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A systematic review of machine learning-based microscopic traffic flow models and simulations

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posted on 2025-06-04, 08:07 authored by Rowan DaviesRowan Davies, Haitao HeHaitao He, Hui FangHui Fang, Yasir AliYasir Ali, Mohammed Quddus
Microscopic traffic flow models and simulations are crucial for capturing vehicle interactions and analyzing traffic. They can provide critical insights for transport planning, management, and operation through scenario testing and optimization. With the growing availability of high-resolution data and rapid advancements in machine learning (ML) techniques, ML-based microscopic traffic flow models are emerging as promising alternatives to traditional physical models, offering improved accuracy and greater flexibility. Although many models have been developed, comprehensive studies that critically assess the strengths and weaknesses of these models and the overall ML-based approach are lacking. To fill this gap, this study presents a systematic review of ML-based microscopic traffic flow models and simulations, covering both car-following and lane-changing behaviors. This review identifies key areas for future research, including the development of methods to improve model transferability across different operational design domains, the need to capture both driver-specific and location-specific heterogeneity via benchmark datasets, and the incorporation of advanced ML techniques such as meta-learning, federated learning, and causal learning. Additionally, enhancing model interpretability, accounting for mesoscopic and macroscopic traffic impacts, incorporating physical constraints in model training, and developing ML models designed for autonomous vehicles are crucial for the practical adoption of ML-based microscopic models in traffic simulations.

Funding

MULTIMODAL urban transport: integrated modelling and simulation towards net-zero, inclusive mobility

UK Research and Innovation

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History

School

  • Science

Published in

Communications in Transportation Research

Volume

5

Publisher

Elsevier Ltd

Version

  • VoR (Version of Record)

Rights holder

©The Author(s)

Publisher statement

This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).

Acceptance date

2024-11-24

Publication date

2025-02-27

Copyright date

2025

ISSN

2772-4247

eISSN

2772-4247

Language

  • en

Depositor

Dr Hui Fang. Deposit date: 17 March 2025

Article number

100164

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