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Snapshot/Continuous Data Collection Capacity for Large- Scale Probabilistic Wireless Sensor Networks Shouling Ji Georgia State University Zhipeng Cai and Raheem Beyah Georgia Institute of Technology

Shouling Ji Georgia State University Zhipeng Cai and Raheem Beyah

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Snapshot/Continuous Data Collection Capacity for Large-Scale Probabilistic Wireless Sensor Networks. Shouling Ji Georgia State University Zhipeng Cai and Raheem Beyah Georgia Institute of Technology. OUTLINE. 1. Introduction. Network Model. 2. Network Partition. 3. - PowerPoint PPT Presentation

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Page 1: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

Snapshot/Continuous Data Collection Capacity for Large-Scale Probabilistic

Wireless Sensor NetworksShouling Ji

Georgia State UniversityZhipeng Cai and Raheem BeyahGeorgia Institute of Technology

Page 2: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

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OUTLINE

4

Introduction1

2

3

5

Network Partition

Network Model

Snapshot Data Collection

Continuous Data Collection

6 Simulation

Conclusion7

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Introduction

Page 4: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

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Capacity analysis in WSNs Why?

Unicast, Multicast, and Broadcast capacity Bits/Meter/Second

Data Collection Capacity Snapshot Data Collection Capacity

Continuous Data Collection Capacity

Introduction

Page 5: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

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Deterministic network model

Transitional region phenomenon

Probabilistic network model

ContributionsA Cell-based Multi-Path Scheduling (CMPS) algorithm for snapshot data

collection in probabilistic WSNs

A Zone-based Pipeline Scheduling (ZPS) algorithm for continuous data collection in probabilistic WSNs

Introduction

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Network Model

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n sensor nodes, ,

i.i.d. deployed in a square area

The sink is located at the top-right corner of the square

Single-radio single-channel

Success probability of a link

Network Model

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The number of transmission times satisfies the geometric distribution with parameter

Promising transmission threshold probability

A modified time slot

Data collection capacity

Network Model

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Network Partition

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Cell-based network partitionThe expected number of nodes in

each cell . (Lemma 1)

It is almost surely that no cell is empty. (Lemma 2)

It is almost surely that no cell contains more than nodes. (Lemma 3)

Network Partition

Page 11: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

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Zone-based network partitionCompatible Transmission Cell

Set (CTCS)

Let

then the set

is a CTCS. (Theorem 1)

Network Partition

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Snapshot Data Collection

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Data collection treeSuper node, super time slot

Snapshot Data Collection

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Cell-based Multi-Path Scheduling (CMPS)Phase I: Inner-Tree

Scheduling. Schedule CTCSs orderly.

Phase II: Schedule

.

Snapshot Data Collection

Page 15: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

AnalysisIt takes CMPS super time slots to finish Phase I. (Lemma 6)

Let be the number of super data packets transmitted by super node

through the data collection process. Then, for ,

(Lemma 7)

Let be the number of super data packets at waiting for transmission at the beginning of Phase II and , then

(Lemma 8)

Snapshot Data Collection

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Page 16: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

AnalysisThe achievable data collection capacity of CMPS is in the

worst cast and in the average case. In both cases, CMPS is order-optimal. (Theorem 2)

Snapshot Data Collection

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Continuous Data Collection

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Continuous Data Collection Compressive Data Gathering

+ pipeline

Zone-based Pipeline Scheduling (ZPS) algorithm Inter-Segment Pipeline

Scheduling.

Intra-Segment Scheduling.

Continuous Data Collection

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AnalysisTo collection N continuous snapshots, the achievable network capacity of

ZPS is

in the worst case, and

in the average case. (Theorem 3)

Continuous Data Collection

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Simulation

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Network Setting Parameters [17]

CMPSPS [4], MPS [8][9]

ZPSPSP (PS + pipeline) [PS], CDGP (CDG + pipeline) [15], PSA [8][9]

Simulation

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Performance of CMPS

Simulation

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Performance of ZPS

Simulation

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Performance of CMPS and ZPS in deterministic WSNs

Simulation

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We proposed a snapshot data collection algorithm CMPS for probabilistic WSNs, whose capacity is proven to be order-optimal

We proposed a continuous data collection algorithm ZPS for probabilistic WSNs, and analyzed its performance

Extensive simulations validated that the proposed algorithms can accelerate the data collection process

Conclusion

Page 26: Shouling Ji Georgia State University Zhipeng Cai  and  Raheem Beyah

THANK YOU!

Snapshot/Continuous Data Collection Capacity for Large-Scale Probabilistic

Wireless Sensor NetworksShouling Ji and Zhipeng Cai

Georgia State UniversityRaheem Beyah

Georgia Institute of Technology