Chat2SPaT: A Large Language Model Based Tool for Automating Traffic Signal Control Plan Management
Yue Wang, Miao Zhou, Guijing Huang, Rui Zhuo, Chao Yi, Zhenliang Ma

TL;DR
Chat2SPaT leverages large language models to automate traffic signal control plan management by converting semi-structured descriptions into precise signal timing plans with over 94% accuracy, streamlining traffic signal operations.
Contribution
This paper introduces Chat2SPaT, the first benchmark for LLMs understanding traffic signal plans, enabling automated, accurate, and user-friendly traffic signal plan generation and editing.
Findings
Achieves over 94% accuracy in plan generation
Works effectively in both English and Chinese
Provides an open-source pipeline for traffic practitioners
Abstract
Pre-timed traffic signal control, commonly used for operating signalized intersections and coordinated arterials, requires tedious manual work for signaling plan creating and updating. When the time-of-day or day-of-week plans are utilized, one intersection is often associated with multiple plans, leading to further repetitive manual plan parameter inputting. To enable a user-friendly traffic signal control plan management process, this study proposes Chat2SPaT, a method to convert users' semi-structured and ambiguous descriptions on the signal control plan to exact signal phase and timing (SPaT) results, which could further be transformed into structured stage-based or ring-based plans to interact with intelligent transportation system (ITS) software and traffic signal controllers. With curated prompts, Chat2SPaT first leverages large language models' (LLMs) capability of understanding…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Traffic control and management · Human-Automation Interaction and Safety
