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Accurate, dynamic, and distributed localization of phenomena for mobile sensor networks

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Auteur
Anagnostopoulos C., Hadjiefthymiades S., Kolomvatsos K.
Date
2016
Language
en
DOI
10.1145/2882966
Sujet
Artificial intelligence
Ground vehicles
Particle swarm optimization (PSO)
Sensor networks
Distributed localization
Mobile sensor networks
Node deployment
Particle swarm optimization technique
Phenomenon localization
Self-reorganization
Spatiotemporal evolution
Unmanned ground vehicles
Sensor nodes
Association for Computing Machinery
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Résumé
We present a robust, dynamic scheme for the automatic self-deployment and relocation of mobile sensor nodes (e.g., unmanned ground vehicles, robots) around areas where phenomena take place. Our scheme aims (i) to sense environmental contextual parameters and accurately capture the spatiotemporal evolution of a certain phenomenon (e.g., fire, air contamination) and (ii) to fully automate the deployment process by letting nodes relocate, self-organize (and self-reorganize), and optimally cover the focus area. Our intention is to "opportunistically" modify the previous placement of nodes to attain high-quality phenomenon monitoring. The required intelligence is fully distributed within the mobile sensor network so the deployment algorithm is executed incrementally by different nodes. The presented algorithm adopts the Particle Swarm Optimization technique, which yields very promising results as reported in the article (performance assessment). Our findings show that the proposed algorithm captures a certain phenomenon with very high accuracy while maintaining the networkwide energy expenditure at low levels. Random occurrences of similar phenomena put stress upon the algorithm which manages to react promptly and efficiently manage the available sensing resources in the broader setting. © 2016 ACM.
URI
http://hdl.handle.net/11615/70508
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