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Multicast throughput for large scale cognitive networks

机译:大规模认知网络的组播吞吐量

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摘要

In this paper, we focus on the achievable throughput of cognitive networks consisting of the primary ad hoc network (PaN) and the secondary ad hoc network (SaN). We construct PaN and SaN by placing nodes according to Poisson point processes of density n and m respectively over a unit square region. We directly study the multicast throughput of cognitive network to unify that of unicast and broadcast sessions. In order to ensure the priority of primary users in meanings of throughput, we design a metric called throughput decrement ratio (TDR) to measure the ratio of the throughput of PaN in presence of SaN to that of PaN in absence of SaN. Endowing PaN with the right to determine the threshold of the TDR, we propose multicast schemes based on TDMA and multihop routing for the two networks respectively and derive their achievable multicast throughput depending on the given threshold. Specially, wernshow when PaN has sparser density than SaN, to be specific, n = o(m/(log m)~2), and if PaN only cares about the order of its throughput, SaN can simultaneously achieve the same order of the aggregated multicast throughput as it were a standalone network in absence of PaN.
机译:在本文中,我们关注由主要自组织网络(PaN)和次要自组织网络(SaN)组成的认知网络的可实现吞吐量。我们通过分别在单位平方区域上根据密度为n和m的泊松点过程放置节点来构造PaN和SaN。我们直接研究认知网络的多播吞吐量,以统一单播和广播会话的吞吐量。为了确保主要用户在吞吐量意义上的优先级,我们设计了一个称为吞吐量递减率(TDR)的度量标准,以衡量存在SaN时PaN的吞吐量与不存在SaN时PaN的吞吐量的比率。赋予PaN确定TDR阈值的权利,我们分别针对两个网络提出了基于TDMA和多跳路由的组播方案,并根据给定的阈值推导了它们可实现的组播吞吐量。特别是,当PaN的密度比SaN稀疏时,特别是n = o(m /(log m)〜2)时,如果PaN只关心其吞吐量的顺序,则SaN可以同时达到相同的顺序。聚合多播吞吐量,因为它是没有PaN的独立网络。

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  • 来源
    《Wireless Networks》 |2010年第7期|p.1945-1960|共16页
  • 作者单位

    Key Laboratory of Embedded System and Service Computing, Ministry of Education, Department of Computer Science, Tongji University, Shanghai, China;

    rnKey Laboratory of Embedded System and Service Computing, Ministry of Education, Department of Computer Science, Tongji University, Shanghai, China;

    rnDepartment of Computer Science, Illinois Institute of Technology, Chicago, IL 60616, USA;

    rnDepartment of Computer Science and Engineering, Hong Kong University of Science and Technology, Hong Kong, China;

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  • 正文语种 eng
  • 中图分类
  • 关键词

    multicast throughput; cognitive networks; gaussian channel model; asymptotic scalability;

    机译:组播吞吐量;认知网络;高斯通道模型;渐近可伸缩性;

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