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A topology evolution model based on revised PageRank algorithm and node importance for wireless sensor networks - MaRDI portal

A topology evolution model based on revised PageRank algorithm and node importance for wireless sensor networks (Q1664829)

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scientific article; zbMATH DE number 6925635
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A topology evolution model based on revised PageRank algorithm and node importance for wireless sensor networks
scientific article; zbMATH DE number 6925635

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    A topology evolution model based on revised PageRank algorithm and node importance for wireless sensor networks (English)
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    27 August 2018
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    Summary: Wireless sensor network (WSN) is a classical self-organizing communication network, and its topology evolution currently becomes one of the attractive issues in this research field. Accordingly, the problem is divided into two subproblems: one is to design a new preferential attachment method and the other is to analyze the dynamics of the network topology evolution. To solve the first subproblem, a revised PageRank algorithm, called Con-rank, is proposed to evaluate the node importance upon the existing node contraction, and then a novel preferential attachment is designed based on the node importance calculated by the proposed Con-rank algorithm. To solve the second one, we firstly analyze the network topology evolution dynamics in a theoretical way and then simulate the evolution process. Theoretical analysis proves that the network topology evolution of our model agrees with power-law distribution, and simulation results are well consistent with our conclusions obtained from the theoretical analysis and simultaneously show that our topology evolution model is superior to the classic BA model in the average path length and the clustering coefficient, and the network topology is more robust and can tolerate the random attacks.
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