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Self-similarity in urban wireless networks: Hyperfractals

机译:城市无线网络中的自相似性:超分形

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We introduce a model of Poisson patterns of fixed and mobile nodes on lines designed for urban wireless networks. The pattern obeys to "Hyperfractal" rules of dimension larger than 2. The hyperfractal pattern is best suitable for capturing the traffic over the streets and highways in a city. We show that the network capacity under ad hoc routing algorithms scales much better than with the classic uniform Poisson shot model. The scaling effect depends on the hyperfractal dimensions. We show this results in two different routing models: nearest neighbor routing with no collision, minimum delay routing model assuming slotted Aloha and signal to interference ratio (SIR) capture condition, power-path loss and Rayleigh fading. The novelty of the model is that, in addition to capturing the irregularity and variability of the node configuration, it exploits self-similarity, a characteristic of urban wireless networks.
机译:我们介绍了专为城市无线网络设计的线路上的固定节点和移动节点的Poisson模式模型。该模式遵循大于2的“超分形”规则。超分形模式最适合捕获城市街道和高速公路上的交通。我们显示,在特殊路由算法下,网络容量的伸缩性比经典的统一Poisson射击模型好得多。缩放效果取决于超分形维数。我们在两种不同的路由模型中显示了这一结果:没有冲突的最近邻居路由,假设带时隙Aloha和信噪比(SIR)捕获条件的最小延迟路由模型,功率路径损耗和瑞利衰落。该模型的新颖之处在于,除了捕获节点配置的不规则性和可变性之外,该模型还利用了城市无线网络的特征自相似性。

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