Data Loss and Reconstruction in Wireless Sensor Networks

IEEE Trans. Parallel Distrib. Syst.(2014)

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摘要
Reconstructing the environment by sensory data is a fundamental operation for understanding the physical world in depth. A lot of basic scientific work (e.g., nature discovery, organic evolution) heavily relies on the accuracy of environment reconstruction. However, data loss in wireless sensor networks is common and has its special patterns due to noise, collision, unreliable link, and unexpected damage, which greatly reduces the reconstruction accuracy. Existing interpolation methods do not consider these patterns and thus fail to provide a satisfactory accuracy when the missing data rate becomes large. To address this problem, this paper proposes a novel approach based on compressive sensing to reconstruct the massive missing data. Firstly, we analyze the real sensory data from Intel Indoor, GreenOrbs, and Ocean Sense projects. They all exhibit the features of low-rank structure, spatial similarity, temporal stability and multi-attribute correlation. Motivated by these observations, we then develop an environmental space time improved compressive sensing (ESTI-CS) algorithm with a multi-attribute assistant (MAA) component for data reconstruction. Finally, extensive simulation results on real sensory datasets show that the proposed approach significantly outperforms existing solutions in terms of reconstruction accuracy.
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关键词
intel indoor projects,temporal stability,data loss and reconstruction,low-rank structure,ocean sense projects,interpolation,compressive sensing,environmental space time improved compressive sensing,sensory data,image reconstruction,spatial similarity,compressed sensing,esti-cs algorithm,maa,data reconstruction,environment reconstruction,wireless sensor networks,data loss,multi-attribute assistant,greenorbs projects,multi-attribute correlation,correlation methods,interpolation methods,correlation,matrix decomposition,energy management,accuracy
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