Authors
Atslands R Rocha, Luci Pirmez, Flávia C Delicato, Érico Lemos, Igor Santos, Danielo G Gomes, José Neuman de Souza
Publication date
2012/3/30
Journal
Computer Networks
Volume
56
Issue
5
Pages
1627-1645
Publisher
Elsevier
Description
We propose a semantic clustering model based on a fuzzy inference system to find out the semantic neighborhood relationships in wireless sensor networks in order to both reduce energy consumption and improve the data accuracy. As a case study we describe a structural health monitoring application which was used to illustrate and assess the proposed model. We conduct experiments in order to evaluate the proposal in two different scenarios of damage with different data aggregation methods. We also compared our proposal, using the same data set, with a deterministic clustering method and with the LEACH algorithm. The results indicate that our approach is an energy-efficient clustering method for WSNs, outperforming both the deterministic clustering and LEACH algorithms in about 70% and 47% of energy savings respectively. The energy saving comes from the fact that we have a more efficient in …
Total citations
201220132014201520162017201820192020202120222023198985262311
Scholar articles
AR Rocha, L Pirmez, FC Delicato, É Lemos, I Santos… - Computer Networks, 2012