling and forecasting approaches have been studied and developed for more than ...
The main aim of the research was to produce the short-term forecasts of network traffic loads by mea...
An application of time series prediction, to traffic forecasting in ATM networks, using neural nets ...
Artificial Neural Networks (ANNs) have been used in many fields for a variety of applications, and p...
Wide area networking infrastructures (WANs), particularly science and research WANs, are the backbon...
An artificial neural network (ANN) can improve forecasts through pattern recognition of historical d...
The paper presents the results of building neural network predictive models of the occupancy of the ...