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Adaptive Sliding-Mode Path-Following Control of Cart-Pendulum Robots with False Data Injection Attacks

Jiadong Liu, Xiaozheng Jin, Chao Deng, Wei‐Wei Che

Year
2023
Citations
4
Access
Open access

Abstract

This paper addresses the displacement path-following problem for a class of disturbed cart-pendulum systems under the fake data injection (FDI) actuator attacks. A filter operator is proposed to estimate the weight vector caused by unknown attacks and disturbances, so that the actuator attacks can be parameterized using neural networks. Then, combined with filter signals and based on adaptive neural network and integral sliding-mode techniques, robust path-following control schemes are proposed to withdraw the impacts of disturbances and FDI attacks. The uniformly ultimately bounded stability results of the closed-loop cart-pendulum system with neural network weight estimations and sliding functions are achieved based on Lyapunov stability theory. Finally, a simulation model of a material robot is used to verify the proposed control strategy.

Keywords

Control theory (sociology)Inverted pendulumArtificial neural networkFilter (signal processing)Computer scienceControllabilityController (irrigation)Lyapunov stabilityLyapunov functionActuator

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