Large Language Models and Their Applications in Roadway Safety and Mobility Enhancement: A Comprehensive Review
Muhammad Monjurul Karim, Yan Shi, Shucheng Zhang, Bingzhang Wang, Mehrdad Nasri, Yinhai Wang

TL;DR
This comprehensive review explores how Large Language Models can be adapted and applied to improve roadway safety and mobility, analyzing current applications, challenges, and future research directions in intelligent transportation systems.
Contribution
The paper systematically reviews LLM applications in transportation, highlighting adaptation strategies, technological integrations, and identifying key challenges and future research avenues.
Findings
LLMs are used for traffic prediction and safety analysis.
Technologies like V2X and multimodal fusion enhance LLM capabilities.
Challenges include hallucinations, data privacy, and deployment issues.
Abstract
Roadway safety and mobility remain critical challenges for modern transportation systems, demanding innovative analytical frameworks capable of addressing complex, dynamic, and heterogeneous environments. While traditional engineering methods have made progress, the complexity and dynamism of real-world traffic necessitate more advanced analytical frameworks. Large Language Models (LLMs), with their unprecedented capabilities in natural language understanding, knowledge integration, and reasoning, represent a promising paradigm shift. This paper comprehensively reviews the application and customization of LLMs for enhancing roadway safety and mobility. A key focus is how LLMs are adapted -- via architectural, training, prompting, and multimodal strategies -- to bridge the "modality gap" with transportation's unique spatio-temporal and physical data. The review systematically analyzes…
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Taxonomy
TopicsTraffic Prediction and Management Techniques · Adversarial Robustness in Machine Learning · Traffic and Road Safety
