Self Management in Chaotic Wireless Networks

Slides:



Advertisements
Similar presentations
Managing Chaotic Wireless Networks David Wetherall University of Washington.
Advertisements

Copyright © Chang Gung University. Permission required for reproduction or display. On Femto Deployment Architecture and Macrocell Offloading Benefits.
Mitigating the Impact of Physical Layer Capture and ACK Interference in Wireless Networks Wang Wei.
Distributed Control Algorithms for Service Differentiation in Wireless Packet Networks Michael Barry, Andrew T Campbell, Andras Veres
Strider : Automatic Rate Adaptation & Collision Handling Aditya Gudipati & Sachin Katti Stanford University 1.
SUCCESSIVE INTERFERENCE CANCELLATION IN VEHICULAR NETWORKS TO RELIEVE THE NEGATIVE IMPACT OF THE HIDDEN NODE PROBLEM Carlos Miguel Silva Couto Pereira.
Madhavi W. SubbaraoWCTG - NIST Dynamic Power-Conscious Routing for Mobile Ad-Hoc Networks Madhavi W. Subbarao Wireless Communications Technology Group.
Collision Aware Rate Adaptation (CARA) Bob Kinicki Computer Science Department Computer Science Department Advanced Computer.
Wireless in the real world Gabriel Weisz October 8, 2010.
Self-Management in Chaotic Wireless Deployments A. Akella, G. Judd, S. Seshan, P. Steenkiste Presentation by: Zhichun Li.
NCKU CSIE CIAL1 Principles and Protocols for Power Control in Wireless Ad Hoc Networks Authors: Vikas Kawadia and P. R. Kumar Publisher: IEEE JOURNAL ON.
The Impact of Multihop Wireless Channel on TCP Throughput and Loss Zhenghua Fu, Petros Zerfos, Haiyun Luo, Songwu Lu, Lixia Zhang, Mario Gerla INFOCOM2003,
CS541 Advanced Networking 1 Cognitive Radio Networks Neil Tang 1/28/2009.
CS4514 Networks1 Distributed Dynamic Channel Selection in Chaotic Wireless Networks By: Matthias Ihmig and Peter Steenkiste Presented by: James Cialdea.
Doc.: IEEE /1443r0 SubmissionEsa Tuomaala Adapting CCA and Receiver Sensitivity Date: Authors: Slide 1 November 2014.
High Throughput Route Selection in Multi-Rate Ad Hoc Wireless Networks Dr. Baruch Awerbuch, David Holmer, and Herbert Rubens Johns Hopkins University Department.
Wireless MESH network Tami Alghamdi. Mesh Architecture – Mesh access points (MAPs). – Mesh clients. – Mesh points (MPs) – MP uses its Wi-Fi interface.
Packet Loss Characterization in WiFi-based Long Distance Networks Authors : Anmol Sheth, Sergiu Nedevschi, Rabin Patra, Lakshminarayanan Subramanian [INFOCOM.
1 Self Management in Chaotic Wireless Networks Aditya Akella, Glenn Judd, Srini Seshan, Peter Steenkiste Carnegie Mellon University.
Wireless Networking & Mobile Computing CS 752/852 - Spring 2012 Tamer Nadeem Dept. of Computer Science Lec #7: MAC Multi-Rate.
Hierarchical Cooperation Achieves Linear Scaling in Ad Hoc Wireless Networks David Tse Wireless Foundations U.C. Berkeley AISP Workshop May 2, 2007 Joint.
Doc.: IEEE /1153r0 Submission September 2013 Laurent Cariou (Orange)Slide 1 Simulation scenario proposal Date: Authors:
Dynamic Load Balancing through Association Control of Mobile Users in WiFi Networks 2013 YU-ANTL Seminal November 9, 2013 Hyun dong Hwang Advanced Networking.
Capacity Scaling with Multiple Radios and Multiple Channels in Wireless Mesh Networks Oguz GOKER.
Self Management of Rate, Power and Carrier-Sense Threshold for Interference Mitigation in IEEE Networks Adviser : Frank, Yeong-Sung Lin Presented.
Self Management in Chaotic Wireless Deployments. 2 This paper … Was supported by the army research office, NSF, Intel and IBM.Was supported by the army.
