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Adaptive neural network control for nonlinear cyber-physical systems subject to false data injection attacks with prescribed performance

Zhijie Liu, Jinglei Tang, Zhijia Zhao, Shuang Zhang

2021Philosophical Transactions of the Royal Society A Mathematical Physical and Engineering Sciences18 citationsDOI

Abstract

Cyber-physical systems (CPSs), as emerging products of industry [Formula: see text], play a key role in the development of intelligent manufacturing. This paper proposes an observer-based adaptive neural network (NN) control for nonlinear strict-feedback CPSs subject to false data injection attacks. Since there may be strict constraints on the state or output signals of nonlinear cyber-physical systems (NCPSs), we propose a time-varying asymmetric barrier Lyapunov function to realize the specific output constraints of NCPSs under cyber-attacks. Besides, since false data injection attacks will corrupt the transmitted state variables, an observer is designed to obtain observations of the exact states, and NN is used to approximate the unknown nonlinearity of NCPSs. With the proposed control strategy, the constraint control problem of NCPSs subject to false data injection attacks is settled. Finally, a numerical simulation example verifies the effectiveness of the proposed controller. This article is part of the theme issue 'Towards symbiotic autonomous systems'.

Topics & Concepts

Nonlinear systemArtificial neural networkComputer scienceObserver (physics)Cyber-physical systemConstraint (computer-aided design)Controller (irrigation)Control theory (sociology)Key (lock)State (computer science)Control (management)Artificial intelligenceComputer securityAlgorithmMathematicsBiologyOperating systemGeometryQuantum mechanicsPhysicsAgronomyAdvanced Memory and Neural ComputingFault Detection and Control SystemsSmart Grid Security and Resilience
Adaptive neural network control for nonlinear cyber-physical systems subject to false data injection attacks with prescribed performance | Litcius