Towards Interactive and Learnable Cooperative Driving Automation: a Large Language Model-Driven Decision-Making Framework
Shiyu Fang, Jiaqi Liu, Mingyu Ding, Yiming Cui, Chen Lv, Peng Hang, Jian Sun

TL;DR
This paper introduces CoDrivingLLM, a novel LLM-driven framework for cooperative driving that enables all-scenario, learnable, and interactive decision-making in connected autonomous vehicles, addressing current limitations.
Contribution
It proposes an innovative LLM-based decision-making framework with environment, reasoning, and memory modules for comprehensive cooperative driving.
Findings
Enhanced decision stability through Chain-of-Thought reasoning
Effective conflict resolution via a conflict coordinator
Improved learning from past experiences using retrieval-augmented generation
Abstract
At present, Connected Autonomous Vehicles (CAVs) have begun to open road testing around the world, but their safety and efficiency performance in complex scenarios is still not satisfactory. Cooperative driving leverages the connectivity ability of CAVs to achieve synergies greater than the sum of their parts, making it a promising approach to improving CAV performance in complex scenarios. However, the lack of interaction and continuous learning ability limits current cooperative driving to single-scenario applications and specific Cooperative Driving Automation (CDA). To address these challenges, this paper proposes CoDrivingLLM, an interactive and learnable LLM-driven cooperative driving framework, to achieve all-scenario and all-CDA. First, since Large Language Models(LLMs) are not adept at handling mathematical calculations, an environment module is introduced to update vehicle…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Semantic Web and Ontologies
