Achieving full automation in self-driving vehicles remains a challenge, especially in dynamic urban environments where navigation requires real-time adaptability. Existing systems struggle to handle navigation plans when faced with unpredictable changes in road layouts, spontaneous detours, or missing map data, due to their heavy reliance on predefined cartographic information. In this work, we explore the use of Large Language Models to generate Answer Set Programming rules by translating informal navigation instructions into structured, logic-based reasoning. ASP provides non-monotonic reasoning, allowing autonomous vehicles to adapt to evolving scenarios without relying on predefined maps. We present an experimental evaluation in which LLMs generate ASP constraints that encode real-world urban driving logic into a formal knowledge representation. By automating the translation of informal navigation instructions into logical rules, our method improves adaptability and explainability in autonomous navigation. Results show that LLM-driven ASP rule generation supports semantic-based decision-making, offering an explainable framework for dynamic navigation planning that aligns closely with how humans communicate navigational intent.
翻译:实现自动驾驶车辆的完全自动化仍是一项挑战,尤其是在动态城市环境中,导航需要实时适应性。现有系统由于严重依赖预定义的地图信息,在面对道路布局的不可预测变化、临时绕行或地图数据缺失时,难以处理导航规划。本研究探索利用大语言模型,通过将非正式导航指令转化为结构化、基于逻辑的推理,生成答案集编程规则。ASP提供非单调推理能力,使自动驾驶车辆能够适应不断演变的场景,而无需依赖预定义地图。我们提出了一项实验评估,其中LLM生成ASP约束,将真实世界城市驾驶逻辑编码为形式化知识表示。通过将非正式导航指令自动转化为逻辑规则,我们的方法提升了自主导航的适应性与可解释性。结果表明,LLM驱动的ASP规则生成支持基于语义的决策,为动态导航规划提供了一个可解释的框架,该框架与人类传达导航意图的方式高度契合。