journal article Open Access Feb 01, 2011

A Target Coverage Scheduling Scheme Based on Genetic Algorithms in Directional Sensor Networks

Sensors Vol. 11 No. 2 pp. 1888-1906 · MDPI AG
View at Publisher Save 10.3390/s110201888
Abstract
As a promising tool for monitoring the physical world, directional sensor networks (DSNs) consisting of a large number of directional sensors are attracting increasing attention. As directional sensors in DSNs have limited battery power and restricted angles of sensing range, maximizing the network lifetime while monitoring all the targets in a given area remains a challenge. A major technique to conserve the energy of directional sensors is to use a node wake-up scheduling protocol by which some sensors remain active to provide sensing services, while the others are inactive to conserve their energy. In this paper, we first address a Maximum Set Covers for DSNs (MSCD) problem, which is known to be NP-complete, and present a greedy algorithm-based target coverage scheduling scheme that can solve this problem by heuristics. This scheme is used as a baseline for comparison. We then propose a target coverage scheduling scheme based on a genetic algorithm that can find the optimal cover sets to extend the network lifetime while monitoring all targets by the evolutionary global search technique. To verify and evaluate these schemes, we conducted simulations and showed that the schemes can contribute to extending the network lifetime. Simulation results indicated that the genetic algorithm-based scheduling scheme had better performance than the greedy algorithm-based scheme in terms of maximizing network lifetime.
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Citations
23
References
Details
Published
Feb 01, 2011
Vol/Issue
11(2)
Pages
1888-1906
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Cite This Article
Joon-Min Gil, Youn-Hee Han (2011). A Target Coverage Scheduling Scheme Based on Genetic Algorithms in Directional Sensor Networks. Sensors, 11(2), 1888-1906. https://doi.org/10.3390/s110201888
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