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Efficient data gathering using Compressed Sparse Functions

机译:使用压缩的稀疏函数进行有效的数据收集

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Data gathering is one of the core algorithmic and theoretic problems in wireless sensor networks. In this paper, we propose a novel approach — Compressed Sparse Functions — to efficiently gather data through the use of highly sophisticated Compressive Sensing techniques. The idea of CSF is to gather a compressed version of a satisfying function (containing all the data) under a suitable function base, and to finally recover the original data. We show through theoretical analysis that our scheme significantly outperforms state-of-the-art methods in terms of efficiency, while matching them in terms of accuracy. For example, in a binary tree-structured network of n nodes, our solution reduces the number of packets from the best-known O(kn log n) to O(k log2 n), where k is a parameter depending on the correlation of the underlying sensor data. Finally, we provide simulations showing that our solution can save up to 80% of communication overhead in a 100-node network. Extensive simulations further show that our solution is robust, high-capacity and low-delay.
机译:数据收集是无线传感器网络中的核心算法和理论问题之一。在本文中,我们提出了一种新颖的方法-压缩稀疏函数-通过使用高度复杂的压缩感测技术来有效地收集数据。 CSF的想法是在适当的函数库下收集令人满意的函数的压缩版本(包含所有数据),并最终恢复原始数据。我们通过理论分析表明,在效率方面,我们的方案明显优于最新方法,而在准确性方面,它们与它们相匹配。例如,在n个节点的二进制树结构网络中,我们的解决方案将数据包的数量从最著名的O(kn log n)减少到O(k log 2 n),其中k是取决于基础传感器数据的相关性的参数。最后,我们提供的仿真结果表明,我们的解决方案可以在100个节点的网络中节省多达80%的通信开销。大量的仿真进一步表明,我们的解决方案是可靠,高容量和低延迟的。

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