Open AccessJournal Article
Self-Localization Algorithm for Wireless Sensor Network
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TL;DR: Using collation of RSSI for range measurement between nodes and optimization of beacon node in sensor network, then localizing nodes by weight centroid algorithm shows that this algorithm has a better performance than classical RSSI algorithm.
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Abstract: Using collation of RSSI(received signal strength indicator)for range measurement between nodes and optimization of beacon node in sensor network,then localizing nodes by weight centroid algorithm.Simulation results show that this algorithm has a better performance than classical RSSI algorithm.
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Citations
DV-Hop Based Self-Adaptive Positioning in Wireless Sensor Networks
Zhao-yang Zhang,Xu Gou,Ya-peng Li,Shan-shan Huang +3 more
- 24 Sep 2009
TL;DR: This paper proposed two improved DV-Hop algorithms and integrated them reasonably into a self-adaptive positioning algorithm called SAP which includes two modes which saves the energy consumption and strikes a good balance between positioning accuracy and energy consumption.
26
Range-Free Fast and Rough Nodes Localization Algorithm in Wireless Sensor Networks
Wang Mei,Sun Xiaochuan,Zheng Hao +2 more
- 18 Aug 2009
TL;DR: The simulation results show that the localization algorithm (Fast and Rough Nodes Location Algorithm) has a small amount of communication, high positioning accuracy, balancing payloads, and is suitable for random deployment.
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References
DV-Hop Based Self-Adaptive Positioning in Wireless Sensor Networks
Zhao-yang Zhang,Xu Gou,Ya-peng Li,Shan-shan Huang +3 more
- 24 Sep 2009
TL;DR: This paper proposed two improved DV-Hop algorithms and integrated them reasonably into a self-adaptive positioning algorithm called SAP which includes two modes which saves the energy consumption and strikes a good balance between positioning accuracy and energy consumption.
26