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3D Research

, 10:1 | Cite as

Energy-Efficient Target Tracking Algorithm for WSNs

  • Chunming Wu
  • Chen Zhao
  • Haoquan Gong
3DR Express
  • 16 Downloads
Part of the following topical collections:
  1. Modeling

Abstract

In order to solve the problem of node energy consumption in wireless sensor networks, an energy-efficient tracking cluster structure is proposed. The structure of the tracking cluster is determined by the cooperation between the auxiliary node and the cluster head node, and avoids the redundant nodes participating in the tracking. In order to balance the energy consumption of cluster head nodes, the method predict the position of target in next time by making auxiliary nodes track algorithm, then according to the prediction results, the nodes near prediction position are woken up in advance to reduce the energy consumption in the whole net. In the process of tracking, the loss recovery mechanism is adopted to solve the target loss phenomenon, and the continuous tracking of the target is completed. Finally, experiments are carried out with the improved particle filter algorithm. The simulation results show that the proposed algorithm can reduce the energy consumption of the nodes under the condition that the tracking accuracy is satisfied. Make the whole network energy consumption more balanced.

Keywords

Wireless sensor networks Target tracking Energy efficient tracking cluster Particle filter 

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Copyright information

© 3D Display Research Center, Kwangwoon University and Springer-Verlag GmbH Germany, part of Springer Nature 2018

Authors and Affiliations

  1. 1.School of Electrical EngineeringNortheast Electric Power UniversityJilinChina
  2. 2.State Grid Information and Telecommunication Co Ltd of Gansu ProvinceLanzhouChina

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