Title: Connection Admission Control Schemes for Self-Similar Traffic
1Connection Admission Control Schemes for
Self-Similar Traffic
- Yanping Wang
- Carey Williamson
- University of Saskatchewan
2Connection Admission Control
- Features
- important traffic management mechanism
- improve network utilization (statistical
multiplexing) - meet QOS requirements of all existing connections
- Difficulties
- diverse traffic characteristics
- various QOS requirements
- bursty, self-similar traffic (i.e., LRD)
3 Self-SimilarityPrevalence of Bursts Over Many
Time Scales
4Properties of Self-Similar Traffic
5(continued)
6(continued)
7Research Objectives
- Self-similarity
- affects queuing behavior of aggregate traffic
- has impact on network-engineering problems
- admission control, rate control
- Research objectives
- CAC performance when presented with self-similar
traffic - identify the impact of different parameters
8CAC Algorithms
- PCR CAC
- QOS guaranteed
- network resource wasted
- SCR CAC
- high network utilization
- poor QOS performance
- AVG CAC
- allocates extra bandwidth to handle the
burstiness in the traffic
- GCAC
- specified in P-NNI for efficient path selection
- exploit multiplexing gains
- Norros CAC
- based on FBM model
- traffic characteristics captured by m, a, and H
- exploit multiplexing gains
9Experimental Methodology (1)
- Network Topology
- Fractional-ARIMA Based Model
- Hoskings model 3 transformations
- LRD and SRD features adjustable
- marginal distribution adjustable
10Experimental Methodology (2)
- Simulation Configuration
- ATM-TN simulator
- factors (m, a, H, b, C and ?)
- metrics (CA, LU and CLR)
- baseline configuration and the structured
simulations - Simulation Validation
- warmup phase
- accuracy of the results
11Simulation Results (1)Baseline Configuration
- Call Acceptance Performance
12Simulation Results (2)Baseline Configuration
13Simulation Results (3)Baseline Configuration
14Simulation Results (4)Baseline Configuration
15Simulation Results (5)Parameter Effects
16Simulation Results (6)Parameter Effects
17Conclusions (1) CAC Performance
- Impact of the Parameters
- source granularity, source variability
- long-range correlation structure
- buffer size, target CLR
- link capacity
- mixing traffic sources
- Norros CAC and AVG CAC are promising
- None of the CAC algorithms provides satisfying
overall performance in all the scenarios
18Conclusions (2) Impact of Self-Similarity
- Strong impact on network performance
- especially when link capacity is small
- statistical multiplexing gains should be
exploited - achievable link utilization increases as link
capacity increases - ineffectiveness of buffering
19Future Work
- Multifractal property
- multifractal vs. monofractal traffic
- Estimated traffic parameters
- accurate vs. poor traffic parameters