Multicast Algorithms for Multi- Channel Wireless Mesh Networks Guokai Zeng, Bo Wang, Yong Ding, Li Xiao, Matt Mutka Department of Computer Science and.
Limited Contribution of Self-Management in Chaotic Wireless Deployments Presented by Karl Deng.
Deployment Guidelines for Highly Congested IEEE b/g Networks Andrea G. Forte and Henning Schulzrinne Columbia University.
The Case for Addressing the Limiting Impact of Interference on Wireless Scheduling Xin Che, Xi Ju, Hongwei Zhang {chexin, xiju,
Aditya Akella The Performance Benefits of Multihoming Aditya Akella CMU With Bruce Maggs, Srini Seshan, Anees Shaikh and Ramesh Sitaraman.
Muhammad Mahmudul Islam Ronald Pose Carlo Kopp School of Computer Science & Software Engineering Monash University, Australia.
Doc.: IEEE /0648r0 Submission May 2014 Chinghwa Yu et. al., MediaTekSlide 1 Performance Observation of a Dense Campus Network Date:
Designing for High Density Wireless LANs Last Update Copyright Kenneth M. Chipps Ph.D.
ECE 256: Wireless Networking and Mobile Computing
Self-Management in Chaotic Wireless Deployments A. Akella, G. Judd, S. Seshan, P. Steenkiste Carnegie Mellon University.
How Bad Are The Rogues’ Impact on Enterprise Network Performance ? Kaixin Sui, Dan Pei, Youjian Zhao, Zimu Li Tsinghua University.
Challenges in (managing) Wireless Networks. Different types Licensed vs. unlicensed spectrum UWB GPRS Bluetooth Asymmetric networks (data on TV.
August 27, 2003 Evaluation of WiNc Manager A Wireless Network Management Software from Cirond Technologies Inc. by Kassim Olawale Radio Science Laboratory.
Partially Overlapped Channels Not Considered Harmful Article by Mishra, Shrivastava, Banerjee, Arbaugh Presentation by Chen Li.
The Case for a Multi-hop Wireless Local Area Network INFOCOM 2004 Seungjoon Lee Bobby Bhattacharjee University of Maryland.
Self-Organized Resource Allocation in LTE Systems with Weighted Proportional Fairness I-Hong Hou and Chung Shue Chen.
Doc.: IEEE /117 Submission 11/99 Nada Golmie, NISTSlide 1 IEEE P Working Group for Wireless Personal Area Networks MAC Performance Evaluation.
1 Three ways to (ab)use Multipath Congestion Control Costin Raiciu University Politehnica of Bucharest.
Dirk Grunwald Dept. of Computer Science, ECEE and ITP University of Colorado, Boulder.
-1/16- Maximum Battery Life Routing to Support Ubiquitous Mobile Computing in Wireless Ad Hoc Networks C.-K. Toh, Georgia Institute of Technology IEEE.
IEEE Smart Grid TAG July 2013 working document
Architecture and Algorithms for an IEEE 802
Presented by Tae-Seok Kim
Trace-based Evaluation of Rate Adaptation Schemes in Vehicular Environments Kevin C. Lee WiVeC 2010, 5/17/10.
White Space Networking with Wi-Fi like Connectivity
Managing the performance of multiple radio Multihop ESS Mesh Networks.
A Rate-Adaptive MAC Protocol for Multi-Hop Wireless Networks
IEEE MEDIA INDEPENDENT HANDOVER DCN:
On the Physical Carrier Sense in Wireless Ad-hoc Networks
Proposed response to 3GPP ED request
15-744: Computer Networking
5G Micro Cell Deployment in Coexistence with Fixed Service
High Throughput Route Selection in Multi-Rate Ad Hoc Wireless Networks
Intelligent Antenna Sharing in Wireless Networks
The Fundamental Role of Hop Distance in IEEE 80
OFDMA performance in 11ax
Adaptive Topology Control for Ad-hoc Sensor Networks
Performance Implications of DCF to ESS Mesh Networks
Month Year doc.: IEEE /0578r0 May 2016
Performance Implications of DCF to ESS Mesh Networks
Multi-rate Medium Access Control
Characterization of Wireless Networks in the Home
Consideration on System Level Simulation
Presentation transcript:

