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Wireless Personal Communications

, Volume 97, Issue 3, pp 3483–3502 | Cite as

Adaptive Load-Aware Congestion Control Protocol for Wireless Sensor Networks

  • Tzung-Shi Chen
  • Chia-Hsu KuoEmail author
  • Zheng-Xin Wu
Article
  • 132 Downloads

Abstract

Congestion control in wireless sensor networks (WSNs) is crucial. In this article, we discuss congestion control and the adaptive load-aware problem for sensor nodes in WSNs. When the traffic load of a specific node exceeds its the available capacity of the node, a congestion problem occurs because of buffer memory overflow. Congestion may cause serious problems such as packet loss, the consumption of power, and low network throughput for sensor nodes. To address these problems, we propose a distributed congestion control protocol called adaptive load-aware congestion control protocol (ALACCP). The protocol can adaptively allocate the appropriate forwarding rate for jammed sensor nodes to mitigate the congestion load. Through the buffer management mechanism, the congestion index of neighboring sensor nodes, and an adjustment of the adaptive forwarding rate, the degree of congestion is alleviated markedly. The performance in allocating the forwarding rate effectively to neighboring sensor nodes also improves. The ALACCP can avoid packet loss because of traffic congestion, reduce the power consumption of nodes, and improve the network throughput. Simulation results revealed that the proposed ALACCP can effectively improve network performance and maintain the fairness of networks.

Keywords

Adaptive load-aware ALACCP Buffer management Congestion control Protocol Wireless sensor networks 

Notes

Acknowledgments

This work was partly supported by Grant NSC-99-2221-E-024-006 from Ministry of Science and Technology, Taiwan.

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Copyright information

© Springer Science+Business Media, LLC 2017

Authors and Affiliations

  1. 1.Department of Computer Science and Information EngineeringNational University of TainanTainanTaiwan
  2. 2.Department of Software EngineeringNational Kaohsiung Normal UniversityKaohsiung 824Taiwan

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