Title :
Fast self-similar teletraffic generation based on FGN and wavelets
Author :
Jeong, Hae-Duck J. ; McNickle, Don ; Pawlikowski, K.
Author_Institution :
Dept. of Comput. Sci., Canterbury Univ., Christchurch, New Zealand
fDate :
Sept. 28 1999-Oct. 1 1999
Abstract :
It is generally accepted that self-similar (or fractal) processes may provide better models of teletraffic in modern computer networks than Poisson processes. Thus, an important requirement for conducting simulation studies of telecommunication networks is the ability to generate long synthetic stochastic self-similar sequences. A new generator of pseudo-random self-similar sequences, based on fractional Gaussian noise (FGN) and a wavelet transform, is proposed and analysed in this paper. Specifically, this generator uses Daubechies wavelets. The motivation behind this selection of wavelets is that Daubechies wavelets lead to more accurate results by better matching the self-similar structure of long-range dependent processes, than other types of wavelets. The statistical accuracy and time required to produce sequences of a given (long) length are experimentally studied. This generator shows a high level of accuracy of the output data (in the sense of the Hurst parameter) and is fast. Its theoretical algorithmic complexity is O(n).
Keywords :
Gaussian noise; computer networks; fractals; sequences; stochastic processes; telecommunication traffic; wavelet transforms; Daubechies wavelets; FGN; Hurst parameter; algorithmic complexity; computer networks; fractal; fractional Gaussian noise; long-range dependent processes; pseudo-random self-similar sequences; self-similar teletraffic generation; simulation; statistical accuracy; stochastic self-similar sequences; wavelet transform; Computer networks; Computer science; Fractals; Gaussian noise; Low-frequency noise; Mathematical model; Noise generators; Telecommunication traffic; Tellurium; Traffic control;
Conference_Titel :
Networks, 1999. (ICON '99) Proceedings. IEEE International Conference on
Conference_Location :
Brisbane, Queensland, Australia
Print_ISBN :
0-7695-0243-1
DOI :
10.1109/ICON.1999.796163