html5-img
1 / 39

IEEE INFOCOM 2008 Mehmet C. Vuran and Ian F. Akyildiz Database Lab. Soo Hyung Kim

Cross-layer Packet Size Optimization for Wireless Terrestrial, Underwater, and Underground Sensor Networks. IEEE INFOCOM 2008 Mehmet C. Vuran and Ian F. Akyildiz Database Lab. Soo Hyung Kim. Contents. Introduction Related Work Factors Affecting the Packet Size

bevis
Download Presentation

IEEE INFOCOM 2008 Mehmet C. Vuran and Ian F. Akyildiz Database Lab. Soo Hyung Kim

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Cross-layer Packet Size Optimization for Wireless Terrestrial, Underwater, and Underground Sensor Networks IEEE INFOCOM 2008 Mehmet C. Vuran and Ian F. Akyildiz Database Lab. SooHyung Kim

  2. Contents • Introduction • Related Work • Factors Affecting the Packet Size • Packet Size Optimization Framework • Optimization Results • Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Conclusion Database Laboratory

  3. Introduction • Traditional approach • Point-to-point link • Successful and efficient transmission • Cannot be captured multi-hop, broadcast nature serial cable, phone line Node Node Database Laboratory

  4. Introduction • Multi-hop WSN • Routes established • Existence of neighbor nodes • Wireless channel and error control technique • Nature of WSN • Terrestrial areas • Underwater (UW-ASN) • Underground (WUSN) Database Laboratory

  5. Introduction • Cross-layer solution for packet size optimization • The effects of multi-hop routing • The broadcast nature of the physical wireless channel • The effects of error control techniques • Three objective functions • Packet throughput • Energy consumption • Resource utilization Database Laboratory

  6. Related Work • Voice Packet Size between UMTS-to-PSTN [1] • Single hop communication • Improving Wireless Link [2] • Variable packet size • Properties of the wireless channel • Energy efficiency [3] • Most relevant work • Effects of error correction on energy efficiency • Energy channel model is based on single hop Database Laboratory

  7. Factors Affecting the Packet Size • Factors(focus on energy consumption) • Transmit a packet and Reliability of the network • Small packet size • increase reliability • inefficient transmission • Longer packet size • provide error resiliency • increased energy consumption • Collision • Longer packet size • increase the collision rate Database Laboratory

  8. Factors Affecting the Packet Size • Carrier sense mechanism • Successful carrier sense • No collision transmission • Formulation(from [4]) Database Laboratory

  9. Factors Affecting the Packet Size • Total generated packet rate • (pkts/s) • b : average sampling rate • Ld : packet payload • i : node • M : number of nodes in thetransmission rage • MAC Failure rate Database Laboratory

  10. Packet Size Optimization Framework • Three objective function • Packet throughput • Energy per useful bit • Resource utilization • Ld : payload length • PER : end-to-end packet error rate • T : end-to-end latency • E : end-to-end energy consumption Database Laboratory

  11. Packet Size Optimization Framework • Channel-aware algorithm • Determine next hop using SNR • SNR ( ) • Signal to noise ratio • Medium access • RTS-CTS-DATA exchange • Error correction • ACK and ARQ • FEC code • (n,k,t) - n:block length, k:payload length, t:error correcting capability in bits Database Laboratory

  12. Packet Size Optimization Framework • Channel model • Log-normal channel model [5] Database Laboratory

  13. Packet Size Optimization Framework • End-to-End energy consumption [6] Database Laboratory

  14. Packet Size Optimization Framework • Etx for ARQ and FEC • Similar approach for , , , , , Database Laboratory

  15. Optimization Results • Energy consumption • Packet size • SNR threshold • Packet size optimization is affected by the routing decisions. Database Laboratory

  16. Optimization Results Database Laboratory

  17. Optimization Results • Using MATLAB Database Laboratory

  18. Optimization Results • Very long packet sizes have problem [7] Database Laboratory

  19. Optimization Results • Certain WSN application • End-to-End latency • Reliability constraints Database Laboratory

  20. Optimization Results Database Laboratory

  21. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Underwater Channel Model • Urick path loss formula [8] • Signal level • SNR of channel • Bit error rate • where Database Laboratory

