A Review of Path Following, Trajectory Tracking, and Formation Control for Autonomous Underwater Vehicles
Abstract
1. Introduction
- (1)
- A comprehensive review of AUV motion control technology is conducted, covering the three core directions of path following, trajectory tracking, and formation control. The characteristics, applicable scenarios, advantages, and limitations of various motion control methods are summarized in detail. In addition, a systematic classification of different control methods is conducted and we summarize the control strategies proposed to address these problems.
- (2)
- The main problems and challenges in the field of AUV motion control are identified and summarized. These include environmental adaptation problems and system characterization problems. The impact of key factors in the marine environment on AUV motion control is discussed in depth. Additionally, the constraints imposed by AUV system characteristics, such as nonlinear dynamics, dynamic coupling, and model uncertainty, are analyzed in the context of motion control.
- (3)
- The shortcomings of current research are summarized, and future development trends are anticipated. These trends include the further development of intelligent control methods, the optimization of multi-AUV cooperative operations, and the enhancement of adaptability to complex environments.
2. AUV Motion Control Methods
2.1. Path-Following Control
2.1.1. Classical PID Control and Its Extensions
2.1.2. Sliding-Mode Control and Its Improvement
2.1.3. Model Predictive Control
2.1.4. Intelligent Controls
2.2. Trajectory Tracking Control
2.2.1. Sliding-Mode Control
2.2.2. Feedback Linearization and MPC
2.2.3. Intelligent Controls
2.2.4. Adaptive Control
2.3. Formation Control
2.3.1. Leader–Follower Method
2.3.2. Consistency Control Method
2.3.3. Virtual Structure Method
2.3.4. Behavior-Based Method
3. Analysis and Discussion
3.1. Impact of the Complex Environment on AUV Control
3.1.1. Effects of Currents
3.1.2. Effects of Ocean Waves
3.1.3. Effects of Water Density Stratification
3.1.4. Effects of Sea Ice
3.1.5. Other Factors
3.2. Impact of System Characteristics on AUV Control
3.2.1. Model Uncertainty and External Disturbances
3.2.2. Coupling and Nonlinear Characteristics
3.2.3. Constraint Properties
3.3. Future Research Directions
- Enhancing Intelligent Control and Autonomous Decision-Making
- 2.
- High-Precision Navigation and Multi-Sensor Fusion
- 3.
- Multi-AUV Cooperative Operations and Distributed Control Optimization
4. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
- AUV (autonomous underwater vehicle): A self-guided unmanned vehicle that operates underwater without real-time human control.
- Path following: Control strategy guiding the AUV along a predefined geometric path without explicit timing constraints.
- Trajectory tracking: Control strategy ensuring the AUV follows a time-dependent spatial trajectory.
- Formation control: Techniques to coordinate multiple AUVs to maintain relative positioning during cooperative missions.
- PID (proportional–integral–derivative) control: A classical feedback controller widely used for its simplicity and reliability.
- Sliding-mode control (SMC): A nonlinear robust control strategy known for its strong disturbance rejection.
- Model predictive control (MPC): An optimization-based control strategy that uses a model to predict and optimize future system behavior.
- Reinforcement learning (RL): A type of machine learning where agents learn optimal policies through interactions with the environment.
- Fuzzy logic control: A rule-based control method that handles uncertainty and imprecision using fuzzy set theory.
- Adaptive control: A control method that adjusts controller parameters in real time to cope with system uncertainties.
- Consistency control: A distributed control method that ensures multiple agents agree on certain variables through local interactions.
- Virtual structure: A formation control method treating all vehicles as rigidly connected parts of a single virtual object.
- Underactuated system: A system with fewer control inputs than degrees of freedom, common in AUV design.
- Observer: A computational tool to estimate unmeasurable internal states or disturbances in a control system.
