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Published byJonas Cobb Modified over 9 years ago
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Accurate & scalable models for wireless traffic workload Assistant Professor Department of Computer Science, University of Crete & Institute of Computer Science, Foundation for Research & Technology-Hellas (FORTH) 1 IBM Faculty Award, EU Marie Curie IRG, GSRT “Cooperation with non-EU countries” grants Maria Papadopouli Joint research with: F. Hernandez-Campos, M. Karaliopoulos, H. Shen, E. Raftopoulos COST-ACTION: TMA meeting @ Samos’08
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Wireless landscape Growing demand for wireless access Mechanisms for better than best-effort service provision Performance analysis of these mechanisms Typically using simplistic traffic models Empirically-based measurements impel modeling efforts to produce more realistic models Enable more meaningful performance analysis studies
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Wireless infrastructure Wired Network Wireless Network Router Internet User A User B AP 1 AP 2 AP3 Switch roaming disconnection 1230 Flows Associations Packets
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Dimensions in modeling wireless access Intended user demand User mobility patterns –Arrival at APs –Roaming across APs –Duration the user is connected to an infrastructure Link conditions Network topology
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1230 Session Wired Network Wireless Network Router Internet User A User B AP 1 AP 2 AP3 Switch disconnection Flow time Events Arrivals t1 t2t3t7t6t5t4
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Our parameters and models ParameterModelProbability Density Function Related Papers Association, session duration BiPareto EW' 06 Session arrival Time-varying Poisson N: # of sessions between t1 and t2 WICON '06 LANMAN'05 AP of first association/session Lognormal WICON '06 Flow interarrival/session Lognormal Same as above WICON '06 Flow number/session BiPareto WICON '06 Flow size BiPareto Same as above WICON '06 Client roaming between APs Markov-chain INFOCOM'04
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Wireless infrastructure & acquisition 26,000 students, 3,000 faculty, 9,000 staff in over 729-acre campus 488 APs (April 2005), 741 APs (April 2006) SNMP data collected every 5 minutes Several months of SNMP & SYSLOG data from all APs Packet-header traces: –Two weeks (in April 2005 & April 2006) –Captured on the link between UNC & rest of Internet via a high- precision monitoring card
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Modeling process 1.Selection of models (e.g., various distributions) 2.Fitting parameters using empirical traces 3.Evaluation and comparison of models Visual inspection e.g., CCDFs & QQ plots models vs. empirical data Statistical-based criteria e.g., QQ/simulation envelops, statistical tests Systems-based criteria 4.Validation of models 5.Generalization of models determines spatial & temporal scale
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Modeling in various spatio-temporal scales Sufficient spatial detailScalableAmenable to analysis Hourly period @ AP Network-wide Objective Scales Tradeoff with respect to accuracy, scalability, reusability & tractablity
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Synthetic trace generation
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Simulation/Emulation testbed TCP flows UDP Wired clients: senders Wireless clients: receivers
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Simulation & emulation testbeds Wired Network Wireless Network Router Internet User A AP 1 AP 2 AP3 Switch User B Scenario of wireless access User CUser D Various traffic conditions Assign traffic demand Scenario: User A generates a flow of size X @ T 1 User B generates a flow of size Y @ T 2 ▪
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Main results Accurate and scalable models of wireless demand Same distributions/models persist: over two different periods (2005 and 2006) over two different campus-wide infrastructures over heavy & normal traffic conditions @ AP using statistical- & systems-based metrics Empirical traces used as “ground truth” for the comparison with synthetics traces based on various models
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Main results (con’t) Accuracy: our models perform very close to the empirical traces popular models deviate substantially from the empirical traces Scalability: same distributions at various spatial & temporal scales group of APs per bldg addresses scalability-accuracy tradeoffs Application mix of AP traffic mostly web: very accurate models both web & p2p : models are ok mostly p2p: larger deviations from empirical data
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In progress … Improve modeling of non-web traffic Client profiling Impact of underlying network conditions on application and usage patterns Evaluate the performance of AP or channel selection, load balancing & admission control protocols under real-life traffic conditions –Mesh testbed –Heterogeneous wireless networks
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UNC/FORTH web archive Online repository of models, tools, and traces – Packet header, SNMP, SYSLOG, synthetic traces, … http://netserver.ics.forth.gr/datatraces/ Free login/ password to access it Simulation & emulation testbeds that replay synthetic traces for various traffic conditions Mobile Computing Group @ University of Crete/FORTH http://www.ics.forth.gr/mobile/ maria@csd.uoc.gr
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Hourly aggregate throughput EMPIRICAL BIPARETO-LOGNORMAL Fixed flow sizes & empirical flow arrivals (aggregate traffic as in EMPIRICAL) Pareto flow sizes, empirical flow arrivals FLOWSIZE—FLOWARRIVAL BIPARETO-LOGNORMAL-AP Impact of flow size
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Scalability vs. Accuracy: flow interarrivals EMPIRICAL BDLG(DAY) BDLGTYPE(DAY) NETWORK(TRACE)
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Scalability vs Accuracy: Number of flow arrivals in an hour EMPIRICAL BDLG(DAY) NETWORK(TRACE) BDLGTYPE(TRACE)
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Per-flow throughput EMPIRICAL BIPARETO-LOGNORMAL-AP BIPARETO-LOGNORMAL Fixed flow sizes & empirical flow arrivals FLOWSIZE—FLOWARRIVAL Pareto flow sizes & uniform flow arrivals in tracing period Pareto flow sizes due to large % of small size flows
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Histogram of flow sizes
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Aggregate hourly downloaded traffic
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UDP traffic scenario Wireless hotspot AP Wireless clients downloading Wired traffic transmit at 25Kbps Total aggregate traffic sent in CBR and in empirical is the same Empirical: 1.4 Kbps Bipareto-Lognormal-AP: 2.4 Kbps Bipareto-Lognormal: 2.6 Kbps Large differences in the distributions
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Impact of application mix on per-flow throughput AP with 85% web traffic AP with 50% web & 40% p2p traffic AP with 80% p2p traffic TCP-based scenario
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Goodput
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Per-flow delay
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Jitter per flow
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50% web & 40% p2p 85% web 80% p2p Impact of application mix of AP traffic
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Session-level flow related variation Mean in-session flow interarrival f In-session flow interarrival can be modeled with same distribution for all building types but with different parameters
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Session-level flow size variation Mean flow size f (bytes)
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Flow size vs. flow-interarrival on hourly throughput Flow interarrivals has slightly higher impact avg flow interarrivals fixed original flow size avg flow size fixed original flow interarrival TCP scenario empirical Flow size - Flow interarrival
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Flow size vs. flow-interarrival on per-flow throughput original flow size avg flow interarrivals fixed Flow size has higher impact avg flow size fixed original flow interarrivals original trace Flow size - Flow interarrival
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Per flow statistics for hours that have produced the same aggregate download traffic
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Our models persist for traffic generated during busy periods Empirical trace: one hour of a hotspot AP with heavy workload conditions
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Number of flows per session Simplicity at the cost of higher loss of information
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Number of Flows Per Session
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