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http://dx.doi.org/10.3837/tiis.2015.07.009

Collective Prediction exploiting Spatio Temporal correlation (CoPeST) for energy efficient wireless sensor networks  

ARUNRAJA, Muruganantham (Anna University, Regional Centre)
MALATHI, Veluchamy (Anna University, Regional Centre)
Publication Information
KSII Transactions on Internet and Information Systems (TIIS) / v.9, no.7, 2015 , pp. 2488-2511 More about this Journal
Abstract
Data redundancy has high impact on Wireless Sensor Network's (WSN) performance and reliability. Spatial and temporal similarity is an inherent property of sensory data. By reducing this spatio-temporal data redundancy, substantial amount of nodal energy and bandwidth can be conserved. Most of the data gathering approaches use either temporal correlation or spatial correlation to minimize data redundancy. In Collective Prediction exploiting Spatio Temporal correlation (CoPeST), we exploit both the spatial and temporal correlation between sensory data. In the proposed work, the spatial redundancy of sensor data is reduced by similarity based sub clustering, where closely correlated sensor nodes are represented by a single representative node. The temporal redundancy is reduced by model based prediction approach, where only a subset of sensor data is transmitted and the rest is predicted. The proposed work reduces substantial amount of energy expensive communication, while maintaining the data within user define error threshold. Being a distributed approach, the proposed work is highly scalable. The work achieves up to 65% data reduction in a periodical data gathering system with an error tolerance of 0.6℃ on collected data.
Keywords
wireless sensor network; data reduction; data prediction; similarity based clustering;
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