DocumentCode
1055776
Title
Minimizing energy consumption in large-scale sensor networks through distributed data compression and hierarchical aggregation
Author
Baek, Seung Jun ; De Veciana, Gustavo ; Su, Xun
Author_Institution
Dept. of Electr. & Comput. Eng., Univ. of Texas, Austin, TX, USA
Volume
22
Issue
6
fYear
2004
Firstpage
1130
Lastpage
1140
Abstract
In this paper, we study how to reduce energy consumption in large-scale sensor networks, which systematically sample a spatio-temporal field. We begin by formulating a distributed compression problem subject to aggregation (energy) costs to a single sink. We show that the optimal solution is greedy and based on ordering sensors according to their aggregation costs-typically related to proximity-and, perhaps surprisingly, it is independent of the distribution of data sources. Next, we consider a simplified hierarchical model for a sensor network including multiple sinks, compressors/aggregation nodes, and sensors. Using a reasonable metric for energy cost, we show that the optimal organization of devices is associated with a Johnson-Mehl tessellation induced by their locations. Drawing on techniques from stochastic geometry, we analyze the energy savings that optimal hierarchies provide relative to previously proposed organizations based on proximity, i.e., associated Voronoi tessellations. Our analysis and simulations show that an optimal organization of aggregation/compression can yield 8%-28% energy savings depending on the compression ratio.
Keywords
data compression; optimisation; spatiotemporal phenomena; stochastic processes; wireless sensor networks; Johnson-Mehl tessellation; Voronoi tessellation; data aggregation; distributed data compression; large-scale sensor network; minimizing energy consumption; spatio-temporal field; stochastic geometry; Batteries; Cost function; Data compression; Energy consumption; Energy efficiency; Geometry; Intelligent networks; Large-scale systems; Sensor systems; Stochastic processes; Data aggregation; distributed data compression; sensor networks; stochastic geometry;
fLanguage
English
Journal_Title
Selected Areas in Communications, IEEE Journal on
Publisher
ieee
ISSN
0733-8716
Type
jour
DOI
10.1109/JSAC.2004.830934
Filename
1321225
Link To Document