大规模无线传感器网络流言算法的性能分析

Sateeshkrishna Dhuli;Fouzul Atik;Anamika Chhabra;Prem Singh;Linga Reddy Cenkeramaddi
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引用次数: 0

摘要

流言算法因其简单、容错和适应网络变化的能力,通常被认为适合无线传感器网络(WSN)。它们基于分布式信息传播的理念,即网络中的每个节点定期向随机选择的邻居发送信息,从而在整个网络中迅速传播信息。这种方法有助于减少通信开销,并确保对节点故障的鲁棒性。由于通信开销低、可扩展,WSN 普遍采用这种方法。网络中每个节点收敛到其初始值平均值所需的时间称为平均时间。平均时间是根据随机矩阵的第二大特征值定义的。因此,估算和分析大规模 WSN 所需的平均时间在计算上非常复杂。本研究得出了 WSN 平均时间的明确表达式,并研究了各种网络参数的影响,如通信链路故障、拓扑变化、远距离链路、网络维度、节点传输距离和网络规模。我们的理论表达式将计算平均时间的计算复杂度大幅降低到 $O\left(n^{-3}\right)$。此外,数值结果表明,WSN 的长程链路和节点传输距离可以显著减少八卦算法的平均时间、能耗和绝对误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Gossip Algorithms for Large Scale Wireless Sensor Networks
Gossip algorithms are often considered suitable for wireless sensor networks (WSNs) because of their simplicity, fault tolerance, and adaptability to network changes. They are based on the idea of distributed information dissemination, where each node in the network periodically sends its information to randomly selected neighbors, leading to a rapid spread of information throughout the network. This approach helps reduce the communication overhead and ensures robustness against node failures. They have been commonly employed in WSNs owing to their low communication overheads and scalability. The time required for every node in the network to converge to the average of its initial value is called the average time. The average time is defined in terms of the second-largest eigenvalue of a stochastic matrix. Thus, estimating and analyzing the average time required for large-scale WSNs is computationally complex. This study derives explicit expressions of average time for WSNs and studies the effect of various network parameters such as communication link failures, topology changes, long-range links, network dimension, node transmission range, and network size. Our theoretical expressions substantially reduced the computational complexity of computing the average time to $O\left(n^{-3}\right)$ . Furthermore, numerical results reveal that the long-range links and node transmission range of WSNs can significantly reduce average time, energy consumption, and absolute error for gossip algorithms.
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