The simplest models with long-range dependence (LRD) are self-similar processes. Self-similar processes have been formally considered for modeling packet traffic in communication networks. The fractional Gaussian noise (FGN) is a proper example of exactly self-similar processes. Several numeric approximation methods are considered and reviewed, two methods are found that are able to provide a better accuracy and less running time than previous approximation methods for synthesizing the power spectrum of FGN. The first method is based on a second-order approximation. It is demonstrated that a parabolic curve can be indirectly used to approximate the power spectrum of FGN. The second method is based on cubic splines. Despite the fact that spl...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Abstract A fractional Fourier transform (FrFT) based es-timation method is introduced in this paper ...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Abstract:- Fractional Gaussian noise (fGn) is a commonly used model of network traffic with long-ran...
Recent network traffic studies argue that network arrival pro-cesses are much more faithfully modele...
: Teletraffic models based on self similar processes are emerging as promising mathematical represen...
We present a new method to estimate the Hurst parameter of certain classes of random processes. Our...
D.Phil. (Mathematical Statistics)Fractional Brownian motion and its increment process, fractional Ga...
This article focuses on simulating fractional Brownian motion (fBm). Despite the availability of sev...
Originally submitted to IEEE Transactions on Information Theory, August 1999.1/f noise and statistic...
Abstract:- This paper revisits three important concepts in fractal type network traffic, namely, sel...
Abstract:- This paper addresses three models of traffic based on fractional Gaussian noise (fGn). Th...
The goal of this thesis is to explore a way of performing efficient Bayesian inference of fractional...
Abstract—In this paper, by investigating the definitions of the fractional power spectrum and the fr...
Abstract- The intensity of long-range dependence (LRD) of the communications network traffic can be ...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Abstract A fractional Fourier transform (FrFT) based es-timation method is introduced in this paper ...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Abstract:- Fractional Gaussian noise (fGn) is a commonly used model of network traffic with long-ran...
Recent network traffic studies argue that network arrival pro-cesses are much more faithfully modele...
: Teletraffic models based on self similar processes are emerging as promising mathematical represen...
We present a new method to estimate the Hurst parameter of certain classes of random processes. Our...
D.Phil. (Mathematical Statistics)Fractional Brownian motion and its increment process, fractional Ga...
This article focuses on simulating fractional Brownian motion (fBm). Despite the availability of sev...
Originally submitted to IEEE Transactions on Information Theory, August 1999.1/f noise and statistic...
Abstract:- This paper revisits three important concepts in fractal type network traffic, namely, sel...
Abstract:- This paper addresses three models of traffic based on fractional Gaussian noise (fGn). Th...
The goal of this thesis is to explore a way of performing efficient Bayesian inference of fractional...
Abstract—In this paper, by investigating the definitions of the fractional power spectrum and the fr...
Abstract- The intensity of long-range dependence (LRD) of the communications network traffic can be ...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...
Abstract A fractional Fourier transform (FrFT) based es-timation method is introduced in this paper ...
The outputs of many real-world complex dynamical systems are time series characterized by power-law ...