Gen-AI for TSMO Knowledge Management
Shriyank Somvanshi, Jinli Liu, and Subasish Das, Ph.D.. 2024. Gen-AI for TSMO Knowledge Management. J. ACM 37, 4 (December 2024), 23 pages.
23 Pages Posted: 31 Jan 2025
Date Written: December 10, 2024
Abstract
The integration of Generative AI (Gen-AI) into Transportation Systems Management and Operations (TSMO) offers transformative potential to address persistent knowledge management challenges. This study explores how Gen-AI can revolutionize TSMO through enhanced data integration, automated knowledge extraction, and predictive modeling. By synthesizing diverse datasets, Gen-AI facilitates the creation of unified knowledge repositories, improves real-time decision-making, and supports proactive scenario planning. The study introduces a comprehensive framework for embedding Gen-AI into TSMO workflows, enabling streamlined operational efficiency, cross-agency collaboration, and scalable data-driven strategies. Key applications of Gen-AI in TSMO include adaptive traffic control, crash response planning, and predictive modeling for future traffic scenarios. The study highlights innovative Gen-AI models and techniques, such as generative adversarial networks (GANs), large language models (LLMs), and hybrid augmented intelligence frameworks, which collectively enhance TSMO's capacity for resilience and responsiveness. Despite its transformative potential, Gen-AI adoption faces critical challenges, including ethical considerations, computational constraints, and the need for stakeholder trust. The paper emphasizes the importance of responsible AI development, fairness, and explainability to ensure sustainable adoption. By addressing these barriers, the proposed framework sets the stage for a new era of intelligent, adaptive, and community-centered transportation system management.
Keywords: Generative AI (Gen-AI), Artificial intelligence, • Software and its engineering → Real-time systems software Generative Artificial Intelligence, Transportation Systems Management and Operations
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