Optimizing Sensor Identification in Long-delay Networks to Account for Maximum Frame Size and Variations in Propagation Speed

S.A. Howlader, M. Frater, M. Ryan
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引用次数: 1

Abstract

Long-delay networks (LDNs) are networks in which the propagation wave speed is lower than that of radio waves, such as in underwater acoustic networks (UANs). The number of nodes is normally large in such a sensor network and the number may very due to different factors such as power failure or environmental disasters. An identification procedure is needed in this network to observe which nodes are currently operational and a large amount of time can be wasted in every probe of the procedure due to the long propagation delay. Optimizing the number of probes improves the identification time and power consumption by 75% and 60% respectively in both the slotted and un-slotted cases [1]. While optimizing the number of probes for the long delay, the frame size (the time within which the nodes send their packets) increases due to the lower offered load. In this work we show that even with the limitation of the maximum frame size our procedure works well. One of the limitations of LDNs is the variation of the propagating wave speed. We observe that if the standard deviation of the propagation speed is approximately less than 1/e of the packet size then the identification procedure for the slotted case is better than that for the un-slotted case. In order to alleviate the effect of variation in propagation speed we use a guard time in the slotted case.
考虑最大帧大小和传播速度变化的长延迟网络中传感器识别优化
长时延网络(ldn)是指传播波的速度低于无线电波的网络,如水声网络(UANs)。在这种传感器网络中,节点数量通常很大,并且由于停电或环境灾害等不同因素,节点数量可能会很大。在这种网络中,需要一个识别过程来观察哪些节点当前是可操作的,并且由于传播延迟较长,该过程的每次探测都会浪费大量的时间。在开槽和未开槽情况下,优化探针数量分别使识别时间和功耗提高75%和60%[1]。在为长延迟优化探测数量的同时,由于提供的负载较低,帧大小(节点发送数据包的时间)会增加。在这项工作中,我们证明了即使有最大帧大小的限制,我们的程序也能很好地工作。ldn的局限性之一是传播波速的变化。我们观察到,如果传播速度的标准差大约小于数据包大小的1/e,则有槽情况的识别过程优于无槽情况的识别过程。为了减轻传播速度变化的影响,我们在开槽情况下使用了保护时间。
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