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Chapters 9

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Note: Brownian motion process B(t) is self-similar with H = 0.5. SEE ... Mean Waiting Time (Delay) Ethernet/ISDN Study. Chapter 9 Self-Similar Traffic. 18 ... – PowerPoint PPT presentation

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Title: Chapters 9


1
Chapters 9
  • Self-Similar
  • Traffic

2
Introduction- Motivation
  • Validity of the queuing models we have studied
    depends on the Poisson nature of data traffic
  • Recent studies show that Internet traffic
    patterns are often bursty and self-similar, not
    Poisson (exponential)
  • Patterns appear through time
  • Understanding of the characteristics of
    self-similar traffic is essential to enable
    analysis of modern networks

3
Introduction- Motivation
Exponential Distribution
Exponential Density
EX ?X 1/?
F(x) PrX?x 1 e-?x
4
Order
Sierpinski triangle
can be found
in chaos.
5
Self-Similar Time Series Example
0 8 24 32 72 80 96
104 216 224 240 248 288 296 312
320 648 656 672 680 720 728 744 752
864 872 888 896 936 944 960 968
6
Self-Similar Time Series Example
  • Characteristics
  • Bursty
  • Repeating
  • Pattern independent of scale

A phenomenon that is self-similar looks the same
or behaves the same when viewed at different
degrees of aggregation.
7
Cantor Set 5 levels of recursion
  • Construction of Cantor Sets
  • Begin with closed interval 0,1
  • Remove the open middle third of the interval
  • Repeat for each succeeding interval.
  • Properties
  • Has structure at arbitrarily small scales
  • The structure repeats

These properties do not hold indefinitely, but
over a large range of scales, many real phenomena
exhibit self-similarity.
8
Relevance in Networking
  • Clustering (a.k.a. burstiness) is common in
    network traffic patterns
  • patterns are typically persistent through time
  • the clusters may themselves be clustered
  • Poisson traffic demonstrates clustering in short
    term, but smoothes over long term (known as the
    memoryless property)
  • During bursts due to clustering, queue sizes in
    switches/routers may build up more than the
    classical M/M/1 model predicts
  • impact on buffer sizes?

9
Relevance in Networking
  • Bottom line -
  • The M/M/1 queuing model assumes that arrivals and
    service times are exponential and, therefore,
    memoryless
  • real network traffic patterns might not be
    memoryless, therefore the M/M/1 model might be
    optimistic

10
Self-Similar Stochastic Processes
g(t) is similar to g(t aT), a 0, ?1, ?2,
g(t) is not similar to g(t aT), a 0, ?1, ?2,
11
Continuous-Time Self-Similar Stochastic Processes
  • Continuous time 0 ?t ? ?
  • A stochastic process x(t) is statistically
    self-similar with parameter H (0.5 ? H ? 1), if
    for a ? 0
  • a -H x(at) has the same statistical properties as
    x(t)
  • In other words
  • Ex(t) mean
  • Varx(t) variance
  • Rx(t, s)
    autocorrelation

12
Hurst Parameter (H)
  • Measure of the persistence of a statistical
    phenomenon.. the measure of the long-range
    dependence of a stochastic process
  • H 0.5 indicates absence of long-term dependence
  • As H approaches 1, the greater the degree of
    long-term dependence
  • Note Brownian motion process B(t) is
    self-similar with H 0.5

SEE Appendix 9A
13
Heavy-Tailed Distributions
14
Pareto Heavy-Tailed Distribution
  • Characteristics
  • f(x) F(x) 0 (x ? k)
  • F(x) 1 - (x ? k, ? ? 0)
  • f(x) (x ? k, ? ? 0)
  • EX k (? ? 1)
  • Note that for k 1,
  • ? ? 2, infinite variance
  • ? ? 1, infinite mean and variance

15
Pareto and Exponential Examples Density Functions
Compared
16
Examples of Self-Similar Data Traffic
  • LAN (Ethernet)
  • self-similar, H 0.9
  • Pareto fit for ? 1.2
  • World-Wide Web
  • browser traffic nicely fits Pareto distribution
    for 1.16 ? ? ? 1.5
  • file sizes on WWW seem to fit this distribution
    as well
  • TCP - FTP, TELNET
  • session arrivals approximate Poisson
  • traffic patterns are bursty heavy-tailed

17
Mean Waiting Time (Delay) Ethernet/ISDN Study
18
Findings/Implications?
  • Higher loads lead to higher degrees of
    self-similarity
  • performance issues most relevant at high loads
  • Traditional Poisson modeling of traffic proven
    inadequate
  • leads to inaccurate queuing analysis results
  • increased delays, buffer size requirements
  • applicable to ATM, frame relay, 100BaseT
    switches, WAN routers, etc.
  • note excessive cell loss in first generation ATM
    switches
  • Pareto modeling yields better (more conservative)
    results

19
Self-Similar Modeling (Norros)
  • Attempts to develop reliable analytical model of
    self-similar behavior
  • uses Fractional Brownian Motion (FBM) process
    (sect. 9.2) as basis
  • Buffer size can often be estimated using
  • q ?1/2(1-H) / (1-?)H/(1-H)
  • (note that for H 0.5, this simplifies to
    ?/(1-?), the M/M/1 model)

20
Self-Similar Storage Model (Norros)
21
Findings/Implications?
  • Buffer requirements much higher at lower levels
    of utilization for higher degrees of
    self-similarity (higher H)
  • THEREFORE
  • If higher levels of utilization are required,
    much larger buffers are needed for self-similar
    traffic than would be predicted using classical
    modeling

So, what does all this really mean?
22
Modeling and Estimating Self-Similarity
  • Task determine if time series of data is
    actually is self-similar, and estimate the value
    of H
  • Variance Time Plot Varx(m) vs. m
  • R/S Plot logR/S vs. N
  • Periodogram spectral density estimate
  • Whittles Estimator estimate H, assuming
    self-similarity
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