Fractal Teletraffic Modeling and Delay Bounds in Computer Communications

Regular price €78.99
A01=Ming Li
ACF Estimate
advanced mathematical modelling
applied statistics
Arrival Traffic
Author_Ming Li
Category=UT
Category=UY
Computer communication networks
Delay bounds
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eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
File Names
Fourier transformation
Fractal Delay
Fractal Dimension
Fractal Time Series
Fractal traffic modeling
Fractional Derivative
Fractional Gaussian Noise
Fractional Noise
fractional noise modelling in communications
Fractional Order System
functional analysis methods
GC
Hilbert Space
Hurst Parameter
Linear Normed Spaces
Local Self-similarity
Long Term Average Rate
LRD
Min-plus convolution
Network Calculus
network traffic analysis
PSD Estimate
quality of service optimisation
stochastic processes
Theoretic ACF
Time series analysis
Traffic Modeling
Traffic Time Series
Traffic Traces

Product details

  • ISBN 9781032212869
  • Weight: 172g
  • Dimensions: 152 x 229mm
  • Publication Date: 03 May 2022
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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By deploying time series analysis, Fourier transform, functional analysis, min-plus convolution, and fractional order systems and noise, this book proposes fractal traffic modeling and computations of delay bounds, aiming to improve the quality of service in computer communication networks.

As opposed to traditional studies of teletraffic delay bounds, the author proposes a novel fractional noise, the generalized fractional Gaussian noise (gfGn) approach, and introduces a new fractional noise, generalized Cauchy (GC) process for traffic modeling.

Researchers and graduates in computer science, applied statistics, and applied mathematics will find this book beneficial.

Ming Li, PhD, is a professor at Ocean College, Zhejiang University, and the East China Normal University. He has been an active contributor for many years to the fields of computer communications, applied mathematics and statistics, particularly network traffic modeling, fractal time series, and fractional oscillations. He has authored more than 200 articles and 5 monographs on the subjects. He was identified as the Most Cited Chinese Researcher by Elsevier in 2014–2020. Professor Li was recognized as a top 100,000 scholar in all fields in 2019–2020 and a top 2% scholar in the field of Numerical and Computational Mathematics in 2021 by Prof. John P. A. Ioannidis, Stanford University.

Ming Li, PhD, is a professor at Ocean College, Zhejiang University, as well as at the East China Normal University. He has been an active contributor for many years to the fields of computer communications, applied mathematics and statistics,particularly network traffic modeling, fractal time series, and fractional oscillations. He has authored more than 200 articles and 5 monographs on the subjects. He was identified as the Most Cited Chinese Researcher by Elsevier in 2014–2020. Professor Li was recognized as a top 100,000 scholar in all fields in 2019–2020 and a top 2% scholar in the field of Numerical and Computational Mathematics in 2021 by Prof. John P. A. Ioannidis, Stanford University. (https://orcid.org/my-orcid?orcid=0000-0002-2725-353X)