Abstract

Identifying important nodes is very crucial to design efficient communication networks or contain the spreading of information such as diseases and rumors. The problem is formulated as follows: given a network, which nodes are the more important? Most current studies did not incorporate the structure change as well as application features of a network. Aiming at the node importance evaluation in wireless sensor networks, a new method which ranks nodes according to their structural importance and performance impact is proposed. Namely, this method considers two aspects of the network, network structural characteristics and application requirements. This method integrates four indicators which reflect the node importance, namely, node degree, number of spanning trees, delay, and network energy consumption. Firstly, the changes in the four indicators are analyzed using the node deletion method. Then, the TOPSIS multi-attribute decision-making method is applied to merge these four evaluation indicators. On this basis, a more comprehensive evaluation method (MADME) for node importance is obtained. Theory study reveals MADME method saves computational time. And the simulation results show the superiority of the MADME method over various algorithms such as the N-Burt method, betweenness method, DEL-Node method, and IE-Matrix method. The accuracy of the evaluation can be improved, and the key nodes determined by the MADME method have a more obvious effect on the network performance. Our method can provide guidance on influential node identification in the network.

Highlights

  • Wireless sensor networks are composed of a large number of sensors equipped with radio communication capabilities [1]

  • Simulation results confirm that MADME can distinguish the important nodes with slight difference, and according to the key nodes obtained by the MADME method to deliberately attack the network, the network is quickly disintegrated

  • The main feature of the MADME method is that the application requirement indicator is consistent with reality and the structural characteristic indicator reflects the robustness of the structure, which improves the evaluating efficiency

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Summary

Introduction

Wireless sensor networks are composed of a large number of sensors equipped with radio communication capabilities [1]. Owing to their simple deployment and flexible and fast distribution, they have been widely applied in intelligent home, agricultural production, and other fields. Previous researches [6, 7] used the structural characteristic indicators such as the degree and the K-shell, respectively, to quantify the importance of a node. The application requirement indicators such as the network transmission efficiency and the load flow, respectively, were used to assess the importance of nodes in a complex network [8, 9]

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