Detection of Data Injection Attacks on Decentralized Statistical Estimation

O. Shalom, Amir Leshem, A. Scaglione, A. Nedić
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引用次数: 4

Abstract

This paper describes a distributed statistical estimation problem, corresponding to a network of agents. The network may be vulnerable to data injection attacks, in which the attackers’ main goal is to steer the network’s final state to a state of their choice. We show that the detection metric of the straightforward attack scheme proposed by Wu et. at in [1], is vulnerable to a more sophisticated attack. To overcome this attack we propose a novel metric that can be computed locally by each agent to detect the presence of an attacker in the network, as well as a metric that localizes the attackers in the network. We conclude the paper with simulations supporting our findings.
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基于分散统计估计的数据注入攻击检测
本文描述了一个分布式统计估计问题,该问题对应于一个智能体网络。网络可能容易受到数据注入攻击,攻击者的主要目标是将网络的最终状态引导到他们选择的状态。我们证明了Wu等人在[1]中提出的直接攻击方案的检测指标容易受到更复杂的攻击。为了克服这种攻击,我们提出了一种新的度量,可以由每个代理在本地计算以检测网络中攻击者的存在,以及一种将网络中的攻击者定位的度量。最后,我们用模拟来支持我们的发现。
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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