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Asymptotically Optimum Distributed Estimation in the Presence of Attacks

机译:存在攻击时的渐近最优分布估计

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Distributed estimation of a deterministic mean-shift parameter in additive zero-mean noise is studied when using quantized data in the presence of Byzantine attacks. Several subsets of sensors are assumed to be tampered with by adversaries using different attacks such that the compromised sensors transmit fictitious data. First, we consider the task of identifying and categorizing the attacked sensors into different groups according to distinct types of attacks. It is shown that increasing the number of time samples at each sensor and enlarging the size of the sensor network can both ameliorate the identification and categorization, but to different extents. As , the attacked sensors can be perfectly identified and categorized, while with finite but sufficiently large , as , it can be shown that the fusion center can also ascertain the number of attacks and obtain an approximate categorization with a sufficiently small percentage of sensors that are misclassified. Next, in order to improve the estimation performance by utilizing the attacked observations, we consider joint estimation of the statistical description of the attacks and the parameter to be estimated after the sensors have been well categorized. When using the same quantization approach successfully employed without attacks, it can be shown that the corresponding Fisher Information Matrix (FIM) is singular. To overcome this, a time-variant quantization approach is proposed, which will provide a nonsingular FIM, provided that . Furthermore, the FIM is emp- oyed to provide necessary and sufficient conditions under which utilizing the compromised sensors in the proposed fashion will lead to better estimation performance when compared to approaches where the compromised sensors are ignored.
机译:在存在拜占庭式攻击的情况下使用量化数据时,研究了附加零均值噪声中确定性均值漂移参数的分布式估计。假定传感器的几个子集受到使用不同攻击的攻击者的篡改,从而使受感染的传感器发送虚拟数据。首先,我们考虑根据不同的攻击类型将受攻击的传感器进行识别和分类的任务。结果表明,增加每个传感器的时间采样数量并扩大传感器网络的规模可以改善识别和分类,但程度不同。可以很好地识别和分类受攻击的传感器,而有限但足够大,可以表明,融合中心还可以确定攻击次数,并以足够小的传感器百分比获得近似的分类。分类错误。接下来,为了通过利用被攻击的观察结果来提高估计性能,我们考虑对攻击的统计描述和传感器经过合理分类后要估计的参数进行联合估计。当使用成功采用的相同量化方法而没有受到攻击时,可以证明相应的Fisher信息矩阵(FIM)是奇异的。为了克服这个问题,提出了一种时变量化方法,该方法将提供非奇异的FIM,前提是:此外,与忽略忽略传感器的方法相比,FIM旨在提供必要和充分的条件,在这些条件下,以建议的方式使用受损传感器将导致更好的估计性能。

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