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Mobility Identification and Clustering in Sparse Mobile Networks

机译:稀疏移动网络中的移动性识别和聚类

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Non-uniform distributions of mobile nodes are the norm for a mobile network. Often, there can be concentration areas or grouping of nodes. Early work has explored these features to help message disseminations. However, a mobile network application can generate complex mixing mobility patterns that render these work less effective and efficient. In addition, many applications run with in a sparse mode, namely, the network may not be connected all the time. In this paper, we propose two entropy based metrics to identify the nodes with different mobility patterns and further use the metrics to accomplish clustering. Aiming at low-end devices which have no inputs of velocity and location, we employ neighbor information through hello messages and draw speed implication through neighbor change rates. The entropy based metrics are used in a clustering algorithm to find stable nodes as cluster heads. According to the simulation results, two metrics, namely, speed entropy and relation entropy can be applied to distinguish active nodes from stable nodes in different group mixing configurations. The simulations also show that our new metric-based clustering algorithm generates more stable clusters.
机译:移动节点的不均匀分布是移动网络的标准。通常,可以有集中区域或节点分组。早期工作探讨了这些功能来帮助留言传播。然而,移动网络应用程序可以生成复杂的混合移动模式,使这些工作较低且有效地效率更低。此外,许多应用程序以稀疏模式运行,即,网络可能不会一直连接。在本文中,我们提出了两个基于熵的度量标准来识别具有不同移动模式的节点,并进一步使用指标来完成聚类。针对没有速度和位置输入的低端设备,我们通过Hello消息采用邻居信息并通过邻居变化率绘制速度含义。基于熵的度量标准用于聚类算法,以找到稳定的节点作为群集头。根据仿真结果,可以应用两个度量,即速度熵和关系熵,以区分不同组混合配置中的稳定节点的活动节点。仿真还表明,我们的新度量基于度量的聚类算法会产生更稳定的簇。

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