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Original Articles

Energy Efficient Correlated Data Aggregation for Wireless Sensor Networks

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Pages 13-27 | Published online: 25 Jan 2008
 

Abstract

Data aggregations from Sensors to a sink in wireless sensor networks (WSNs) are typically characterized by correlation along the spatial, semantic, and temporal dimensions. Exploiting such correlation when performing data aggregation can result in considerable improvements in the bandwidth and energy performance of WSNs. For the sensors-to-sink data delivery, we first explore two theoretical solutions: the shortest path tree (SPT) and the minimum spanning tree (MST) approaches. To approximate the optimal solution (MST) in case of perfect correlation among data, we propose a new aggregation which combines the minimum dominating set (MDS) with the shortest path tree (SPT) in order to aggregate correlated data. To reduce the redundancy among correlated data and simplify the synchronization among transmission, the proposed aggregation takes two stages: local aggregation among sensors around a node in the MDS and global aggregation among sensors in the MDS. Finally, using discrete event simulations, we show that the proposed aggregation outperforms the SPT and closely approximates the centralized optimal solution, the MST, with less amount of overhead and in a decentralized fashion.

Notes

1The delay δ nc is set based on the maximum number of leaf nodes around a non-core node so that the leaf nodes can transmit data successfully to a non-core node within δ nc .

2The delay δ c is set inverse proportionally to the band-id.

W. Yuan, S. V. Krishnamurthy, and S. K. Tripathi, “Synchronization of Multiple Levels of Data Fusion in Wireless Sensor Networks,” 2003.

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