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Capacity of Large Scale Wireless Networks with Directional Antenna and Delay Constraint

Capacity of Large Scale Wireless Networks with Directional Antenna and Delay Constraint. Guanglin Zhang IWCT, SJTU 26 Sept, 2012 INC, CUHK. Outline. Background and related works Unicast capacity for static networks System model and definition Main result and sketch of derivation

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Capacity of Large Scale Wireless Networks with Directional Antenna and Delay Constraint

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  1. Capacity of Large Scale Wireless Networks with Directional Antenna and Delay Constraint Guanglin Zhang IWCT, SJTU 26 Sept, 2012 INC, CUHK

  2. Outline Background and related works Unicast capacity for static networks System model and definition Main result and sketch of derivation Multicast capacity for VANETs Main result and sketch of derivation Conclusions 2

  3. Outline Background and related works Unicast capacity for static networks System model and definition Main result and sketch of derivation Multicast capacity for VANETs Main result and sketch of derivation Conclusions 3

  4. Background A Roadmap of Technology Evolution (Borrowed from Junshan Zhang’s slides) iPhone on sale day “Broadband's take-up has repeatedly been jumpstarted by must-have applications. Napster drove the shift from dialup to wired broadband. Now Apple's iPhone is playing the same role in triggering explosive growth in the wireless Web. Unless we miss our guess, this dynamic is about to rudely change the subject from net neutrality to a shortage of wireless capacity to meet enthusiastic consumer demand …” [10/14/2009, Wall Street Journal] 4

  5. Background • Channel Capacity (Gaussian Channel): Known Tx Rx point-to-point (Shannon 48) Shannon 48 Tx 1 Rx1 Rx Tx Rx 2 Tx 2 Ahlswede 71 Liao 72 Cover 72 broadcast (Cover, Bergmans 70’s) multiple-access (Alshwede, Liao 70’s) Slides partially borrowed from D. Tse’s talk on Information Theory of Wireless Networks 5

  6. Background • Channel Capacity (Gaussian Channel): Unknown Tx 1 Rx 1 Tx 2 Rx 2 Han & Kobayashi 81 (Best known achievable region: Han & Kobayashi 81) Relay relay S D (Best known achievable region: El Gamal & Cover 79) El Gamal & Cover79 Slides partially borrowed from D. Tse’s talk on Information Theory of Wireless Networks 6

  7. Typical Related Work • Capacity in wireless ad hoc network not scalable • In static ad hoc wireless networks with n nodes, the per-node throughput behaves as • Main reason: spatial interference • Significant gap between demand and wireless capacity ground breaking work pessimistic result [1] P. Gupta, P.R. Kumar, The capacity of wireless networks, IEEE Trans. on Information Theory, March 2000. 7

  8. Typical Related Work • Mobility can increase the capacity: • Store-carry-forward communication scheme • Drawback: large delays S R D [2] M. Grossglauser and D. Tse, Mobility Increases the Capacity of Ad Hoc Wireless Networks, IEEE/ACM Trans. on Networking, August 2002. 8

  9. Typical Related Work • Infrastructure can increase capacity • In static ad hoc network with n wireless nodes and k base stations, the per-node capacity is • Assume that base stations are wired together with unlimited bandwidth, and • Many techniques to increase capacity • Directional antenna, Network coding, MIMO,… [3]Liu, B. and Liu, Z. and Towsley, D., On the capacity of hybrid wireless networks, INFOCOM 2003. 9

  10. Difficulty on Network Capacity Analysis • A large number of potential wireless transmissions • Neighboring transmissions interfere with each other • Dynamic of network topology due to node mobility • Uncertainty of channel quality, e.g., shadowing, pass loss, multi-path • … 10

  11. Outline Background and related works Unicast capacity for static networks System model and definition Main result and sketch of derivation Multicast capacity for VANETs Main result and sketch of derivation Conclusions 11

  12. System Models and Definition • Assumptions • n nodes and m base stations • n nodes randomly placed • m base stations regularly • deployed • Random source destination • pairs • Base stations are relays • Directional Antenna • Every node equipped with • directional antenna • Transmitting and receiving • range are common • Beam-width: 12

  13. Xl Xj Xk Xi System Models and Definition(Cont’) • Interference Model • Receiver-based Interference • model • Delay Constraint • Ad hoc mode transmission • Infrastructure mode transmission • Maximum hops form source to • destination: L • No interference between ad hoc • and infrastructure mode transmission 13

  14. Asymptotic Capacity • We say that the per-node capacity is if there exist two constants c and c’ such that • Sustainable: there exists a spatial and temporal scheduling scheme that can achieve such a rate. • Delay: The hops it takes to send packets from source nodes to their destinations. 14

  15. Outline Background and related works Unicast capacity for static networks System model and definition Main result and sketch of derivation Multicast capacity for VANETs Main result and sketch of derivation Conclusions 15

  16. Main contribution: the capacity of unicast network • Propose an L-maximum-hop delay constraint strategy, and give the closed-form upper bound of the capacity • Provide the transmission schedule strategy and the routing construction to achieve the upper bound of the capacity • Analyze the relations between throughput capacity and system parameters

  17. Main Results • Main theorem : Under the L-maximum-hop resource allocation strategy, by using directional antenna, the throughput capacity of the network is • Proof: sketch Ad HocMode Capacity HybridCapacity Infrastructure Mode Capacity Upper Bound Lower Bound 17

  18. Lower Bound: Sketch of derivation • Construct Voronoi Tessellation • Choose points, …, • Spanning • Adjacent Voronoi Cells • Cells have common points • Interfering Neighbors • Distance between cell • : transmission range • : guard zone 18

