Gossip Scheduling for Periodic Streams in Adhoc WSNs - PowerPoint PPT Presentation

1 / 23
About This Presentation
Title:

Gossip Scheduling for Periodic Streams in Adhoc WSNs

Description:

Gossip Scheduling for Periodic Streams in Ad-hoc WSNs ... Power consumption based on mote datasheet. Gossip scheduling reduces energy consumption by 40 ... – PowerPoint PPT presentation

Number of Views:40
Avg rating:3.0/5.0
Slides: 24
Provided by: nathanael3
Category:

less

Transcript and Presenter's Notes

Title: Gossip Scheduling for Periodic Streams in Adhoc WSNs


1
Gossip Scheduling for Periodic Streams in Ad-hoc
WSNs
  • Ercan Ucan, Nathanael Thompson, Indranil Gupta
  • Department of Computer Science
  • University of Illinois at Urbana-Champaign

Distributed Protocols Research Group
http//dprg.cs.uiuc.edu
2
Gossip in Ad-hoc WSNs
  • Useful for broadcast applications
  • Broadcast of queries TinyDB
  • Routing information spread HHL06
  • Failure Detection, Topology Discovery and
    Membership LAHS05
  • Code propagation/Sensor reprogramming Trickle

3
Canonical Gossip
  • Gossip (or epidemic) probabilistic forwarding
    of broadcasts BHOXBY99,DHGIL87
  • In sensor networks forward broadcast to
    neighbors with a probability p HHL06
  • Compared to flooding, gossip
  • Reliability is high (but probabilistic) if p gt
    0.7
  • Saves energy
  • Has latency that is comparable

4
Canonical Gossip HHL06
  • GOSSIP (per stream)
  • p gossip probability
  • loop
  • for each new message m do
  • r random number between 0.0 and 1.0
  • if (r lt p) then
  • broadcast message m
  • sleep gossip period

5
Target Setting
  • Our target setting
  • Multiple broadcast streams, each initiated by a
    separate publisher node
  • Each stream has a fixed stream period source
    initiates updates/broadcasts periodically
  • Different streams can have different period
  • Canonical gossip doesnt work!
  • Treats each stream individually
  • ? Overhead grows as sum of number of streams
  • First-cut Idea For periodic streams, combine
    gossips

6
Piggybacking
  • Combine multiple streams into one
  • Piggybacking Create gossip message containing
    latest updates from multiple streams
  • Basically, each node gossips a combined stream
  • ? Generates fewer messages and allows longer
    idle/sleep periods

7
Piggyback Gossip
  • PIGGYBACK GOSSIP
  • p gossip probability
  • loop
  • for each constituent stream s
  • for each new message m in s do
  • r random number between 0.0 and 1.0
  • if (r lt p) then
  • add m to piggyback gossip message b
  • broadcast message b
  • sleep gossip period

8
Gossip Scheduling
  • ? Basic piggybacking does not work if
  • Streams have different periods
  • Network packet payload size is finite
  • ? Solution create a gossip schedule
  • Determines which streams are piggybacked/packed
    into which gossip messages
  • Runs asynchronously at each node

9
Static Scheduling Problem
  • Solved centrally, and then followed by all nodes
  • Given a set of periodic streams, satisfy two
    requirements
  • I. New piggyback message must not exceed maximum
    network payload size
  • II. Maintain reliability, scalability and latency
    of canonical gossiping on individual streams
  • ? create groups of streams k constraint
  • ? for each stream group, send gossip with period
    min(all streams in that group)
  • ? gossip contains latest updates from each
    stream in group

10
Stream Groups k constraint
  • Each stream group contains lt k streams
  • Due to
  • Limit on size of network packet payload
  • For TinyOS, 28 B
  • Update message sizes from streams
  • Assume same for all streams
  • E.g., for 28 B payload and 5 B update message,
    k5
  • k constraint specifies maximum number of streams
    in one piggyback gossip

11
Relatedness Metric
  • For two streams with similar stream periods,
    combining them maximizes the utilization of
    piggyback

Gossip message containing Pub3 and Pub4 sent
every 6 sec
(k2)
  • Relatedness metric among each pair of streams i,j
    with periods ti and tj
  • R(i,j) min(ti,tj)/max(ti,tj)
  • (note that 0 lt R(i,j) lt 1.0)
  • Two streams are related if they have a high R
    value

12
Scheduling using Relatedness
  • In gossip schedule, highly related streams should
    be combined
  • Yet satisfy k-constraint
  • Express relatedness between streams in semblance
    graph

13
Semblance Graph
  • Each gossip stream is a vertex in complete graph
  • Edge weights represent relatedness R(i,j) between
    streams

14
Semblance Graph Sub-problem
  • Formally partition semblance graph into groups
  • Each Group has size no larger than k
  • Minimize sum of inter-group edge weights
  • i.e., maximize sum of intra-group edge weights
  • Greedy construction heuristics based on
    classical minimum spanning tree algorithms
  • Prim-like
  • Kruskal-like

15
I. Prim-like Algorithm
  • Scheduled set of groups S F
  • Initialize S with a single group consisting of
    one randomly selected vertex
  • Iteratively
  • Among all edges from S to V-S, select maximum
    weight edge e
  • Suppose e goes from a vertex in group g (in S) to
    some vertex v (in V-S)
  • Bring v into S
  • If g lt k, then add v into group g
  • Otherwise, create new group g in S, containing
    single vertex v
  • Time Complexity O(V2.log(V))

16
II. Kruskal-like Algorithm
  • Each node initially in its own group (size1)
  • Sort edges in decreasing order of weight
  • Iteratively consider edges in that order
  • Try to add edge
  • May combine two existing groups into one group
  • May be an edge within an existing group
  • If adding the edge causes a group to go beyond k,
    drop edge
  • Time complexity O(E.log(E) E) O(V2.log(V))

17
Comparison of Heuristics
  • Simulated algorithms on 5000 semblance graphs
  • Stream periods selected from interval within
    0,1 of size (1-homogeneity)
  • Kruskal-like better on majority of inputs
  • For any number of streams, homogeneity (and k)

18
Network Simulation
  • Canonical Gossip vs. Piggybacked Gossip
  • TinyOS simulator

19
Evaluation
  • Total messages sent will decrease
  • What are the effects on
  • Energy consumption?
  • Reliability?
  • Latency?

20
Energy Savings
  • Power consumption based on mote datasheet
  • Gossip scheduling reduces energy consumption by
    40

Flood Canonical Gossip PgFlood
Piggybacked Gossip-Scheduled Gossip
21
Reliability
  • Reliability reasonable up to 10 failures, and
    then degrades gracefully
  • Slightly worse than canonical gossip due to
    update buffering at nodes

Flood Canonical Gossip PgFlood
Piggybacked Gossip-Scheduled Gossip
22
Latency
  • Gossiping scheduling delays delivery at some
    nodes
  • But it has lower latency for most cases, and a
    lower median and average latency
  • Gossip scheduling pushes some updates quickly

Flood Canonical Gossip PgFlood
Piggybacked Gossip-Scheduled Gossip
23
Conclusion and Open Directions
  • Canonical gossip inefficient under multiple
    publishers sending out periodic broadcast streams
  • Use Gossip scheduling to efficiently piggyback
    different streams at nodes
  • satisfies network packet size constraints
  • retains reliability (compared to canonical
    gossip)
  • improves latency
  • lowers energy consumption
  • Open directions
  • Dynamic version adding/deleting streams, varying
    periods
  • Distributed scheduling

Distributed Protocols Research Group
http//dprg.cs.uiuc.edu
Write a Comment
User Comments (0)
About PowerShow.com