NetDetect: Neighborhood Discovery in Wireless Networks Using Adaptive Beacons

V. Iyer, Andrei Pruteanu, S. Dulman
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引用次数: 31

Abstract

It is generally foreseen that the number of wirelessly connected networking devices will increase in the next decades, leading to a rise in the number of applications involving large-scale networks. A major building block for enabling self-* system properties in ad-hoc scenarios is the run-time discovery of neighboring devices and somewhat equivalently, the estimation of the local node density. This problem has been studied extensively before, mainly in the context of fully-connected, synchronized networks. In this paper, we propose a novel adaptive and decentralized solution, the NetDetect algorithm, to the problem of discovering neighbors in a dynamic wireless network. The main difference with existing state of the art is that we target dynamic scenarios, i.e., multihop mesh networks involving mobile devices. The algorithm exploits the beaconing communication mechanism, dynamically adapting the beacon rate of the devices in the network based on local estimates of neighbor densities. We evaluate NetDetect on a variety of networks with increasing levels of dynamics: fully-connected networks, static and mobile multi-hop mesh networks. Results show that NetDetect performs well in all considered scenarios, maintaining a high rate of neighbor discoveries and good estimate of the neighborhood density even in very dynamic situations. More importantly, the proposed solution is adaptive, tracking changes in the local environment of the nodes without any additional algorithmic reconfiguration. Comparison with existing approaches shows that the proposed scheme is efficient from both convergence time and energy perspectives.
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NetDetect:无线网络中使用自适应信标的邻居发现
一般可以预见,无线连接网络设备的数量将在未来几十年增加,导致涉及大规模网络的应用程序数量增加。在ad-hoc场景中启用self-*系统属性的主要构建块是在运行时发现邻近设备,并在某种程度上等同于估计本地节点密度。这个问题以前已经被广泛研究过,主要是在全连接、同步网络的背景下。在本文中,我们提出了一种新的自适应和分散的解决方案,NetDetect算法,以发现动态无线网络中的邻居问题。与现有技术的主要区别在于,我们的目标是动态场景,即涉及移动设备的多跳网状网络。该算法利用信标通信机制,在局部估计邻居密度的基础上动态调整网络中设备的信标速率。我们在各种动态水平不断提高的网络上评估NetDetect:全连接网络,静态和移动多跳网状网络。结果表明,NetDetect在所有考虑的场景中都表现良好,即使在非常动态的情况下,也能保持较高的邻居发现率和良好的邻居密度估计。更重要的是,提出的解决方案是自适应的,跟踪节点的局部环境的变化,而无需任何额外的算法重新配置。与现有方法的比较表明,该方法在收敛时间和能量方面都是有效的。
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