html5-img
1 / 24

Topology Control for Effective Interference Cancellation in Multi-User MIMO Networks

Topology Control for Effective Interference Cancellation in Multi-User MIMO Networks. E. Gelal, K. Pelechrinis , T.S. Kim, I. Broustis Srikanth V. Krishnamurthy, B. Rao IEEE INFOCOM 2010. Problem Motivation & Contributions. MIMO communications are becoming prevalent

brede
Télécharger la présentation

Topology Control for Effective Interference Cancellation in Multi-User MIMO Networks

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. Topology Control for Effective Interference Cancellation in Multi-User MIMO Networks E. Gelal, K. Pelechrinis, T.S. Kim, I. Broustis Srikanth V. Krishnamurthy, B. Rao IEEE INFOCOM 2010

  2. Problem Motivation & Contributions • MIMO communications are becoming prevalent • Multiple antenna elements  robust links • 802.11n utilizes MIMO PHY • CSMA/CA  no exploitation of MIMO capabilities • At most one transmission each time instance • How can we realize multi-user MIMO communications? • Precoding techniques can be used • Accurate channel estimation, feedback from receiver. Successive Interference Cancellation

  3. Problem Motivation & Contributions • We design MUSIC (Multi-User MIMO with Successive Interference Cancellation) • Uses SIC for enabling Multi-user MIMO communications • Centralized and distributed approaches • Evaluation on a variety of settings • Our approach scales and the decoding error probability is bounded • MUSIC outperforms DoF approaches.

  4. Roadmap • Problem motivation & Contributions • Background • SIC • Problem formulation • Our approach • Evaluations • Conclusions

  5. Background • Multi-user MIMO • Precoding techniques • Tx sends pilot signals • Rx receives pilot signals  channel coefficients estimation • Rx feedbacks channel coefficients to Tx • Tx assigns weights at the antennas • Successive Interference Cancellation (SIC) • Receiver iteratively extracts high interfering signals • SINR requirement should be satisfied for every interferer.

  6. Background • Selective diversity at Tx • Feedback from Rx to Tx for the best transmission element • One element used for subsequent transmission • Feedback is required less often than with precoding • Degrees of Freedom = k  #antenna elements = k • k simultaneous transmissions are possible

  7. Roadmap • Problem motivation & Contributions • Background • SIC • Problem formulation • Our approach • Evaluations • Conclusions

  8. Node 4 Node 2 Node 1 Node 3 SIC • Spatial multiplexing enables multi-user MIMO with SIC SIC tries to remove first the stronger interferers and then decode the weaker intended signal. SIC

  9. Models • Selection diversity and SIC • Two kinds of interferers • Strong: signal strength higher than the intended • Weak: signal strength weaker than the intended • Path loss and multipath • htr follows Rayleigh distribution, α is the path exponent, P the transmission power

  10. Dealing with Weak Interferers • Maximum weak interference tolerated on link (u,v): • We want to assure that: • Assuming all interferers at the same distance as of the strongest one  Aggregate weak interference follows Erlang distribution with parameters • n: number of intreferers • σ: variance of the Rayleigh distributed variable h

  11. Dealing with Strong Interferers dBm Strongest interferer P1 P1/(N+P2+P3+….+Pk) > γ P2/(N+P3+P4+….+Pk) > γ Second strongest interferer P2 … Intended signal ((k-1) strongest) Pk-1 Pk-1/(N+Pk) > γ SUCCESFUL DECODING !! k stronger interferer (weak) Pk Compact rule: Iteratively for correct decoding on link (y,z), there must be at most one interferer u, with the following interfering power:

  12. Problem Formulation • Interference Graph, • Directed, edge and vertex weighted • V’ : set of links, with weight the mean value of the received signal strength • E’ : set of directed edges among the links/vertices, with weight the mean value of interference among the links connected. b(u,v) a(x,y) Pxv u v x y Pxy Puy Puv

  13. Problem Formulation ... • V1’ V2’ … Vk’ = V’ • TDMA scheme • In every time slot: ALOHA – like access with probability of failure at most δ. • Objective: minimize m Time Slot 1 V1’ links Time Slot 2 V2’ links Time Slot m Vm’ links NP - Hard

  14. Roadmap • Problem motivation & Contributions • Background • SIC • Problem formulation • Our approach • Evaluations • Conclusions

  15. C-MUSIC • The centralized algorithm is iterative. • Global knowledge of the topology • Main steps • Priority to links not scheduled • Include links that do not require SIC for decoding • Add links that can be decoded with SIC • Try to pack more links among those already scheduled

  16. C-MUSIC • Two interfering links cannot belong to the same sub-topology if: • The weak interferer causes more interference than the weak interference budget • The strong interference cannot be removed • The two links have the same transmitter (selection diversity) • A node is the transmitter for one of the links and a receiver for the other.

  17. D-MUSIC Transmitter Receiver Overhearing Nodes

  18. Roadmap • Problem motivation & Contributions • Background • SIC • Problem formulation • Our approach • Evaluations • Conclusions

  19. Simulation Set Up • OPNET simulations • Traffic load: 10-30 pkt/sec, 1500 bytes packets • Path loss (α=4) and Rayleigh fading • Simulations with different • Node density, SINR requirement, number of antenna elements • Metrics of interest: • Number of time slots, average decoding success probability, throughput • Comparison with: • Optimal (small topologies), DoF based topology control

  20. Evaluation results • MUSIC is efficient in terms of number of time slots formed • Density does not significantly decrease the probability of successful decoding

  21. Evaluation results • DoF based link activation cannot effectively exploit the benefits of multi-user MIMO • DoF-based link activation leads to more decoding errors • MUSIC provides better throughput as compared with DoF

  22. Roadmap • Problem motivation & Contributions • Background • SIC • Problem formulation • Our approach: C-MUSIC • Evaluations • Conclusions

  23. Conclusions • Identify the conditions for SIC to allow multi-packet reception in multi-user MIMO settings. • Design a framework for exploiting SIC • Demonstrate through simulations the applicability of our approach

  24. THANK YOU ! QUESTIONS?

More Related