cs.AI updates on arXiv.org 10月17日 12:19
基于LLM的AUV自适应S表面控制器研究
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本文提出一种基于大型语言模型(LLM)增强的强化学习(RL)自适应S表面控制器,用于提高AUV在复杂海况下的适应性和操控能力,通过LLM优化控制器参数和奖励函数,实现多目标平衡,提升任务性能。

arXiv:2503.00527v2 Announce Type: replace-cross Abstract: The adaptivity and maneuvering capabilities of Autonomous Underwater Vehicles (AUVs) have drawn significant attention in oceanic research, due to the unpredictable disturbances and strong coupling among the AUV's degrees of freedom. In this paper, we developed large language model (LLM)-enhanced reinforcement learning (RL)-based adaptive S-surface controller for AUVs. Specifically, LLMs are introduced for the joint optimization of controller parameters and reward functions in RL training. Using multi-modal and structured explicit task feedback, LLMs enable joint adjustments, balance multiple objectives, and enhance task-oriented performance and adaptability. In the proposed controller, the RL policy focuses on upper-level tasks, outputting task-oriented high-level commands that the S-surface controller then converts into control signals, ensuring cancellation of nonlinear effects and unpredictable external disturbances in extreme sea conditions. Under extreme sea conditions involving complex terrain, waves, and currents, the proposed controller demonstrates superior performance and adaptability in high-level tasks such as underwater target tracking and data collection, outperforming traditional PID and SMC controllers.

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自适应控制 AUV LLM 强化学习 S表面控制器
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