  22. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Underwater Channel Model • 2-path Rayleigh model • Direct path signal • Surface reflected path signal • Bit error rate • Combination of these signals • 2-path Rayleigh model • Not closed form expression for SNR distribution • Performed simulation to find these values Database Laboratory

  23. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Underground Channel Model [9] • 2-path location-based Rayleigh fading channel model • VWC(volumetric water content) of the soil • Total path loss • Bit error rate • SNR Database Laboratory

  24. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Results • Three different optimization problems • , , • Underwater • Deep water network • Two-ray underwater channel model • Shallow water network • Reflections from the sea surface • Underground • Channel model presented in previous page • Effects of volumetric water content(VWC) Database Laboratory

  25. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underwater Sensor Networks • Deep Water Environment Database Laboratory

  26. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underwater Sensor Networks • Shallow Water Environment Database Laboratory

  27. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underwater Sensor Networks • Optimum Energy Consumption Database Laboratory

  28. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underwater Sensor Networks • Optimum Packet Throughput Database Laboratory

  29. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underwater Sensor Networks • Optimum Resource Utilization Database Laboratory

  30. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underwater Sensor Networks • Optimum Packet Size for Database Laboratory

  31. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underwater Sensor Networks • Optimum Energy Consumption Database Laboratory

  32. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underground Sensor Networks • Optimum Packet Size Database Laboratory

  33. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underground Sensor Networks • Optimum Energy Consumption Database Laboratory

  34. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underground Sensor Networks • Optimum Packet Size for Database Laboratory

  35. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underground Sensor Networks • Optimum Energy Consumption Database Laboratory

  36. Packet Size Optimization in Wireless Underwater and Underground Sensor Networks • Wireless Underground Sensor Networks • Optimum Packet Throughput Database Laboratory

  37. Conclusion • Packet size optimization for wireless terrestrial, underwater, and underground sensor networks • Framework • Medium access collisions • Routing decisions • Performance metrics • Throughput • Energy consumption • Packet error rate Database Laboratory

  38. Thank you!! Database Laboratory

  39. Reference • [1] F. Poppe, D. De Vleeschauwer, G. H. Petit, “Choosing the UMTS airinterfaceparameters, the voice packet size and the dejitteringdelay for a voice-over-IP call between a UMTS and a PSTN party,”inProc. IEEE INFOCOM 2001, vol. 2, pp. 805 -814, April2001. • [2] P. Lettieri, M. B. Srivastava, “Adaptive frame length control for improving wireless link throughput, range, and energy efficiency,” in Proc. IEEE INFOCOM 1998, vol. 2, pp. 564 -571, April 1998. • [3] Y. Sankarasubramaniam, I. F. Akyildiz, S. W. McLaughlin, “Energy efficiency based packet size optimization in wireless sensor networks,” in Proc. IEEE Internal Workshop on Sensor Network Protocols and Applications, pp. 1 -8, 2003. • [4] K. Schwieger, A. Kumar, G. Fettweis, “On the Impact of the Physical Layer on Energy Consumption in Sensor Networks,” in Proc. EWSN ’05, pp. 13 - 24, Feb. 2005. • [5] M. Zuniga, B. Krishnamachari, “Analyzing the Transitional Region in Low Power Wireless Links,” in Proc. IEEE SECON ’04, pp. 517 – 526, Oct. 2004. • [6] M. C. Vuran and I. F. Akyildiz, “Cross Layer Analysis of Error Control in Wireless Sensor Networks,” in Proc. IEEE SECON ’06, Reston, VA, September 2006. • [7] IEEE 802.15.4, “Wireless Medium Access Control (MAC) and Physical Layer (PHY) Specifications for Low-Rate Wireless Personal Area Networks (LR-WPANs),” October 2003. • [8] I. F. Akyildiz, D. Pompili, and T. Melodia, “Underwater Acoustic Sensor Networks: Research Challenges,” Ad Hoc Networks Journal (Elsevier), vol. 3, no. 3, pp. 257-279, March 2005. • [9] L. Li, M. C. Vuran, and I. F. Akyildiz, “Characteristics of Underground Channel for Wireless Underground Sensor Networks,” in Proc. Med-Hoc- Net ’07, Corfu, Greece, June 2007. Database Laboratory

More Related