Information-theoretic modeling of false data filtering schemes in wireless sensor networks

Z. Cao, Hui Deng, Zhi Guan, Zhong Chen
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引用次数: 7

Abstract

False data filtering schemes are designed to filter out false data injected by malicious sensors; they keep the network immune to bogus event reports. Theoretic understanding of false data filtering schemes and guidelines to further improve their designs are still lacking. This article first presents an information-theoretic model of false data filtering schemes. From the information-theoretic view, we define the scheme's filtering capacity CFi as the uncertainty-reduction ratio of the target input variable, given the output. This metric not only performs better than existing metrics but also implies that only by optimizing the false negative rate and false positive rate simultaneously, can we promote a scheme's overall performance. Based on the investigation from the modeling efforts, we propose HiFi, a hybrid authentication-based false data filtering scheme. HiFi leverages the benefits of both symmetric and asymmetric cryptography and achieves a high filtering capacity, as well as low computation and communication overhead. Performance analysis demonstrates that our proposed metric is rational and useful, and that HiFi is effective and energy efficient.
无线传感器网络中假数据滤波方案的信息论建模
虚假数据过滤方案旨在过滤掉恶意传感器注入的虚假数据;他们让网络免受虚假事件报告的影响。对虚假数据过滤方案的理论认识和进一步改进其设计的指导方针仍然缺乏。本文首先提出了假数据过滤方案的信息论模型。从信息论的角度出发,我们将该方案的滤波能力CFi定义为给定输出的目标输入变量的不确定性缩减比。该指标不仅优于现有指标,而且表明只有同时优化假阴性率和假阳性率,才能提高方案的整体性能。基于对建模工作的研究,我们提出了HiFi,一种基于混合身份验证的虚假数据过滤方案。HiFi利用对称和非对称加密的优点,实现了高过滤能力,以及低计算和通信开销。性能分析表明,我们提出的指标是合理和有用的,并且高保真是有效和节能的。
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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