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Algorithmic Models for Sensor Networks

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To develop algorithms and mathematically prove their correctness, simplifying ... to keep the analysis tractable and neglecting important properties of the nw ... – PowerPoint PPT presentation

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Title: Algorithmic Models for Sensor Networks


1
Algorithmic Models for Sensor Networks
  • Schmid, Wattenhofer
  • IPDPS06

2
Models and Sensor Networks
  • To develop algorithms and mathematically prove
    their correctness, simplifying models are needed
    for WSNs.
  • Balance between simplifying the model in order to
    keep the analysis tractable and neglecting
    important properties of the nw
  • Common representations are as a graph, geometric
    representation.

3
Connectivity Models
  • Given a set of nodes, which nodes can recv the
    transmission of a given node
  • Is u adjacent to v ?
  • Typically symmetric.
  • Classic model UDG
  • Transmission range normalized to 1

4
UDG
  • Idealistic since real radios are not omni
    directional and even small obstacles affect
    connectivity
  • Proposed General Graph

5
Connectivity models (contd.)
  • Too pessimistic!
  • Something between
  • the 2 extremes.
  • QDG with ?1 is a
  • UDG

6
UDG to QUDG
  • Many algorithms can be transformed from UDG to
    QUDG at a cost of 1/?2
  • This ok for ?0.5 (4)
  • But for ?0.1, much worse (100)
  • Still does not translate nicely to obstacles like
    walls eg. All nodes on one side of the wall can
    talk to each other but not the opposite side

7
Bounded Interference Graph (BIG)

8
Extending the dimension
  • 2d
  • Nodes in 2d Euclidean
  • plane form a doubling metric
  • General graph does not

9
Additional variations
  • Antennas
  • variations besides omni-directional
  • Link failures model probabilistically

10
Interference
  • Important for lower layer protocols
  • Most popular SINR Signal to Noise Interference
    Ratio
  • Does not specify power. 3 ways

11
Interference
  • The SINR model is very complicated
  • A lot of far away transmissions sum up as noise
    to a sender-receiver pair
  • ONE is popular. UDG with one UDI shown next

12
UDI UDG with Distance Inteference

13
Hop based Interference

14
Algorithms
  • Global can operate on entire network
  • Distributed a node has information about only
    its own state. Messages need to be exchanged to
    learn more about the nw. All nodes run their own
    algorithm
  • Localized Special case of distributed. Limited
    to k. A node can retard its right to communicate
    i.e. some causality

15
Other assumptions
  • MAC ideal vs. interference (adversary)
  • Random node distribution uniform distribution
    in 2d plane. Also Poisson
  • Worst-case node distribution completely
    arbitrary
  • Node ids again worst, random. Range can limit
    also

16
Other assumptions
  • Location info absolute or relative to other
    nodes.
  • Sleep time energy consumption
  • Lifetime definitions.

17
Conclusion
  • No one model
  • Emphasized that for correctness, the more
    pessimistic or conservative models should be used
  • Broad overview provided.
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