Node Cardinality Estimation Using a Mobile Base Station in a Heterogeneous Wireless Network Deployed Over a Large Region

Sachin Kadam, G. Kasbekar
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引用次数: 3

Abstract

We consider the problem of estimation of the node cardinality of each node type in a heterogeneous wireless network with T types of nodes deployed over a large region, where $T\geq 2$ is an integer. A mobile base station (MBS), such as that mounted on an unmanned aerial vehicle (UAV), is used in such cases since a single static base station is not sufficient to cover such a large region. The MBS moves around in the region, and makes multiple stops, and at the last stop, it is able to estimate the node cardinalities for the entire region. In this paper, we propose two schemes, viz., HSRC-MI and HSRC-M2, to rapidly estimate the number of nodes of each type. Both the schemes have two phases and they are performed at each stop. We prove that the node cardinality estimates computed using our proposed schemes equal and hence are as accurate as the estimates that would have been obtained if a well known estimation protocol designed for homogeneous networks in prior work is separately executed T times. Using simulations, we show that the numbers of slots required by the proposed schemes, viz., HSRC-MI and HSRCM2, for computing the node cardinality estimates are significantly less than the number of slots required for T separate executions of the above estimation protocol for homogeneous networks.
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基于大区域异构无线网络中移动基站的节点基数估计
我们考虑了一个异构无线网络中每个节点类型的节点基数的估计问题,该网络在一个大的区域内部署了T个节点类型,其中$T\geq 2$是一个整数。在这种情况下,需要使用安装在无人机(UAV)上的移动基站(MBS),因为单个静态基站不足以覆盖如此大的区域。MBS在区域内移动,并进行多次停止,在最后一站,它能够估计整个区域的节点基数。在本文中,我们提出了HSRC-MI和HSRC-M2两种方案来快速估计每种类型的节点数量。这两种方案都有两个阶段,并在每个站点执行。我们证明,使用我们提出的方案计算的节点基数估计等于,因此与如果在先前的工作中为同质网络设计的众所周知的估计协议单独执行T次所获得的估计一样准确。通过模拟,我们表明,所提出的方案(即HSRC-MI和HSRCM2)用于计算节点基数估计所需的插槽数量明显少于在同质网络中单独执行上述估计协议所需的插槽数量。
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