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Covariance-Based Estimation for Clustered Sensor Networks Subject to Random Deception Attacks

机译:基于协方差的集群传感器网络受到随机欺骗攻击的协方差估计

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摘要

In this paper, a cluster-based approach is used to address the distributed fusion estimation problem (filtering and fixed-point smoothing) for discrete-time stochastic signals in the presence of random deception attacks. At each sampling time, measured outputs of the signal are provided by a networked system, whose sensors are grouped into clusters. Each cluster is connected to a local processor which gathers the measured outputs of its sensors and, in turn, the local processors of all clusters are connected with a global fusion center. The proposed cluster-based fusion estimation structure involves two stages. First, every single sensor in a cluster transmits its observations to the corresponding local processor, where least-squares local estimators are designed by an innovation approach. During this transmission, deception attacks to the sensor measurements may be randomly launched by an adversary, with known probabilities of success that may be different at each sensor. In the second stage, the local estimators are sent to the fusion center, where they are combined to generate the proposed fusion estimators. The covariance-based design of the distributed fusion filtering and fixed-point smoothing algorithms does not require full knowledge of the signal evolution model, but only the first and second order moments of the processes involved in the observation model. Simulations are provided to illustrate the theoretical results and analyze the effect of the attack success probability on the estimation performance.
机译:在本文中,基于簇的方法用于解决随机欺骗攻击存在下的离散时间随机信号的分布式融合估计问题(过滤和定点平滑)。在每个采样时间,信号的测量输出由网络系统提供,其传感器被分组成簇。每个群集都连接到本地处理器,该处处理器收集其传感器的测量输出,然后,所有集群的本地处理器都与全局融合中心连接。所提出的基于群集的融合估计结构涉及两个阶段。首先,集群中的每个单个传感器将其观察传输到相应的本地处理器,其中通过创新方法设计了最少平方的本地估计器。在此传输期间,对传感器测量的欺骗攻击可以由对手随机地启动,其成功的已知概率可以在每个传感器处不同。在第二阶段,将本地估计器发送到融合中心,在那里它们被组合以产生所提出的融合估计值。基于协方差的分布式融合滤波和定点平滑算法的设计不需要全面了解信号演化模型,而是仅仅是观察模型中涉及的过程的第一和二阶矩。提供模拟以说明理论结果,分析攻击成功概率对估计性能的影响。

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