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Localised Energy Based Clustering with Incentives for Efficient M2M Communications

机译:基于局部能量的聚类与高效M2M通信的激励

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摘要

In the existing literature, multi-hop communication-based clustering techniques for Machine-type Devices (MTDs) have been extensively studied to ensure energy-efficient Machine to Machine (M2M) communications. The techniques presented demonstrated advantages such as improved scalability and reliability performance in large scale M2M communication networks. However, significant waste in energy has been noted with some of the techniques during cluster formation and due to the inherent selfish behaviours of some of the MTDs when routing traffic from the edge to the sink regions. To mitigate selfish behaviours, encourage cooperation, and improve efficient energy performance amongst MTDs, this paper proposes a new method of clustering MTDs using local energy parameters augmented incentive, referred to as Local Energy based Clustering with Incentive Algorithm (LECIA). In this work, probing signals from the MTDs are considered to partition the network into regions. Local energy parameters are identified and then applied to cluster the MTDs in the partitioned regions. Centralised relay selection and incentive management system (CRSIMS) are invoked for relay device selection and stimulation of multihop transmissions respectively. Simulation results have indicated that the proposed approach has on average 5% and 37% more number of surviving devices, and 6% and 55 % more amount of remaining energy than the closely related conventional approaches, namely, the Hybrid Energy Efficient Distributed (HEED) and the Low Energy Adaptive Clustering Hierarchy-Centralised (LEACH), respectively.
机译:在现有的文献中,已经广泛研究了用于机器型设备(MTD)的多跳通信的聚类技术,以确保节能机器到机器(M2M)通信。该技术呈现了大规模M2M通信网络中提高的可扩展性和可靠性性能等优点。然而,在簇形成期间的一些技术已经注意到能量中的大量浪费,并且由于在从边缘到水槽区域的交通路由时,一些MTD的固有自私行为。为了缓解自私行为,鼓励合作,提高MTDS中的有效能源性能,提出了一种使用当地能量参数增强激励的新方法进行聚类,称为具有激励算法(Lecia)的本地能量参数集群。在这项工作中,来自MTD的探测信号被认为将网络分配到区域中。识别局部能量参数,然后施加以将MTD组聚集在分区区域中。调用集中式继电器选择和激励管理系统(CRSIMS)分别为中继设备选择和刺激多跳变速器。仿真结果表明,拟议的方法平均为幸存装置数量为5%和37%,剩余能量量的剩余量比与密切相关的传统方法相当6%和55%,即混合节能分布式(HEEED)以及低能量自适应聚类层次集中(LEACH)。

著录项

  • 来源
    《Journal of Communications》 |2019年第11期|1168-1179|共12页
  • 作者单位

    Department of Electrical and Electronic Engineering Tshwane University of Technology Pretoria South Africa;

    Department of Electrical and Electronic Engineering Tshwane University of Technology Pretoria South Africa;

    Department of Electrical and Electronic Engineering Tshwane University of Technology Pretoria South Africa;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Clustering; energy efficient; local energy; M2M; Partition; incentive;

    机译:聚类;高效节能;局部能量;M2M;划分;激励;
  • 入库时间 2022-08-18 21:58:22

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