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Paper | Publication Year | Main Contents |
---|---|---|
[49] | 2014 | adaptive sliding-mode control for formation control |
[17] | 2016 | path-following control via fuzzy backstepping sliding-mode control |
[24] | 2018 | path-following control using adaptive second-order sliding-mode control |
[46] | 2018 | formation control using adaptive self-organizing map neural network |
[20] | 2019 | path-following control based on fuzzy sliding-mode control with radial basis function neural networks |
[38] | 2020 | trajectory tracking control based on backstepping and adaptive sliding-mode control |
[48] | 2021 | formation control based on reinforcement learning |
[22] | 2022 | path-following control integrating reinforcement learning and dynamic data-driven models |
[35] | 2022 | trajectory control using rapidly deployed deep reinforcement learning |
[54] | 2023 | formation transformation control algorithm based on leader–follower strategy |
[25] | 2024 | 3d path-following control method based on backstepping sliding-mode control |
[33] | 2025 | trajectory tracking control method based on adaptive sliding-mode control using backstepping and neural networks |
Control Methods | Path-Following Control | Trajectory Tracking Control | Formation Control |
---|---|---|---|
fuzzy logic control | [17,18,19] | [25,26,27,28,29,30,31] | [43,44,45] |
neural network control | [20,21] | [33,34] | [46,47] |
reinforcement learning control | [22,23] | [35,36,37] | [48] |
adaptive dynamic programming control | [24] | [38] | [48] |
Intelligent Control Method | Advantages | Disadvantages |
---|---|---|
fuzzy logic control | handle uncertainties [18,24,28], no precise model needed [18,26], strong robustness [24,29] | complex rule design [18,28], high computational cost [24,28], no guarantee of global optimum [18,26] |
neural network control | adaptability [20,33,34], strong nonlinear mapping ability [20,33], data-driven [20,34] | large training data requirement [20,34], risk of overfitting [20,33], poor interpretability |
reinforcement learning control | self-learning [21,23,36], ability to adapt to complex environments [21,35,37], long- term optimization [21,36] | slow convergence [20,34], difficulty in balancing exploration and exploitation [20,23], sensitivity to initial conditions [21,36] |
adaptive dynamic programming control | online parameter tuning [24,32,38], strong robustness [24,29], suitability for unknown systems [24,32] | complex design [24,32], stability issues [24,29], high computational cost [24,32] |
Control Methods | Application Scenarios | Strengths | Limitations |
---|---|---|---|
PID control | path tracking and positioning [59] and simple dynamic systems [72] | wide applicability [59], strong robustness [60], simple to implement [72] | poor adaptability to nonlinear systems [59], limited dynamic performance [60], complex parameter tuning [58] |
sliding-model control | nonlinear and uncertain systems [61], path tracking and dynamic positioning [62] | strong robustness [61], fast dynamic response [62], adaptation to complex dynamics [63] | high-frequency vibration problems [61], sensitivity to noise [62], high implementation complexity [63] |
model predictive control | path planning and tracking [66], complex dynamic systems [67] | optimization ability [66], adaptation to complex dynamics [67], predictive ability [68] | difficulty in implementation [66], high computational complexity [68], reliance on precise models [69] |
intelligent controls | complex tasks and dynamic environments [21], autonomous decision-making and optimization [70] | autonomous learning ability [21], adaptation to complex dynamics [70], high flexibility [71] | lack of real-time performance [23], high dependence on environment [21], long training time [70] |
Control Methods | Robustness | Adaptability | Computational Cost | Implementation Simplicity | Practical Applicability |
---|---|---|---|---|---|
PID control | medium | low | low | high | good |
sliding-model control | high | medium | medium | medium | good |
model predictive control | high | high | high | low | medium |
neural network control | medium | high | high | low | medium |
reinforcement learning | medium | high | very high | low | emerging |
Control Methods | Applicable Conditions | Advantages | Disadvantages |
---|---|---|---|
leader–follower method | cooperative operations of multiple AUVs, with a leader guiding the formation’s movement | computational complexity [54], high control accuracy [84], reduced enhanced system robustness [85] | high communication demand [84], dependent on leader [86] |
consistency control method | local interaction enables variable consistency | reduced dependence on global information [87,88], strong distributed autonomy [89], high robustness [90] | inadequate adaptation to dynamic environmental factors [89], face vibration issues [90] |
virtual structure method | high-precision formations with high fault tolerance requirements | strong fault tolerance [91], high flexibility [40,92] | dependent on global information [40,91,92,93,94], high communication requirements [92] |
behavior-based method | unstructured tasks with self-organized formations | high flexibility, adaptable to dynamic environments [95,96] | lack of global coordination [97], weak precise control ability [98,99] |
Focus Problem | Path-Following Control | Trajectory Tracking Control | Formation Control | Main Methods and Techniques |
---|---|---|---|---|
environmental adaptability issues | current disturbances [65,107,108,109,110,111], water density stratification [112,113,114], sea ice (navigation failure) [115,116,117,118], waves (pose disturbance) [119,120,121] | current/wave disturbances [74,81], water density stratification [122] | current disturbances, sea ice [123,124,125,126], communication delays [127] | guidance law improvement [107,108,109,110,111,128,129,130], observer techniques [131,132,133,134,135,136,137,138], intelligent algorithms [117,118,139,140,141,142], sliding-mode control [25,65,119,120,121,133,143] |
limitations of traditional methods | dependent on parameter assumptions [128,129], unmodeled dynamics leading to instability [144] | observation error hypothesis [25,138] | complex communication needs are hard to meet [145] | insufficient adaptability to environmental and system dynamics, relies on idealized assumptions |
underwater communication problems | communication delays affect coordination [146,147] | acoustic noise interference [146] | low transmission rate and packet loss affect formations [127], sonar has a limited field of view [146] | disturbance rejection control [147], deep learning [127,146,147] |
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He, L.; Xie, M.; Zhang, Y. A Review of Path Following, Trajectory Tracking, and Formation Control for Autonomous Underwater Vehicles. Drones 2025, 9, 286. https://doi.org/10.3390/drones9040286
He L, Xie M, Zhang Y. A Review of Path Following, Trajectory Tracking, and Formation Control for Autonomous Underwater Vehicles. Drones. 2025; 9(4):286. https://doi.org/10.3390/drones9040286
Chicago/Turabian StyleHe, Long, Mengting Xie, and Ya Zhang. 2025. "A Review of Path Following, Trajectory Tracking, and Formation Control for Autonomous Underwater Vehicles" Drones 9, no. 4: 286. https://doi.org/10.3390/drones9040286
APA StyleHe, L., Xie, M., & Zhang, Y. (2025). A Review of Path Following, Trajectory Tracking, and Formation Control for Autonomous Underwater Vehicles. Drones, 9(4), 286. https://doi.org/10.3390/drones9040286