Journal ArticleParallel publicationPublished versionDOI: 10.48548/pubdata-2623

Neural network-based adaptive fault-tolerant control for strict-feedback nonlinear systems with input dead zone and saturation

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Date of first publication2024-12-20
Date of publication in PubData 2025-11-26

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English

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Variant form of DOI: 10.1016/j.jfranklin.2024.107471
Kharrat, M., Krichen, M., Alhazmi, H., & Mercorelli, P. (2025). Neural network-based adaptive fault-tolerant control for strict-feedback nonlinear systems with input dead zone and saturation. Journal of the Franklin Institute, 362(2), 107471.
Published in ISSN: 1879-2693
Journal of the Franklin Institute

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Abstract

This study investigates the issue of adaptive fault-tolerant neural control in strict-feedback nonlinear systems. The system is subjected to actuator faults, dead-zone and saturation. To model the unknown functions, radial basis function neural networks (RBFNN) are employed. The proposed approach utilizes a backstepping technique to formulate an adaptive fault-tolerant controller, drawing upon the Lyapunov stability theory and the approximation capabilities of RBFNN. The resultant controller guarantees the boundedness of all signals in the closed-loop system, ensuring precise tracking of the reference signal by the system output with a small, bounded error. Finally, simulation results are provided to illustrate the efficacy of the proposed strategy in addressing actuator faults, dead-zone, and saturation.

Keywords

Nonlinear System; Adaptive Control; Lyapunov Function; Actuator Fault; Dead-zone; Saturation; One-link Manipulator

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