|
ABSTRACT
There is a critical need for new thinking regarding overload traffic management in sensor networks. It has now become clear that experimental sensor networks (e.g., mote networks) and their applications commonly experience periods of persistent congestion and high packet loss, and in some cases even congestion collapse. This significantly impacts application fidelity measured at the physical sinks, even under light to moderate traffic loads, and is a direct product of the funneling effect; that is, the many-to-one multi-hop traffic pattern that characterizes sensor network communications. Existing congestion control schemes are effective at mitigating congestion through rate control and packet drop mechanisms, but do so at the cost of significantly reducing application fidelity measured at the sinks. To address this problem we propose to exploit the availability of a small number of all wireless, multi-radio virtual sinks that can be randomly distributed or selectively placed across the sensor field. Virtual sinks are capable of siphoning off data events from regions of the sensor field that are beginning to show signs of high traffic load. In this paper, we present the design, implementation, and evaluation of Siphon, a set of fully distributed algorithms that support virtual sink discovery and selection, congestion detection, and traffic redirection in sensor networks. Siphon is based on a Stargate implementation of virtual sinks that uses a separate longer-range radio network (based on IEEE 802.11) to siphon events to one or more physical sinks, and a short-range mote radio to interact with the sensor field at siphon points. Results from analysis, simulation and an experimental 48 Mica2 mote testbed show that virtual sinks can scale mote networks by effectively managing growing traffic demands while minimizing the impact on application fidelity.
REFERENCES
Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.
 |
1
|
Chalermek Intanagonwiwat , Ramesh Govindan , Deborah Estrin, Directed diffusion: a scalable and robust communication paradigm for sensor networks, Proceedings of the 6th annual international conference on Mobile computing and networking, p.56-67, August 06-11, 2000, Boston, Massachusetts, United States
[doi> 10.1145/345910.345920]
|
 |
2
|
|
 |
3
|
Chieh-Yih Wan , Andrew T. Campbell , Jon Crowcroft, A case for all-wireless, dual-radio virtual sinks, Proceedings of the 2nd international conference on Embedded networked sensor systems, November 03-05, 2004, Baltimore, MD, USA
[doi> 10.1145/1031495.1031529]
|
| |
4
|
Anish Arora , Rajiv Ramnath , Emre Ertin , Prasun Sinha , Sandip Bapat , Vinayak Naik , Vinod Kulathumani , Hongwei Zhang , Hui Cao , Mukundan Sridharan , Santosh Kumar , Nick Seddon , Chris Anderson , Ted Herman , Nishank Trivedi , Chen Zhang , Mikhail Nesterenko , Romil Shah , Sandeep Kulkarni , Mahesh Aramugam , Limin Wang , Mohamed Gouda , Young-ri Choi , David Culler , Prabal Dutta , Cory Sharp , Gilman Tolle , Mike Grimmer , Bill Ferriera , Ken Parker, ExScal: Elements of an Extreme Scale Wireless Sensor Network, Proceedings of the 11th IEEE International Conference on Embedded and Real-Time Computing Systems and Applications (RTCSA'05), p.102-108, August 17-19, 2005
[doi> 10.1109/RTCSA.2005.47]
|
 |
5
|
|
 |
6
|
|
 |
7
|
|
 |
8
|
|
 |
9
|
|
 |
10
|
|
| |
11
|
M. Yarvis, N. Kushalnagar, H. Singh, A. Rangarajan, Y. Liu, and S. Singh. Exploiting Heterogeneity in Sensor Networks. In Proc. of IEEE INFOCOM. Miami, FL, Mar 2005.
|
| |
12
|
|
| |
13
|
Stargate datasheet. http://www.xbow.com.
|
 |
14
|
Jason Hill , Robert Szewczyk , Alec Woo , Seth Hollar , David Culler , Kristofer Pister, System architecture directions for networked sensors, Proceedings of the ninth international conference on Architectural support for programming languages and operating systems, p.93-104, November 2000, Cambridge, Massachusetts, United States
|
 |
15
|
|
| |
16
|
Chipcon. http://www.chipcon.com.
|
| |
17
|
|
| |
18
|
Tinyos homepage. http://webs.cs.berkeley.edu/tos/.
|
 |
19
|
|
| |
20
|
R. Murty, E. H. Qi, and M. Hazra. An Adaptive Approach to Wireless Network Performance Optimization. In Wireless World Research Forum (WWRF11 Meeting). Oslo, Norway, Jun 10-11 2004.
|
 |
21
|
Anindya Basu , Brian Boshes , Sayandev Mukherjee , Sharad Ramanathan, Network deformation: traffic-aware algorithms for dynamically reducing end-to-end delay in multi-hop wireless networks, Proceedings of the 10th annual international conference on Mobile computing and networking, September 26-October 01, 2004, Philadelphia, PA, USA
[doi> 10.1145/1023720.1023731]
|
| |
22
|
B. Liu, Z. Liu and D. Towsley. On the Capacity of Hybrid Wireless Networks In Proc. of IEEE INFOCOM. San Francisco, CA, Mar 30 - Apr 3, 2003.
|
| |
23
|
Armstrong Project http://comet.columbia.edu/armstrong.
|
CITED BY 14
|
|
|
Andrew T. Campbell , Shane B. Eisenman , Nicholas D. Lane , Emiliano Miluzzo , Ronald A. Peterson, People-centric urban sensing, Proceedings of the 2nd annual international workshop on Wireless internet, p.18-es, August 02-05, 2006, Boston, Massachusetts
|
|
|
|
Gahng-Seop Ahn , Se Gi Hong , Emiliano Miluzzo , Andrew T. Campbell , Francesca Cuomo, Funneling-MAC: a localized, sink-oriented MAC for boosting fidelity in sensor networks, Proceedings of the 4th international conference on Embedded networked sensor systems, October 31-November 03, 2006, Boulder, Colorado, USA
|
|
|
|
Junning Liu , Zhen Liu , Don Towsley , Cathy H. Xia, Maximizing the data utility of a data archiving & querying system through joint coding and scheduling, Proceedings of the 6th international conference on Information processing in sensor networks, April 25-27, 2007, Cambridge, Massachusetts, USA
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|
|