H∞-ESO Based Robust Path Tracking with Multi-Model Fusion for Underwater Robots in Nonlinear Disturbance Environments
Abstract
As an important equipment for Marine resource development and environmental monitoring, the path tracking accuracy of underwater robots is directly related to the reliability and stability of task execution. However, in the dynamic Marine environment, factors such as water flow disturbance, hydrodynamic nonlinearity, and uncertainty of system parameters can cause significant path deviations. Traditional control methods such as PID or sliding mode control have deficiencies in terms of robustness and real-time performance. To this end, a composite control strategy integrating H∞ robust control, extended state observer (ESO) and multi-model dynamic compensation mechanism is proposed. This strategy takes H∞ control as the core to enhance the lower bound of the system's stability against the most adverse disturbances. The unmeasured states and synthetic disturbances are estimated in real time through ESO to enhance the system's perception ability of complex disturbances. Combined with the multi-model fusion mechanism, the control model is adaptively switched for different interference modes, effectively enhancing the adaptability and flexibility of the control strategy. A six-degree-of-freedom simulation model was constructed in typical path and complex disturbance scenarios. Experiments were carried out by setting multiple performance indicators such as root mean square error (RMSE), maximum error, steady-state error, disturbance recovery time and performance retention rate. The results show that the RMSE of the H∞-ESO fusion controller is controlled at 0.103 meters in the undisturbed scenario, with a maximum error of 0.26 meters. In a strongly disturbed environment, the RMSE was 0.136 meters, the error recovery time was only 3.2 seconds, and the performance retention rate reached 87.5%, all of which were significantly better than the traditional H∞, ASMC and PID methods. This strategy performs outstandingly in improving control accuracy, enhancing system robustness and ensuring real-time response. It has good engineering deployability and promotion prospects, providing technical support for high-precision path tracking of underwater robots in unstructured environments.
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Zhang Y , Kong D , Shi Y ,et al.Recent progress on underwater soft robots: adhesion, grabbing, actuating, and sensing[J].Frontiers in Bioengineering and Biotechnology, 2023, 11(1):22.
Kita T , Tanaka T , Suzuki H .PROPOSAL OF MOVING METHOD OF UNDERWATER ROBOT WITH WHEELS FOR UNDERWATER STRUCTURE INSPECTION[J].Journal of Japan Society of Civil Engineers, Ser. B3 (Ocean Engineering), 2022.
Harada K , Fukuda R , Mizoguchi Y ,et al.Autonomous Underwater Vehicle with Vision-based Navigation System for Underwater Robot Competition[J].Proceedings of International Conference on Artificial Life and Robotics, 2022.
Group S T .Underwater Robot Makes History Crossing Gulf Stream[J].Sea Technology: Worldwide Information Leader for Marine Business, Science & Engineering, 2004, 45(12).
Zendehdel N , Gholami M .Robust Self-Adjustable Path-Tracking Control for Autonomous Underwater Vehicle[J].International Journal of Fuzzy Systems, 2020, 23(6–7).
Hong S , Choi J S , Kim H W ,et al.A path tracking control algorithm for underwater mining vehicles[J].Journal of Mechanical Science & Technology, 2009, 23(8):2030-2037.
Ni J , Wu L , Shi P ,et al.A Dynamic Bioinspired Neural Network Based Real-Time Path Planning Method for Autonomous Underwater Vehicles[J].Computational Intelligence and Neuroscience,2017,(2017-02-01), 2017, 2017:9269742.
Bing H , Guo-Liang Z .Path tracking control of underactuated surface vessels based on the differential flatness[J].Journal of Harbin Engineering University, 2004.
Takahashi Y , Yamamoto M , Wong K Y ,et al.Guaranteed Cost-Based Disturbance Observer and Controller Design for Path Tracking Control of a Powered Paraglider Under Unknown Rudder Trim and Wind Disturbances[J].IEEE Access, 2024, 12(000):14.
Guo L , Guo P , Guan L M H .Model predictive path tracking control of intelligent vehicles based on dual-stage disturbance observer under multi-channel disturbances[J].Measurement Science & Technology, 2024, 35(10):106202-1-106202-18.
Khodayari M H , Balochian S .Modeling and control of autonomous underwater vehicle (AUV) in heading and depth attitude via self-adaptive fuzzy PID controller[J].Journal of Marine Science and Technology, 2015, 20(3):559-578.
Xie Y , Zhu A , Huang Z .Research on the Control Performance of Depth-Fixed Motion of Underwater Vehicle Based on Fuzzy-PID[J].Journal of Robotics, 2023.
Le K D , Nguyen H D , Ranmuthugala D .Development and Control of a Low-Cost, Three-Thruster, Remotely Operated Underwater Vehicle[J].International Journal of Automation Technology, 2015, 9(1):67-75.
Lin C , Li B , Siampis E ,et al.Predictive Path-Tracking Control of an Autonomous Electric Vehicle with Various Multi-Actuation Topologies[J].Sensors (14248220), 2024, 24(5).
Dung N M , Duy V H , Phuong N T ,et al.Two-Wheeled Welding Mobile Robot for Tracking a Smooth Curved Welding Path Using Adaptive Sliding-Mode Control Technique[J].International Journal of Control Automation and Systems, 2007, 5(3):283-294.
