Reduced-rank Least Squares Parameter Estimation in the Presence of Byzantine Sensors

G. NaganandaK., Rick S. Blum, Alec Koppel
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Abstract

In this paper, we study the impact of the presence of byzantine sensors on the reduced-rank linear least squares (LS) estimator. A sensor network with N sensors makes observations of the physical phenomenon and transmits them to a fusion center which computes the LS estimate of the parameter of interest. It is well-known that rank reduction exploits the bias-variance tradeoff in the full-rank estimator by putting higher priority on highly informative content of the data. The low-rank LS estimator is constructed using this highly informative content, while the remaining data can be discarded without affecting the overall performance of the estimator. We consider the scenario where a fraction 0 < α < 1 of the N sensors are subject to data falsification attack from byzantine sensors, wherein an intruder injects a higher noise power (compared to the unattacked sensors) to the measurements of the attacked sensors.Our main contribution is an analytical characterization of the impact of data falsification attack of the above type on the performance of reduced-rank LS estimator. In particular, we show how optimally prioritizing the highly informative content of the data gets affected in the presence of attacks. A surprising result is that, under sensor attacks, when the elements of the data matrix are all positive the error performance of the low- rank estimator experiences a phenomenon wherein the estimate of the mean-squared error comprises negative components. A complex nonlinear programming-based recipe is known to exist that resolves this undesirable effect; however, the phenomenon is oftentimes considered very objectionable in the statistical literature. On the other hand, to our advantage this effect can serve to detect cyber attacks on sensor systems. Numerical results are presented to complement the theoretical findings of the paper.
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拜占庭传感器存在下的降秩最小二乘参数估计
在本文中,我们研究了拜占庭传感器的存在对降秩线性最小二乘估计量的影响。由N个传感器组成的传感器网络对物理现象进行观测,并将其传输到一个融合中心,由该中心计算感兴趣参数的LS估计。众所周知,秩降利用全秩估计器中的偏差-方差权衡,将高信息量的数据内容放在更高的优先级上。低秩LS估计器是使用这些高信息量的内容构建的,而剩余的数据可以被丢弃,而不会影响估计器的整体性能。我们考虑的情况是,N个传感器中的分数0 < α < 1受到拜占庭传感器的数据伪造攻击,其中入侵者向受攻击传感器的测量注入更高的噪声功率(与未受攻击的传感器相比)。我们的主要贡献是分析了上述类型的数据伪造攻击对降秩LS估计器性能的影响。特别是,我们展示了在存在攻击时如何对数据的高信息量内容进行最佳优先级排序。一个令人惊讶的结果是,在传感器攻击下,当数据矩阵的元素都是正值时,低秩估计器的误差性能会经历一种均方误差估计包含负分量的现象。已知存在一种复杂的基于非线性规划的方法来解决这种不良影响;然而,这种现象在统计文献中经常被认为是非常令人反感的。另一方面,对我们有利的是,这种效应可以用来检测对传感器系统的网络攻击。数值结果补充了本文的理论结论。
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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