We applied a nonlinear time series analysis to the traffic measurements, obtained at the input of a medium size local area network. In order to reconstruct the underlying dynamical system, we estimated the correlation length τ and the embedding dimension dE of the traffic time series. In order to extract the regular part from traffic data, we filtered out the high frequency, "noisy" part. The reliable values of τ and dE permitted to apply a layered neural network for the identification and reconstruction of the underlying dynamical system. © 2002 Elsevier Science Ltd. All rights reserved.SCOPUS: cp.jinfo:eu-repo/semantics/publishe
This paper deals with a method using a specific class of neural networks whose learning phase is bas...
Abstract The Internet performance is characterized by successive periods of congestion and subsidenc...
Many researchers have discussed the effects of heavy-tailedness in network traffic patterns and show...
We applied a nonlinear time series analysis approach to the traffic measurements obtained at the inp...
The dynamics of data traffic intensity is examined using traffic measurements at the interface switc...
Research of Prediction of Internet Traffic Using Methods of Neural Networks Aim of the work: investi...
Book chapterSince the discovery of long range dependence in Ethernet LAN traces there has been signi...
The comprehension of backbone and edge network traffic dynamics provides the foundational element fo...
Studies of the Internet have typically focused either on the routing system, i.e. the paths chosen t...
The paper presents the results of building neural network predictive models of the occupancy of the ...
Abstract: This article presents three methods to forecast accurately the amount of traffic in TCP=IP...
Current methods for modelling network traffic bandwidth do not sufficiently take into account the im...
Traditional Internet traffic studies have primarily focused on the temporal characteristics of packe...
ABSTRACT. The estimation of traffic matrices in a communications network on the basis of multi-perio...
The advance knowledge of future traffic load is helpful for network service providers to optimize th...
This paper deals with a method using a specific class of neural networks whose learning phase is bas...
Abstract The Internet performance is characterized by successive periods of congestion and subsidenc...
Many researchers have discussed the effects of heavy-tailedness in network traffic patterns and show...
We applied a nonlinear time series analysis approach to the traffic measurements obtained at the inp...
The dynamics of data traffic intensity is examined using traffic measurements at the interface switc...
Research of Prediction of Internet Traffic Using Methods of Neural Networks Aim of the work: investi...
Book chapterSince the discovery of long range dependence in Ethernet LAN traces there has been signi...
The comprehension of backbone and edge network traffic dynamics provides the foundational element fo...
Studies of the Internet have typically focused either on the routing system, i.e. the paths chosen t...
The paper presents the results of building neural network predictive models of the occupancy of the ...
Abstract: This article presents three methods to forecast accurately the amount of traffic in TCP=IP...
Current methods for modelling network traffic bandwidth do not sufficiently take into account the im...
Traditional Internet traffic studies have primarily focused on the temporal characteristics of packe...
ABSTRACT. The estimation of traffic matrices in a communications network on the basis of multi-perio...
The advance knowledge of future traffic load is helpful for network service providers to optimize th...
This paper deals with a method using a specific class of neural networks whose learning phase is bas...
Abstract The Internet performance is characterized by successive periods of congestion and subsidenc...
Many researchers have discussed the effects of heavy-tailedness in network traffic patterns and show...