基于压缩感知的大规模无线传感器网络多会话数据采集

Yuefei Zhu, Xinbing Wang
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引用次数: 5

摘要

研究了大规模无线传感器网络数据采集能力的尺度规律。以往许多关于数据收集能力的研究都集中在多对一的方案上,但我们研究了多会话数据收集范式下的能力,其中网络中的一些节点充当接收器,每个接收器有一组源节点来收集数据。这种模式的分析是有意义的,因为它可能在无线传感器网络中更常见,因为在现实世界中,我们经常希望不同的sink从部署在同一区域的传感器中获得不同类型的数据。在组播场景中,源节点向所有目的节点发送相同的数据,而在多会话数据收集中,汇聚节点必须从所有传感器节点接收不同的数据,这使得到达汇聚节点的最后一跳成为容量瓶颈。我们使用压缩感知(CS)这一新引入的采样理论,将数据采集容量的分析简化为类似于组播的情况。同时,压缩感知可以实现每个数据采集会话的容量增益$k/M$。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Session Data Gathering with Compressive Sensing for Large-Scale Wireless Sensor Networks
This paper studies the scaling law of the data gathering capacity of large-scale wireless sensor networks. Many previous researches on data gathering capacity focus on a many-to-one scheme, but we study the capacity in a multi-session data gathering paradigm, where some of the nodes in the network act as sinks and each sink has a set of source nodes to collect data. The analysis of this paradigm is meaningful in that it may be more commonplace in wireless sensor networks, because in real world, we often hope different sinks to get different kinds of data from sensors deployed in the same region. In the multicast scenario, a source node just sends the same data to all of its destinations, while in multi-session data gathering, the sink node has to receive different data from all its sensor nodes, which makes the last hop to the sink become a capacity bottleneck. We use compressive sensing (CS), a newly introduced sampling theory, to simplify the analysis of data gathering capacity into a similar way as the situation of multicast. Meanwhile, compressive sensing can achieve a capacity gain of $k/M$ for each data gathering session.
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