He-Ming J , Xiang-Qin C , Li-Jun Z ,et al.Three-dimensional path tracking control for an underactuated AUV based on discrete-time sliding mode prediction[J].Kongzhi yu Juece/Control and Decision, 2011, 26(10):1452-1458.
Liu C , Li T , Wu W ,et al.Event-triggered predictive path following control of autonomous ships with an MMG model[J].Ocean engineering, 2024(Dec.15 Pt.1):314.
Tich P , Lechta P , Maturana F P ,et al.Multi-agent technology for robust control of shipboard chilled water system[J].IFAC Proceedings Volumes, 2004, 37(10):303-308.
Chung K C , Chiu H C , Su K Y .Robust Control Technology of Autonomous Vehicle on Virtual Magnetic Track[J].SAE report, 2024, 000(4):6.
Frazier B W , Tyson R K , Kakad Y P ,et al.Robust Control of an Adaptive Optics System Using H∞ Method[J].Springer US, 2004.
Li X , Qi Y , Li S ,et al.A multi‐input and single‐output voltage control for a polymer electrolyte fuel cell system using model predictive control method[J].International Journal of Energy Research, 2021, 45(9).
Galicki M .Finite-time control of mobile manipulators subject to unknown/unstructured external disturbances[J].International Journal of Robust and Nonlinear Control, 2023.
Yatsun S , Mal'Chikov A , Lushnikov B ,et al.Wheel drive control system of an under-ice robot for monitoring underwater objects[J].Automation and modeling in design and management, 2023.
Orucevic A , Wrzos-Kaminska M , Lys M E B ,et al.Automatic alignment of underwater snake robots operating in wakes of bluff bodies[J].Control Engineering Practice, 2024, 147(000):14.
Wang Y C , Zhang S X , Cao L J ,et al.Adaptive fuzzy backstepping control for nonlinear system with unknown control direction and input saturation[J].Systems Engineering and Electronics, 2016.
Wen N , Liu Z , Wang W ,et al.Feedback linearization control for uncertain nonlinear systems via generative adversarial networks[J].ISA Transactions, 2024, 146(000):12.
Liu D , Ouyang X , Zhao N ,et al.Adaptive Event-triggered Control with Prescribed Performance for Nonlinear System with Full-state Constraints[J].IAENG International Journal of Applied Mathematics, 2024, 54(3).
Wang F , Long L , Xiang C .Switching Event-Triggered Adaptive Neural Network Control for Switched Nonlinear Systems Under Hybrid Attacks[J].IEEE transactions on systems, man, and cybernetics. Systems, 2024(10 Pt.1):54.
Cui K , He J , Yao X G X .Adaptive model predictive control based on stability index for path tracking of autonomous vehicles considering model error[J].Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science, 2024, 238(19):9372-9396.
Mokhtari M R , Cherki B , Braham A C .Disturbance observer based hierarchical control of coaxial-rotor UAV[J].Isa Transactions, 2017, 67(Complete):466-475.
Liu S , Yan Y , Ji H ,et al.Lateral Control of Autonomous Vehicles with Data Dropout via an Enhanced Data-driven Model-free Adaptive Control Algorithm[J].Journal of Highway and Transportation Research and Development, 2024, 18(1):38-45.
Gou H , Zhao F , Tang M ,et al.A Lung Image Deep Learning Detection Model Based on Cross Residual Attention and Multi-feature Fusion[J].Information Technology & Control, 2024, 53(3).
Al-Hadithi B M , Adanez J M , Jimenez A .A multi-strategy fuzzy control method based on the Takagi-Sugeno model[J].Optimal Control Applications and Methods, 2023.
Chotikunnan R , Chotikunnan P , Imura P ,et al.The Utilization of Fuzzy Logic Controllers in Steering Control Systems for Electric Ambulance Golf Carts[J].International Journal of Robotics & Control Systems, 2024, 4(1).
Bhattacharyya M , Feissel P .A Bayesian inference approach for parametric identification through optimal control method[J].International Journal for Numerical Methods in Engineering, 2023.
Enol B , Demirolu U .Analyzing complex fractional order systems physical phenomena in IOPI controller design[J].Asian Journal of Control: Affiliated with ACPA, the Asian Control Professors, Association, 2024, 26(5):2324-2337.
Losev A N , Zolkin A L , Kalyakina I M ,et al.Development of decision making support controller for automated control system of mechatronics complex[J].AIP Conference Proceedings, 2024, 2969(1):8.
Cao S G , Rees N W , Feng G .H∞ control of uncertain fuzzy continuous-time systems[J].Fuzzy Sets and Systems, 2000, 115(2):171-190.
Mitsioni I , Tajvar P , Kragic D ,et al.Safe Data-Driven Model Predictive Control of Systems With Complex Dynamics[J].Robotics, IEEE Trans. on (T-RO), 2023, 39(4):17.
Li G , Liu L , Liu J ,et al.Three-dimensional low-order fixed-time integrated guidance and control for STT missile with strap-down seeker[J].Journal of the Franklin Institute, 2023.
DOI: https://doi.org/10.31449/inf.v49i32.9318

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