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A barrier Lyapunov-based fast adaptive robust control system for 6- DOF autonomous submersible vehicles

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A barrier Lyapunov-based fast adaptive robust control system for 6- DOF autonomous submersible vehicles. / Ahmadian, Hossein; Arefi, Mohammad Mehdi; Khayatian, Alireza et al.
In: Robotics and Autonomous Systems, Vol. 194, 105115, 31.12.2025.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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APA

Ahmadian, H., Arefi, M. M., Khayatian, A., & Montazeri, A. (2025). A barrier Lyapunov-based fast adaptive robust control system for 6- DOF autonomous submersible vehicles. Robotics and Autonomous Systems, 194, Article 105115. Advance online publication. https://doi.org/10.1016/j.robot.2025.105115

Vancouver

Ahmadian H, Arefi MM, Khayatian A, Montazeri A. A barrier Lyapunov-based fast adaptive robust control system for 6- DOF autonomous submersible vehicles. Robotics and Autonomous Systems. 2025 Dec 31;194:105115. Epub 2025 Jul 29. doi: 10.1016/j.robot.2025.105115

Author

Ahmadian, Hossein ; Arefi, Mohammad Mehdi ; Khayatian, Alireza et al. / A barrier Lyapunov-based fast adaptive robust control system for 6- DOF autonomous submersible vehicles. In: Robotics and Autonomous Systems. 2025 ; Vol. 194.

Bibtex

@article{ec4a74e474a74be5a54aaba5b67456f1,
title = "A barrier Lyapunov-based fast adaptive robust control system for 6- DOF autonomous submersible vehicles",
abstract = "This paper proposes a novel fast adaptive back-stepping robust controller, based on thebarrier Lyapunov function ( BLF ), to address the position and velocity constraints typically imposed in the design of Euler–Lagrange systems. The aim is to improve upon various aspects of conventional L 1 adaptive control and Model Reference Adaptive Control ( MRAC ). The proposed controller reduces complexity by eliminating the low-pass filter from the design process in L 1 adaptive control, resulting in faster convergence and enhanced robustness against nonlinear uncertainties, external disturbances, and actuator dynamics, which are crucial in real-world applications. The performance of the proposed scheme is evaluated on two different Euler–Lagrange systems: a 6-degree-of-freedom (6- DOF ) remotely operated vehicle ( ROV ) and a single-link robot manipulator. Key performance indicators such as settling time, overshoot percentage, control effort, and trajectory tracking error are used for assessment. The results confirm that the proposed controller outperforms both L 1 adaptive control and MRAC in terms of tracking accuracy and state estimation errors for both position and velocity outputs. Additionally, the proposed method demonstrates superior performance in handling actuator dynamics, mitigating matched nonlinear time-varying disturbances, and achieving precise trajectory tracking, even in the presence of input gain uncertainties. These improvements establish the proposed controller as a more robust and efficient alternative to traditional adaptive control methods.",
author = "Hossein Ahmadian and Arefi, {Mohammad Mehdi} and Alireza Khayatian and Allahyar Montazeri",
year = "2025",
month = jul,
day = "29",
doi = "10.1016/j.robot.2025.105115",
language = "English",
volume = "194",
journal = "Robotics and Autonomous Systems",
issn = "0921-8890",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - A barrier Lyapunov-based fast adaptive robust control system for 6- DOF autonomous submersible vehicles

AU - Ahmadian, Hossein

AU - Arefi, Mohammad Mehdi

AU - Khayatian, Alireza

AU - Montazeri, Allahyar

PY - 2025/7/29

Y1 - 2025/7/29

N2 - This paper proposes a novel fast adaptive back-stepping robust controller, based on thebarrier Lyapunov function ( BLF ), to address the position and velocity constraints typically imposed in the design of Euler–Lagrange systems. The aim is to improve upon various aspects of conventional L 1 adaptive control and Model Reference Adaptive Control ( MRAC ). The proposed controller reduces complexity by eliminating the low-pass filter from the design process in L 1 adaptive control, resulting in faster convergence and enhanced robustness against nonlinear uncertainties, external disturbances, and actuator dynamics, which are crucial in real-world applications. The performance of the proposed scheme is evaluated on two different Euler–Lagrange systems: a 6-degree-of-freedom (6- DOF ) remotely operated vehicle ( ROV ) and a single-link robot manipulator. Key performance indicators such as settling time, overshoot percentage, control effort, and trajectory tracking error are used for assessment. The results confirm that the proposed controller outperforms both L 1 adaptive control and MRAC in terms of tracking accuracy and state estimation errors for both position and velocity outputs. Additionally, the proposed method demonstrates superior performance in handling actuator dynamics, mitigating matched nonlinear time-varying disturbances, and achieving precise trajectory tracking, even in the presence of input gain uncertainties. These improvements establish the proposed controller as a more robust and efficient alternative to traditional adaptive control methods.

AB - This paper proposes a novel fast adaptive back-stepping robust controller, based on thebarrier Lyapunov function ( BLF ), to address the position and velocity constraints typically imposed in the design of Euler–Lagrange systems. The aim is to improve upon various aspects of conventional L 1 adaptive control and Model Reference Adaptive Control ( MRAC ). The proposed controller reduces complexity by eliminating the low-pass filter from the design process in L 1 adaptive control, resulting in faster convergence and enhanced robustness against nonlinear uncertainties, external disturbances, and actuator dynamics, which are crucial in real-world applications. The performance of the proposed scheme is evaluated on two different Euler–Lagrange systems: a 6-degree-of-freedom (6- DOF ) remotely operated vehicle ( ROV ) and a single-link robot manipulator. Key performance indicators such as settling time, overshoot percentage, control effort, and trajectory tracking error are used for assessment. The results confirm that the proposed controller outperforms both L 1 adaptive control and MRAC in terms of tracking accuracy and state estimation errors for both position and velocity outputs. Additionally, the proposed method demonstrates superior performance in handling actuator dynamics, mitigating matched nonlinear time-varying disturbances, and achieving precise trajectory tracking, even in the presence of input gain uncertainties. These improvements establish the proposed controller as a more robust and efficient alternative to traditional adaptive control methods.

U2 - 10.1016/j.robot.2025.105115

DO - 10.1016/j.robot.2025.105115

M3 - Journal article

VL - 194

JO - Robotics and Autonomous Systems

JF - Robotics and Autonomous Systems

SN - 0921-8890

M1 - 105115

ER -