Title: Prof' K'J'Blow, Dr' Marc Eberhard and Dr' Scott Fowler
1Significance of Joint Density Plots in Markov
Internet Traffic Modelling
AHMED D. SHAIKH
Prof. K.J.Blow, Dr. Marc Eberhard and Dr. Scott
Fowler Adaptive Communications Networks Research
Group Electronic Engineering Aston University
2Outline
3Outline
4Traffic Modelling Approaches
- Two types of Approaches
- Black Box models
- Internal structure is unknown. Opaque to user.
- Examples HMM, MMPP, BMAP
- White Box models
- Transparent structure. Has a physical meaning.
- Examples Classic Markov Models, On-Off models
5Markov Models An Introduction
- Probabilistic models defining a stochastic
process with finite number of states observing
the Markov Property. - Transitions occur with a fixed
- transition rate Rij.
- States can model activities of traffic
- sources on a network.
- Inter-Arrival times are exponentially
- distributed.
- Packet level statistics obtained from Monte Carlo
simulations are expressed in IPT (Inter-Packet
times)
6Outline
7Simple Two State Markov Traffic Model
- The sequence of packets will be ABABABABABABAB..
8Two state Model (Analytical analysis contd..)
- Two state models will have equal number of
visits to each state. - So, V1 V2 0.5
- Probability densities of time spent in each
state - The Probability Density function of IPT for a two
state model is -
9Two state Markov Model (Numerical vs. Analytical
results )
10Two state Markov Model (Numerical vs. Analytical
results Symmetric rates)
11Higher order Statistics for Markov Models
- Higher Order Distributions
- Markov Models can also produce higher order
statistics. - Possible to study the sequence of IPTs and a
variety of other unique features associated with
the network traffic statistics. - The Joint Density function for the two state
Markov Model is given by
12Second Order Statistics Joint Density (Results
for Symmetric 2-state model)
13Higher Order Statistics Joint Density(Results
for Asymmetric 2-state Model)
14Outline
15N-state models with Poisson statistics
The general form equation for the IPT PDF of
N-state Markov Models where every state is
emitting packets is PDF (N-state) V1 P1(t)
V2 P2(t) V3 P3(t)... VN PN(t)
16Outline
17Two state Model with non-Poisson statistics
- The sequence of packets is AAAAAAAAAAAA
- The PDF equation for the IPT is
18PDF for the two state model with only one state
emitting packets
19Joint Density 2 state model with one packet
emitting state / source
20PDF for IPT for N-state Markov Models with only
one state emitting packets
The general form analytical equation of the PDF
of IPT for Markov loop Models with only one state
emitting packets is
21Use of Gamma Markov Models
22Taking it further - A Gaussian Markov Model
- Now in the general equation of the Gamma
distribution, we know that as N approaches
infinity, the gamma distribution can be
approximated by a normal or Gaussian
distribution. - Gives a normal distribution with mean
- Variance
- Gaussian Distribution PDF.
23Gaussian Markov Models
24Outline
25Modelling Real World Example IP Traffic
Measurement at UDP Port 15010 - VoIP
26Fitting a Gaussian Markov Model
Gaussian Model(PDF) V1 Gaussian(µ1,s1) V2
Gaussian(µ2,s2) V6 Gaussian(µ6,s6)
27Comparing the Joint Densities
28Outline
29Understanding Packet Sequences from Joint Density
Results
30The significance of the Joint Density Plots
- Let us consider a 3 1 states Model where V1
V2 V3 1/3. (Markov Model A) - Packet sequence can be ABBACACABCABBACAACA.
31PDF and Joint Density Markov Model A
32Markov Model B
- Let us now consider a 3 state Loop Model where V1
V2 V3 1/3. (Markov Model B) - Packet sequence must be ABCABCABCABCABCABC..
33PDF and Joint Density Markov Model B
Observation Two different models have the same
PDFs yet different Joint Densities. The Joint
density Plots give more statistical details on
Packet Sequences.
34Outline
35Understanding the curve of periodicity
36Modelling Periodic Events with Markov Models
37Small ? for Markov Models C and D - S? model
38Large ? for Markov Models C and D - L? model
39Multiple Periodicity
40Use of S? and L? model sets to model measured
results
41Use of S? and L? model sets to model measured
results
42Outline
43Summary and Conclusions
- Summary
- Observed first and second order statistics for
N-state Markov Models with Poisson and
Non-Poisson statistics and confirmed our
anlaytical understanding of the models with
simulated results. - Established the significance of the Joint Density
Plots and explored the use of simple Markov
models to model unique features of Joint Density
Traffic Statistics Results. - Conclusions
- The Joint Density Plot contains much more
statistical information on the activities and
nature of the traffic sources than the PDF. - Modelling PDFs alone will result in reproducing
first order statistics. Use of Joint Density
Plots is Recommended to model source behaviour.
Simple Markov Models can be used to model the
unique features of Joint Densities. -
44Thank you!
- Questions or comments?
- The man himself
- Andrey Markov
- (1856 - 1922)