Multi-Fractal Traffic and Anomaly Detection in Computer Communications

Regular price €85.99
A01=Ming Li
advanced fractal traffic analysis
Anomaly detection
Author_Ming Li
Autocorrelation Function
Autocorrelation Function Estimate
Category=UTR
Category=UYF
Computer Communications
cyber-physical systems
Detrended Fluctuation Analysis
distributed denial service detection
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eq_computing
eq_isMigrated=1
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ergodic theory applications
Fractal Dimension
Fractal Time Series
Fractional Gaussian Noise
Fractional Order
Hurst Parameter
Local Irregularity
LRD
LRD Process
LRD Property
LSS
Multi-fractal Model
network performance analysis
Network traffic
Random Function
Riemann Liouville Type
Sample ACFs
self-similar processes
Small Time Scales
Standard White Noise
Stationarity Test
Stationary Increment Process
stochastic modelling techniques
Time series
Traffic modeling and simulation
Traffic Time Series
Traffic Traces
Vice Versa
Weyl Type

Product details

  • ISBN 9781032408460
  • Weight: 740g
  • Dimensions: 178 x 254mm
  • Publication Date: 29 Dec 2022
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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This book provides a comprehensive theory of mono- and multi-fractal traffic, including the basics of long-range dependent time series and 1/f noise, ergodicity and predictability of traffic, traffic modeling and simulation, stationarity tests of traffic, traffic measurement and the anomaly detection of traffic in communications networks.

Proving that mono-fractal LRD time series is ergodic, the book exhibits that LRD traffic is stationary. The author shows that the stationarity of multi-fractal traffic relies on observation time scales, and proposes multi-fractional generalized Cauchy processes and modified multi-fractional Gaussian noise. The book also establishes a set of guidelines for determining the record length of traffic in measurement. Moreover, it presents an approach of traffic simulation, as well as the anomaly detection of traffic under distributed-denial-of service attacks.

Scholars and graduates studying network traffic in computer science will find the book beneficial.

Ming Li, PhD, is a professor at Ocean College, Zhejiang University and the East China Normal University. He has been a contributor for many years to the fields of computer science, mathematics, statistics, and mechanics. He has authored more than 200 articles and 5 monographs on the subjects.