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Integrating LLMs with ITS: Recent Advances, Potentials, Challenges, and Future Directions

Authors :
Mahmud, Doaa
Hajmohamed, Hadeel
Almentheri, Shamma
Alqaydi, Shamma
Aldhaheri, Lameya
Khalil, Ruhul Amin
Saeed, Nasir
Publication Year :
2025

Abstract

Intelligent Transportation Systems (ITS) are crucial for the development and operation of smart cities, addressing key challenges in efficiency, productivity, and environmental sustainability. This paper comprehensively reviews the transformative potential of Large Language Models (LLMs) in optimizing ITS. Initially, we provide an extensive overview of ITS, highlighting its components, operational principles, and overall effectiveness. We then delve into the theoretical background of various LLM techniques, such as GPT, T5, CTRL, and BERT, elucidating their relevance to ITS applications. Following this, we examine the wide-ranging applications of LLMs within ITS, including traffic flow prediction, vehicle detection and classification, autonomous driving, traffic sign recognition, and pedestrian detection. Our analysis reveals how these advanced models can significantly enhance traffic management and safety. Finally, we explore the challenges and limitations LLMs face in ITS, such as data availability, computational constraints, and ethical considerations. We also present several future research directions and potential innovations to address these challenges. This paper aims to guide researchers and practitioners through the complexities and opportunities of integrating LLMs in ITS, offering a roadmap to create more efficient, sustainable, and responsive next-generation transportation systems.<br />Comment: Accepted for publication in IEEE Transactions on Intelligent Transportation Systems

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.04437
Document Type :
Working Paper