SYAIJan 22

Virtual Traffic Police: Large Language Model-Augmented Traffic Signal Control for Unforeseen Incidents

arXiv:2601.15816v1h-index: 4
Originality Incremental advance
AI Analysis

This addresses traffic management inefficiencies during incidents for urban planners and traffic authorities, but it is incremental as it builds on existing TSC systems rather than replacing them.

The paper tackles the problem of adaptive traffic signal control struggling with unforeseen incidents like accidents, proposing a hierarchical framework that augments existing systems with large language models (LLMs) to dynamically fine-tune parameters, resulting in significantly improved operational efficiency and reliability.

Adaptive traffic signal control (TSC) has demonstrated strong effectiveness in managing dynamic traffic flows. However, conventional methods often struggle when unforeseen traffic incidents occur (e.g., accidents and road maintenance), which typically require labor-intensive and inefficient manual interventions by traffic police officers. Large Language Models (LLMs) appear to be a promising solution thanks to their remarkable reasoning and generalization capabilities. Nevertheless, existing works often propose to replace existing TSC systems with LLM-based systems, which can be (i) unreliable due to the inherent hallucinations of LLMs and (ii) costly due to the need for system replacement. To address the issues of existing works, we propose a hierarchical framework that augments existing TSC systems with LLMs, whereby a virtual traffic police agent at the upper level dynamically fine-tunes selected parameters of signal controllers at the lower level in response to real-time traffic incidents. To enhance domain-specific reliability in response to unforeseen traffic incidents, we devise a self-refined traffic language retrieval system (TLRS), whereby retrieval-augmented generation is employed to draw knowledge from a tailored traffic language database that encompasses traffic conditions and controller operation principles. Moreover, we devise an LLM-based verifier to update the TLRS continuously over the reasoning process. Our results show that LLMs can serve as trustworthy virtual traffic police officers that can adapt conventional TSC methods to unforeseen traffic incidents with significantly improved operational efficiency and reliability.

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