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LIPS: Link prediction as a service for adaptive data aggregation in wireless sensor networks

机译:嘴唇:链接预测作为无线传感器网络中自适应数据聚合的服务

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摘要

A central component of the design of wireless sensor networks is reliable and efficient transmission of data from source to destination. However, this remains a challenging problem because of the dynamic nature of wireless links, such as interference, diffusion, and path fading. When the link quality worsens, packets will get lost even with retransmissions and acknowledgments when internal queues become full. For example, in a well-known study to monitor volcano behavior [19], the measured data yield of nodes ranges from 20% to 80%. To address this challenge brought by unreliable links, in this paper, we propose the idea of LIPS, or Link Prediction as a Service. Specifically, we argue that it is beneficial for the applications to be designed as adaptive from the start, by taking into account the future link quality estimates based on past measurements. In particular, we present a novel state-space based approach for link quality prediction, and demonstrate that it is possible to integrate this model into higher layer data aggregation protocols to improve their performance.
机译:无线传感器网络设计的中心分量是可靠而有效地从源到目的地的数据传输。然而,由于无线链路的动态性质,例如干扰,扩散和路径衰落,这仍然是一个具有挑战性的问题。当链路质量恶化时,即使在内部队列已满时,即使在重传和确认时,数据包也会丢失。例如,在众所周知的研究以监测火山行为[19]中,节点的测量数据产量范围为20%至80%。为了解决不可靠的链接带来的这一挑战,在本文中,我们提出了嘴唇的思想,或作为服务的链接预测。具体而言,我们认为,从开始时,将应用程序设计为自适应的应用程序是有益的,通过考虑到基于过去的测量来了解未来的链路质量估计。特别地,我们介绍了一种用于链路质量预测的新型状态空间方法,并证明可以将该模型集成到更高层数据聚合协议中以提高它们的性能。

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