人工智能赋能的自动驾驶车辆轨迹跟踪控制:应用、框架与未来趋势综述

Artificial Intelligence-Empowered Trajectory Tracking Control for Autonomous Vehicles: A Survey on Applications, Frameworks, and Future Trends

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2026
被引 0
ABS 3

中文导读

综述了AI与经典控制框架融合的三种模式(增强动力学学习、模仿引导策略合成、强化学习自适应控制),分析了从仿真到实际部署的障碍,并提出了将轨迹跟踪发展为主动认知控制的研究路线图。

Abstract

High-performance trajectory-tracking control is essential for high-level automated driving (AD), which demands superior tracking accuracy and robustness to dynamic environmental perturbations. Integrating artificial intelligence (AI) with classical control frameworks offers a potential solution to these challenging demands. This article systematically reviews the latest advances in AI-empowered trajectory tracking, providing a detailed analysis of these achievements from the perspective of control frameworks. We highlight three core AI-empowered modes: AI-enhanced dynamics learning, imitation-guided policy synthesis, and reinforcement-learning–augmented adaptive control. By fusing domain knowledge with data-driven plasticity, these methodologies address critical limitations associated with modeling, parameter optimization, and policy learning. Furthermore, this study evaluates practical deployment barriers, emphasizing simulation-to-reality transitions, safety constraints, and upstream uncertainty management. To advance the field, we outline a research roadmap to develop trajectory tracking from a passive, reactive execution task into a proactive cognitive control paradigm for complex open-world scenarios.

自动驾驶轨迹跟踪控制人工智能控制框架