Drawing dominant dataset from big sensory data in wireless sensor networks

Siyao Cheng, Zhipeng Cai, Jianzhong Li, Xiaolin Fang
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引用次数: 126

Abstract

The amount of sensory data manifests an explosive growth due to the increasing popularity of Wireless Sensor Networks. The scale of the sensory data in many applications has already exceeds several petabytes annually, which is beyond the computation and transmission capabilities of the conventional WSNs. On the other hand, the information carried by big sensory data has high redundancy because of strong correlation among sensory data. In this paper, we define the concept of e-dominant dataset, which is only a small data set and can represent the vast information carried by big sensory data with the information loss rate being less than e, where e can be arbitrarily small. We prove that drawing the minimum e-dominant dataset is polynomial time solvable and provide a centralized algorithm with 0(n3) time complexity. Furthermore, a distributed algorithm with constant complexity (O(l)) is also designed. It is shown that the result returned by the distributed algorithm can satisfy the e requirement with a near optimal size. Finally, the extensive real experiment results and simulation results are carried out. The results indicate that all the proposed algorithms have high performance in terms of accuracy and energy efficiency.
从无线传感器网络的大数据中提取优势数据集
由于无线传感器网络的日益普及,传感器数据的数量呈现爆炸式增长。在许多应用中,每年的传感数据量已经超过数pb,这已经超出了传统wsn的计算和传输能力。另一方面,由于大数据之间的相关性强,大数据所承载的信息具有较高的冗余度。在本文中,我们定义了e-dominant dataset的概念,它只是一个小的数据集,可以代表大的感官数据所携带的大量信息,信息损失率小于e,其中e可以任意小。我们证明了绘制最小e优势数据集是多项式时间可解的,并提供了一个时间复杂度为0(n3)的集中算法。在此基础上,设计了一种复杂度为O(l)的分布式算法。结果表明,分布式算法能以接近最优的大小满足e的要求。最后,给出了大量的真实实验结果和仿真结果。结果表明,所提出的算法在精度和能效方面都具有较高的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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