Dynamic Fine-Grained Localization in Ad-Hoc Networks of Sensors Weikuan Yu Dept. of Computer and...

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Dynamic Fine-Grained Localization in Ad-Hoc Networks of Sensors Weikuan Yu Dept. of Computer and Info. Sci. The Ohio State University

Transcript of Dynamic Fine-Grained Localization in Ad-Hoc Networks of Sensors Weikuan Yu Dept. of Computer and...

Page 1: Dynamic Fine-Grained Localization in Ad-Hoc Networks of Sensors Weikuan Yu Dept. of Computer and Info. Sci. The Ohio State University.

Dynamic Fine-Grained Localization in Ad-Hoc Networks of Sensors

Weikuan Yu

Dept. of Computer and Info. Sci.The Ohio State University

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Presentation Outline

Problem Statement General Ideas and Related Work Current System at Study

Goals aimed Processing Steps Algorithms Critical Factors

Node and beacon placement Traffic and energy consumption

Conclusion

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Problem Statement

Wireless sensors network widespread deployed signal sensing, emergence detection ground vibration

Location awareness is indispensable Immediate information transmission Quick routing of query Tracking of objects

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Problem Statement

Problems with GPS Not work indoors High power consumption, short lifetime High cost

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General Ideas and Related Work Localization Basics

Ranging RSSI ToA, TDoA AoA

Estimation

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Related Work

RADAR Use RF signals to track indoor objects Offline and online phases High cost

Cricket location support Low cost for location awareness Use Ultrasound singals 4 x 4 feet granularity

BAT Centralize configuration Granularity at centimeters level

Both Cricket and BAT are infrastructures-based networks

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ADLOS (Ad-Hoc Localization System) Goals

Ad-Hoc Sensor Network (Dynamic network) Fine granularity Low cost Distributed location awareness

Processing Phases Ranging Estimation

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Radio Characteristics

Received Signal StrengthSusceptible to environmental changesshadowing, fading and even altitudeNo consistent model for some factorsRestriction: all nodes are at ground level

r: distance, X and n are constants

WINS nodes

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WINS node RSSI characterization

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ToA using RF and Ultrasound

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Ultrasound Ranging characterization

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Signal Strength and ToA Ranging ToA is more robust and fine-grained Susceptible to environmental changes Consider the combination of ToA and RF

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Estimation Algorithms

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Estimation Algorithms

Atomic MultilaterationBasic Formula

Weighted Combination

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Iterative Multilateraion

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Accuracy of Iterative Multilateration

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Enhanced Iterative Multilateration

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Collaborative Multilateration

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Collaborative Multilateration

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Node and Beacon Placement

Connectivity of a node

Probability of having a connected node

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Number of nodes per unit area, lamda

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Distribution of Connectivity Results

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Required Beacon Nodes

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Power Chacterization

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Power consumption at different operational modes

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Traffic with different implementation

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Energy with different implementation

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Conclusion

A new localization system scheme for Ad-Hoc wireless sensor networks Distributed, low cost Fine-grained

ToA ranging is better; hybrid can be even better Distributed is advocated for estimation

Less energy Less traffic Although less accurate