Binary observation‐based identification for finite impulse response systems under denial of service attacks

Author:

Wei Jingliang1,Jia Ruizhe1,Jing Fengwei2ORCID,Guo Jin13

Affiliation:

1. School of Automation and Electrical Engineering University of Science and Technology Beijing Beijing People's Republic of China

2. National Engineering Research Center for Advanced Rolling and Intelligent Manufacturing University of Science and Technology Beijing Beijing People's Republic of China

3. Key Laboratory of Knowledge Automation for Industrial Processes Ministry of Education Beijing People's Republic of China

Abstract

SummaryThis article considers the parameter identification problem for the finite impulse response system based on binary observations under denial of service attacks. First, in addition to designing the identification algorithm for the unknown parameter, and its convergence is verified, simultaneously obtaining the asymptotic normality. Then, based on the convergence speed of the identification algorithm and the covariance matrix of the estimation error, the optimal attack strategy problem is transformed into an optimization problem with constraints, then the optimal solution is given. Furthermore, a defense strategy with dual time‐scale input design method is proposed and its effectiveness is demonstrated. Finally, numerical simulations are applied to evidence the correctness of the raised method.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Beijing Municipality

Publisher

Wiley

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