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Operational AI for Multimodal Urban Transport: A Systematic Literature Review and Deployment Framework for Multi-Objective Control and Electrification

Author

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  • Alexandros Deligiannis

    (Information Systems and e-Business Laboratory (ISeB), Department of Applied Informatics, School of Information Sciences, University of Macedonia, 54636 Thessaloniki, Greece)

  • Michael Madas

    (Information Systems and e-Business Laboratory (ISeB), Department of Applied Informatics, School of Information Sciences, University of Macedonia, 54636 Thessaloniki, Greece)

Abstract

Background : Artificial intelligence (AI) in urban and multimodal transport has demonstrated strong potential; however, real-world deployment remains constrained by limited governance-ready design, fragmented data ecosystems, and single-objective optimization practices. The resulting problem is that agencies lack a reproducible, deployment-ready architecture that links data fusion, multi-objective optimization, and electrification constraints into daily multimodal operational decision making. Methods : This study presents a systematic review and synthesis of 145 peer-reviewed studies on network control, green routing, digital twins, and electric-bus scheduling, conducted in accordance with PRISMA 2020 using predefined inclusion and exclusion criteria. Based on these findings, a deployment-oriented operational AI framework is developed. Results : The proposed architecture comprises five interoperable layers—data ingestion, streaming analytics, optimization services, decision evaluation, and governance monitoring—supporting scalability, reproducibility, and transparency. Rather than producing a single optimal solution, the framework provides decision-ready trade-offs across service quality, cost efficiency, and sustainability while accounting for uncertainty, reliability, and electrification constraints. The approach is solver-agnostic, supporting evolutionary and learning-based techniques. Conclusions : A Thessaloniki-based multimodal case study demonstrates how reproducible AI workflows can connect real-time data streams, optimization, and institutional decision making for continuous multimodal transport management under operational constraints.

Suggested Citation

  • Alexandros Deligiannis & Michael Madas, 2026. "Operational AI for Multimodal Urban Transport: A Systematic Literature Review and Deployment Framework for Multi-Objective Control and Electrification," Logistics, MDPI, vol. 10(2), pages 1-21, January.
  • Handle: RePEc:gam:jlogis:v:10:y:2026:i:2:p:29-:d:1847348
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