Self Management in Chaotic Wireless Networks Aditya Akella, Glenn Judd, Srini Seshan, Peter Steenkiste Carnegie Mellon University

Wireless Proliferation Sharp increase in deployment Airports, malls, coffee shops, homes… 4.5 million APs sold in 3rd quarter of 2004! Past dense deployments were planned campus-style deployments Sales will triple by 2009 However, if you looked 10 yrs into the past, wifi was limited to campus style deploye,ents where…

Chaotic Wireless Networks Unplanned: Independent users set up APs Spontaneous Variable densities Other wireless devices Unmanaged: Configuring is a pain ESSID, channel, placement, power Use default configuration  “Chaotic” Deployments

Implications of Dense Chaotic Networks Benefits Great for ubiquitous connectivity, new applications Challenges Serious contention Poor performance Access control, security

Outline Quantify deployment densities and other characteristics Impact on end-user performance Initial work on mitigating negative effects Conclusion

Characterizing Current Deployments Datasets Place Lab: 28,000 APs MAC, ESSID, GPS Selected US cities www.placelab.org Wifimaps: 300,000 APs MAC, ESSID, Channel, GPS (derived) wifimaps.com Pittsburgh Wardrive: 667 APs MAC, ESSID, Channel, Supported Rates, GPS

AP Stats, Degrees: Placelab (Placelab: 28000 APs, MAC, ESSID, GPS) #APs Max. degree 50 m Portland 8683 54 San Diego 7934 76 San Francisco 3037 85 Boston 2551 39 1 2

Degree Distribution: Place Lab

Statistics for APs (Place Lab data set) Channels employed by APs (Wifimaps data set)

WifiMaps.com (300,000 APs, MAC, ESSID, Channel) Unmanaged Devices WifiMaps.com (300,000 APs, MAC, ESSID, Channel) Channel %age 6 41.2 2 12.3 11 11.5 3 3.6 Most users don’t change default channel Channel selection must be automated

Opportunities for Change Wardrive (667 APs, MAC, ESSID, Channel, Rates, GPS) Major vendors dominate Incentive to reduce “vendor self interference” Chipset distribution is even more homogeneous

Outline Quantify deployment densities and other characteristics Impact on end-user performance Initial work on mitigating negative effects Conclusion

Impact on Performance Glomosim trace-driven simulations “D” clients per AP Clients are located than 1m from their APs Transmit power=15dBm Trans. range = 31m Interference range = 65m Each client runs HTTP/FTP workloads HTTP transfers are separated by a sleep time drawn from Poisson(s) Map Showing Portion of Pittsburgh Data Picture is map

Impact on HTTP Performance 3 clients per AP. 2 clients run FTP sessions. All others run HTTP. 300 seconds 5s sleep time Degradation 20s sleep time Max interference No interference

Optimal Channel Allocation vs Optimal Channel Allocation vs. Optimal Channel Allocation + Tx Power Control Channel Only Channel + Tx Power Control Each AP is statically assigned 1 of the 3 non-overlapping channels Some of the APs use a power level of 3dBm. Describe channel selection Power control done by cutting interference range is in half Difference between stretch 1 and 10

Incentives for Self-management Clear incentives for automatically selecting different channels Disputes can arise when configured manually Selfish users have no incentive to reduce transmit power Power control implemented by vendors Vendors want dense deployments to work Regulatory mandate could provide further incentive e.g. higher power limits for devices that implement intelligent power control Mention channel lawsuits…

Impact of Joint Transmit Power and Rate Control Objective: given <load, txPower, dclient> determine dmin require: mediumUtilization <= 1 txPower determines range dclient, txPower determines rate dclient APs dmin

Impact of Transmit Power Control Minimum distance decreases dramatically with transmit power High AP densities and loads requires transmit power < 0 dBm Highest densities require very low power  can’t use 11Mbps!

Outline Quantify deployment densities and other characteristics Impact on end-user performance Initial work on mitigating negative effects Conclusion

Power Selection Algorithms Rate Selection Auto Rate Fallback (ARF) 6 consecutive packet transmissions selects the next higher transmission rate 4 consecutive packet trans. failures selects the next lower transmission rate No packet is sent in 10 seconds uses the highest possible rate for the next transmission. Estimated Rate Fallback: ERF Each packet contains its transmit power level and the path loss and noise estimate of the last packet received. This allows the sender to estimate the SNR at the receiver. ERF then determines the highest transmission rate supported for this SNR.

Power and Rate Selection Algorithms Joint Power and Rate Selection Power Auto Rate Fallback (PARF) At the highest rate, after a given number of successful transmissions  reduce the transmit power At the lowest rate, after a given number of failures  increase the transmit power Power Estimated Rate Fallback: PERF The sender estimates the SNR at the receiver. If SNR > the decision threshold for the highest transmit rate  lower the transmit power

Lab Interference Test Topology Results

Conclusion Significant densities of APs in many metro areas Many APs not managed High densities could seriously affect performance Static channel allocation alone does not solve the problem Transmit power control effective at reducing impact

Ongoing Work Joint power and multi-rate adaptation algorithms Extend to the case where TxRate could be traded off for higher system throughput Automatic channel selection Field tests of these algorithms