| Literature DB >> 22163396 |
Abstract
A kind of data compression algorithm for sensor networks based on suboptimal clustering and virtual landmark routing within clusters is proposed in this paper. Firstly, temporal redundancy existing in data obtained by the same node in sequential instants can be eliminated. Then sensor networks nodes will be clustered. Virtual node landmarks in clusters can be established based on cluster heads. Routing in clusters can be realized by combining a greedy algorithm and a flooding algorithm. Thirdly, a global structure tree based on cluster heads will be established. During the course of data transmissions from nodes to cluster heads and from cluster heads to sink, the spatial redundancy existing in the data will be eliminated. Only part of the raw data needs to be transmitted from nodes to sink, and all raw data can be recovered in the sink based on a compression code and part of the raw data. Consequently, node energy can be saved, largely because transmission of redundant data can be avoided. As a result the overall performance of the sensor network can obviously be improved.Entities:
Keywords: data compression; suboptimal clustering; virtual landmark routing within cluster
Mesh:
Year: 2010 PMID: 22163396 PMCID: PMC3230967 DOI: 10.3390/s101009084
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Flow chart of the SC-LVLR algorithm.
Figure 2.Flow chart of the MSTC algorithm.
Figure 3.Changes of SNR as network size changes.
Figure 4.Changes of SNR with changes of values’ fluctuation amplitude.
Figure 5.Changes of NAEC as network size changes.
Figure 6.Changes of NAEC with changes of values’ fluctuation amplitude.
Figure 7.Changes of the number of expired nodes as time goes by.
Figure 8.Changes of the number of expired nodes as network size changes.
Figure 9.Changes of the number of expired nodes as changes of values’ fluctuation amplitude.