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Directed Diffusion for Wireless Sensor Networking

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Directed Diffusion for Wireless Sensor Networking By Chalermek Intanagonwiwat, Ramesh Govindan, Deborah Estrin, John Heidemann, and Fabio Silva – PowerPoint PPT presentation

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Title: Directed Diffusion for Wireless Sensor Networking


1
Directed Diffusion for Wireless Sensor
Networking
  • By Chalermek Intanagonwiwat, Ramesh Govindan,
  • Deborah Estrin, John Heidemann, and Fabio Silva
  • Presented by Jin Sun

2
Outline
  • Introduction
  • The problem
  • Directed Diffusion Concepts
  • Simulation Results
  • Summary

3
Introduction
  • A region requires event-monitoring
  • Deploy sensors forming a distributed network
  • Wireless networking
  • Energy-limited nodes
  • On event, sensed and/or processed information
    delivered to the inquiring destination

4
The Problem
A sensor field
  • Where should the data be stored?
  • How should queries be routed to the stored data?
  • How should queries for sensor networks be
    expressed?
  • Where and how should aggregation be performed?

Event
Sensor sources
Sensor sink
On event, sensed and/or processed information
delivered to the inquiring destination
5
Directed Diffusion
  • Initial Goals
  • Propose an application-aware paradigm to
    facilitate efficient aggregation, and delivery of
    sensed data to inquiring destination

6
Directed Diffusion-how it works
Low data rate
Sink
How many vehicles do you observe in the
southeast quadrant?
High data rate
Source
  • Robust, efficient data distribution in sensor
    networks
  • name data (not nodes), use physicality
  • diffuse requests and responses across network
  • optimize path with gradient-based feedback
  • additional data can be processed and aggregated
    within the network

7
Directed Diffusion
  • Data Naming
  • Interests and Gradient
  • Data Propagation
  • Reinforcement
  • Path establishment
  • Path failure / recovery
  • Loop elimination

8
Data Naming
  • Expressing an Interest
  • Using attribute-value pairs
  • E.g.,
  • Data reply
  • Using attribute-value pairs
  • E.g.,

Type Wheeled vehicle // detect vehicle
location Interval 20 ms // send events every
20ms Duration 10 s // Send for next 10 s Field
x1, y1, x2, y2 // from sensors in this area
Type Wheeled vehicle // type of vehicle
seen Instance truck // instance of this
type Intensity 0.6 // signal amplitude
measure Confidence 0.85 // confidence in the
match Timestamp 012034 // event generation
time Field x1, y1, x2, y2 // from sensors in
this area
9
Directed Diffusion
  • Data Naming
  • Interests and Gradient
  • Data Propagation
  • Reinforcement
  • Path establishment
  • Path failure / recovery
  • Loop elimination

10
Interest Propagation
  • Inquirer (sink) broadcasts exploratory interest,
    i1
  • Intended to discover routes between source and
    sink
  • Neighbors update interest-cache and forwards i1
  • No way of knowing differentiating new interests
    from repeated

11
Gradient Establishment
Routed Data
  • Gradient for i1 set up to upstream neighbor
  • No source routes
  • Gradient a weighted reverse link
  • Low gradient ? Few packets per unit time needed

12
Directed Diffusion
  • Data Naming
  • Interests and Gradient
  • Data Propagation
  • Reinforcement
  • Path establishment
  • Path failure / recovery
  • Loop elimination

13
Event-data propagation
  • Event e1 occurs, matches i1 in sensor cache
  • e1 identified based on waveform pattern matching
  • Interest reply diffused down gradient (unicast)
  • Diffusion initially exploratory (low packet-rate)
  • Cache filters suppress previously seen data
  • Problem of bidirectional gradient avoided

14
Directed Diffusion
  • Data Naming
  • Interests and Gradient
  • Data Propagation
  • Reinforcement
  • Path establishment
  • Path failure / recovery
  • Loop elimination

15
Reinforcement
Event
D
B
  • From exploratory gradients, reinforce optimal
    path for high-rate data download ? Unicast
  • By requesting higher-rate-i1 on the optimal path
  • Exploratory gradients still exist useful for
    faults

A sensor field
Sink A
C
16
Path Failure / Recovery
  • Link failure detected by reduced rate, data loss
  • Choose next best link (i.e., compare links based
    on infrequent exploratory downloads)
  • Negatively reinforce lossy link
  • Either send i1 with base (exploratory) data rate
  • Or, allow neighbors cache to expire over time

Link A-M lossy A reinforces B B reinforces C D
need not A negative reinforces M M negative
reinforces D
Event
D
M
Src
A
C
Sink
B
17
Loop Elimination
Q
P
  • M gets same data from both D and P, but P always
    delivers late due to looping
  • M negatively-reinforces (nr) P, P nr Q, Q nr M
  • Loop M ? Q ? P eliminated
  • Conservative nr useful for fault resilience

A
D
M
18
Simulation Results
  • Compare directed diffusion to
  • flooding
  • Omniscient multicast
  • Key metrics
  • Average dissipated energy
  • per node energy dissipation / events seen by
    sinks
  • Average packet delay
  • latency of event transmission to reception at
    sink
  • Distinct event delivery
  • of distinct events received / of events
    originally sent

19
Average Dissipated Energy
flooding
Multicast
Diffusion
In-network aggragation reduces DD redundancy -
Flooding is poor because of multiple paths from
source to sink
20
Delay
flooding
Diffusion
Multicast
DD finds least delay paths - Floofding incurs
latency due to high MAC contention, colission
21
Event Delivery Ratio under node failures
0
10
20
Delivery ration degrades with more nodes
failures - Graceful degradation indicate
efficient negative reinforcement
22
Summary
  • Main Contributions
  • Description of new networking paradigm
  • Interests, gradients, reinforcement
  • Benefits of in-network processing
  • Aggregation and nested-queries
  • Works with multiple sources and sinks
  • Can perform local repair
  • Reinforce another path if a node dies

23
Summary (contd)
  • Disadvantages
  • Design doesnt deal with congestion or loss
  • Periodic broadcasts of interest reduces network
    lifetime
  • Nodes within range of human operator may die
    quickly

24
Thank You!
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