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Adaptive neural network event-triggered secure formation control of nonholonomic mobile robots subject to deception attacks

Kai Wang, Wei Wu, Shaocheng Tong

Year
2024
Citations
7

Abstract

This paper investigates the adaptive neural network (NN) event-triggered secure formation control problem for nonholonomic mobile robots (NMRs) subject to deception attacks. The NNs are employed to approximate unknown nonlinear functions in robotic dynamics. Since the transmission channel from sensor-to-controller is vulnerable to deception attacks, a NN estimation technique is introduced to estimate the unknown deception attacks. In order to alleviate the amount of communication between controller-and-actuator, an event-triggered mechanism with relative threshold strategy is established. Then, an adaptive NN event-triggered secure formation control method is proposed. It is proved that all closed-loop signals of controlled systems are bounded and the formation tracking errors converge a neighborhood of the origin in the presence of deception attacks. The comparative simulations illustrate the effectiveness of the proposed secure formation control scheme.

Keywords

DeceptionNonholonomic systemComputer scienceEvent (particle physics)Subject (documents)Control (management)Artificial neural networkComputer securityMobile robotRobot

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