  19. Lower Bound: Sketch of derivation (Cont’) • Number of interfering neighbors Remark: every cell has no more than interfering neighbors, where 19

  20. Lower Bound: Routing and Scheduling • Scheduling • TDMA • Routing • Random chosen destination • Multihop transmission Remark: The scheduling strategy and routing are designed to avoid hot point 20

  21. Lower Bound: Routing and Scheduling • Traffic load • Expectation of traffic load P(the that cross V and can be used to forward packet) E(the number of lines in that cross V and can be used to forward packet) 21

  22. Lower Bound: Ad Hoc Mode Transmission • When , there exists a constant ,such that • When , we have 22

  23. Upper Bound: Ad Hoc Mode Transmission • When , the upper bound of per-node throughput capacityis • When , we have the upper bound per-node throughput capacity Remark: the number of simultaneous transmissions for the whole network is no more than 23

  24. Capacity Scaling Laws Multicast Throughput Capacity in Hybrid Wireless Networks 24

  25. Capacity with respect to L and m Relations with delay constraint L Relations with number of base stations m 25

  26. Capacity with respect to Relations with directional antenna when Relations with directional antenna when 26

  27. Outline Background and related works Unicast capacity for static networks System model and definition Main result and sketch of derivation Multicast capacity for VANETs Main result and sketch of derivation Conclusions 27

  28. System Model and Assumption • Assumption • There are n vehicular nodes and m • base stations in the network • At each time slot, n nodes are randomly • and uniformly deployed • m base stations are placed regularly • There are k multicast sessions • Directional antenna • Delay constraint • Each transmission should be finished within D time slots 28

  29. System Model and Assumption • Mobility model • 2D i.i.d. fast mobility model • 2D i.i.d. slow mobility model • 1D i.i.d. fast mobility model • 1D i.i.d. slow mobility model • Fit the vehicular mobility • Time scale of mobility • Fast mobility • The mobility of nodes is at the • same time scale as the trans- • mission of packets • Slow mobility • The mobility of nodes is much • slower than the transmission of packets 29

  30. Main Contribution for Multicast VANET • We present an asymptotic study of the multicast capacity for the hybrid VANETs, and obtain the closed form formula of the multicast capacity in order of magnitude • We analyze the impact of two mobility models and two mobility time scales on multicast capacity of the VANET, which is not considered in the state-of-the-art research, especially under delay constraint • We analyze the impact of the base stations, the beamwidth of the directional antenna, and delay constraint on the multicast capacity 30

  31. Intuitive Analysis: Multicast Capacity Reliable broadcasting channel Reliable receiving channel Unreliable relay channel Upper boundcapacityofhybridVANET Basestation Directional trans-ceiving 31

  32. Main Theorem and Proof Intuition • 2D i.i.d. fast mobility model Theorem 1: Under the 2D-i.i.d. fast mobility model and delay constraint D, we have the multicast capacity of ad hoc mode transmission Proof: (sketch) the packets are directly transmitted from source to their destinations 2-D i.i.d. fast mobilitymodel Infrastructure mode transmission Upper bound capacity the packets have to be transmitted from relays to their destinations Infrastructure mode transmission 2-D i.i.d. fast mobilitymodel 32

  33. Main Theorem and Proof Intuition • 2D i.i.d. slow mobility model Theorem 2: Under the 2D-i.i.d. slow mobility model and delay constraint D, we have the number of bits that are successfully delivered to their destinations in T time slots Proof: (sketch) The mobile speed of nodes are much slower than the data transmission Throughput capacity of VANET 2D i.i.d. slow mobility model 33

  34. Main Theorem and Proof Intuition • 1D i.i.d. fast mobility model Lemma 8: Under the 1D-i.i.d. fast mobility model and delay constraint D, we have the number of bits that are successfully delivered to their destinations in T time slots Proof: (sketch) H(B) denotes the minimum distance between the relays that carrying bit B and any of the p destinations. 34

  35. Main Theorem and Proof Intuition • 1D i.i.d. slow mobility model Theorem 3: Under the 1D-i.i.d. slow mobility model and delay constraint D, we have the number of bits that are successfully delivered to their destinations in T time slots Proof: (sketch) Step 1: Bitstransmitteddirectly from source to destinations By the Cauchy-Schwarz inequality, 35

  36. Proof Sketch By the Jansen inequality, Meanwhile, we can have, Then, we have, 36

  37. Proof Sketch Using similar approach as in step 1, we have, Step 2: Bits transmitted from relay to destinations Step 3: Bits that are successfully delivered to destinations up to time T 37

  38. Main Result: 2D i.i.d. fast mobility model: 2D i.i.d. slow mobility model: 1D i.i.d. fast mobility model: 1D i.i.d. slow mobility model: 38

  39. Capacity Scaling Laws Multicast Throughput Capacity in Hybrid VANET with Directional Antenna and Delay Constraint 39

  40. Conclusions • We study the unicast capacity of large scale wireless networks with directional antenna and delay constraint while the nodes are static. • The multicast capacity of VANET with different mobility models are investigated and the closed-form formulae are given in order of magnitude. • We analyze the impact of system parameters on the capacity scaling laws and provide scheduling strategy and routing construction to achieve the capacity bound. 40

  41. Future Work • The capacity of large scale wireless networks with network coding • The capacity of heterogeneous network with delay constraint • The capacity of wireless networks with social relationship • Information theoretic capacity of large scale wireless network 41

  42. Thank You!

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