Finite Approximate Consensus for Privacy in Distributed Sensor Networks

Matthew O'Connor, W. Kleijn
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引用次数: 2

Abstract

With concepts such as the Internet of Things becoming more commonplace, greater emphasis must be placed on data privacy in large-scale public networks for these to be used securely without the threat of data theft. Most current distributed processing research deals with improving the flexibility and convergence speed of algorithms for networks of finite size with no constraints on information sharing and no concept for expected levels of signal privacy. In this work we investigate the concept of data privacy in unbounded public networks, where processing approximation is seen as a means to restrict information travel. We describe a practical method to use during processing aggregation stages that may be implemented in hardware to restrict the distance that data is shared. This method is efficient to implement, and requires very few update iterations to perform. We simulate the method and demonstrate its performance for the task of distributed acoustic beamforming in microphone sensor networks.
分布式传感器网络中隐私的有限近似一致性
随着物联网等概念变得越来越普遍,必须更加重视大规模公共网络中的数据隐私,以便安全地使用这些网络而不会受到数据盗窃的威胁。目前大多数分布式处理研究都是在有限规模的网络中提高算法的灵活性和收敛速度,这些网络没有对信息共享的限制,也没有信号隐私预期水平的概念。在这项工作中,我们研究了无界公共网络中的数据隐私概念,其中处理近似被视为限制信息传播的一种手段。我们描述了一种在处理聚合阶段使用的实用方法,该方法可以在硬件中实现,以限制数据共享的距离。这种方法实现起来很有效,并且需要很少的更新迭代来执行。通过仿真验证了该方法在传声器传感器网络中分布式声波束形成任务中的性能。
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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