基于几何信息的弹幕中继网络传输强度缩放

B. Kraczek, Nicholas Woolsey
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引用次数: 1

摘要

弹幕中继网络(brn)是一种自组织无线网络,目前和计划用于军事、灾难响应、工业和车对车应用。brn是专门设计用于鲁棒运行的,不需要任何关于网络上其他节点相对位置的信息。BRN内特定连接中的节点由控制弹幕区域(CBR)的形成决定。在可靠性和节点利用率或为单个单播链路保留的节点数量之间存在权衡。在之前的一篇论文中,我们研究了brn对高密度网络的适用性,这是随着网络连接设备的爆炸式增长而预期的。我们发现节点利用率随着节点密度和源与目标之间的距离呈超线性增长,这就对brn在高密度网络中的适用性提出了质疑。本文利用连通图模型证明了CBR生成算法在无限节点密度极限下生成一个特定的几何形状。将这种几何结构应用于具有有限节点密度的更现实的随机信道模型(RCM),我们建议通过缩放接收器的发射功率来调整模型。发送功率是基于发送请求发送(RTS)和清除发送(CTS)数据包时接收到的信号强度,用于确定在CBR中使用的节点。研究表明,在离散事件模拟中,这种信号强度缩放可以降低利用率,同时提高CBR形成的概率。
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Geometry-Informed Transmission Strength Scaling in Barrage Relay Networks
Barrage relay networks (BRNs) are a type of ad hoc wireless network with current and proposed uses in military, disaster response, industrial and vehicle-to-vehicle applications. BRNs are designed specifically to operate robustly without any information about the relative positions of other nodes on the network. The nodes in a specific connection within a BRN are determined by the formation of a controlled barrage region (CBR). There is a trade-off between reliability and node utilization or the number of nodes that are reserved for a single unicast link. In a previous paper, we investigated the suitability of BRNs for higher-density networks, which are anticipated with the explosion of network-connected devices. We showed that node utilization increases superlinearly with both node density and the distance between source and destination, calling into question the suitability of BRNs for use in high-density networks. In this paper we use a connected graph model to show that CBR formation algorithm generates a specific geometry in the limit of infinite node density. Applying this geometry to a more physically realistic random channel model (RCM) with finite node density, we propose tuning the model by scaling the transmission power of receivers. The transmit power is based on received signal strength during the sending of request to send (RTS) and clear to send (CTS) packets, used to determine the nodes used in the CBR. We show that in discrete event simulations this signal strength scaling can reduce the utilization while simultaneously improving the probability of CBR formation.
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