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基于动态水印的攻击检测弹性集员估计:面向传感器网络上的二维系统

A Dynamic Watermarking Scheme to Attack-Detection-Based Resilient Set-Membership Estimation for 2-D Systems Over Sensor Networks

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2025
被引 0
ABS 3

中文导读

针对传感器网络中的网络攻击和未知但有界噪声,提出一种基于动态水印的攻击检测方法,并设计可扩展的弹性集员估计器,使每个传感器能获得包含系统真实状态的椭球估计集。

Abstract

Cyberattacks significantly compromise the security of sensor networks, which largely hinder the accuracy and privacy of the information interaction process. However, it is tough to identify the attacks with unknown statistical models by a traditional detection scheme. This article is concerned with the resilient set-membership estimation for 2-D systems over sensor networks subject to cyberattacks and unknown-but-bounded noises. First, using the dynamic watermarking (DW) technique, a novel attack detection method is proposed to guarantee the security of information transmission among sensors. Compared to existing results on attack detection, the developed mechanism is capable of adapting to the ellipsoid-dependent set-membership estimation framework that incorporates the set ideas. Second, a group of scalable resilient set-membership estimators are derived for large-scale sensor networks. Each sensor has access to an ellipsoidal estimation set containing the true state of the system, in which the proposed design procedure is independent of global information about the network topology. Third, a set of parameter optimization algorithms is introduced in a recursive manner, which allows the sensor network to obtain a satisfactory estimation performance utilizing the designed estimation gain and detection mechanism. Lastly, a simulation example is shown to evaluate the availability and superiority of the proposed technique.

传感器网络网络攻击检测弹性估计二维系统动态水印