Localized and Precise Boundary Detection in 3-D Wireless Sensor Networks

This research focuses on distributed and localized algorithms for precise boundary detection in 3-D wireless networks. Our objectives are twofold. First, we aim to identify the nodes on the boundaries of a 3-D network, which serve as a key attribute that characterizes the network, especially in such...

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Veröffentlicht in:IEEE/ACM transactions on networking 2015-12, Vol.23 (6), p.1742-1754
Hauptverfasser: Zhou, Hongyu, Xia, Su, Jin, Miao, Wu, Hongyi
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creator Zhou, Hongyu
Xia, Su
Jin, Miao
Wu, Hongyi
description This research focuses on distributed and localized algorithms for precise boundary detection in 3-D wireless networks. Our objectives are twofold. First, we aim to identify the nodes on the boundaries of a 3-D network, which serve as a key attribute that characterizes the network, especially in such geographic exploration tasks as terrain and underwater reconnaissance. Second, we construct locally planarized 2-manifold surfaces for inner and outer boundaries in order to enable available graph theory tools to be applied on 3-D surfaces, such as embedding, localization, partition, and greedy routing among many others. To achieve the first objective, we propose a Unit Ball Fitting (UBF) algorithm that discovers a majority of boundary nodes, followed by a refinement algorithm, named Isolated Fragment Filtering (IFF), to remove isolated nodes that are misinterpreted as boundary nodes. Based on the identified boundary nodes, we develop an algorithm that constructs a locally planarized triangular mesh surface for each 3-D boundary. Our proposed scheme is localized, requiring information within 1-hop neighborhood only. We further extend the schemes for online boundary detection in mobile sensor networks aiming to achieve low overhead. Our simulation and experimental results demonstrate that the proposed algorithms can effectively identify boundary nodes and surfaces, even under high measurement errors.
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subjects Algorithms
Boundaries
Boundary detection
Complexity theory
Distance measurement
Filtering
Fittings
Heuristic algorithms
IEEE transactions
Networks
Position (location)
Surface fitting
Three dimensional
triangulation
Wireless networks
Wireless sensor networks
title Localized and Precise Boundary Detection in 3-D Wireless Sensor Networks
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