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A SUMO-Based Digital Twin for Evaluation of Conventional and Electric Vehicle Networks

A SUMO-Based Digital Twin for Evaluation of Conventional and Electric Vehicle Networks

来源:Arxiv_logoArxiv
英文摘要

Digital twins are increasingly applied in transportation modelling to replicate real-world traffic dynamics and evaluate mobility and energy efficiency. This study presents a SUMO-based digital twin that simulates mixed ICEV-EV traffic on a major motorway segment, leveraging multi-sensor data fusion from inductive loops, GPS probes, and toll records. The model is validated under both complete and partial information scenarios, achieving 93.1% accuracy in average speed estimation and 97.1% in average trip length estimation. Statistical metrics, including KL Divergence and Wasserstein Distance, demonstrate strong alignment between simulated and observed traffic patterns. Furthermore, CO2 emissions were overestimated by only 0.8-2.4%, and EV power consumption underestimated by 1.0-5.4%, highlighting the model's robustness even with incomplete vehicle classification information.

Haomiaomiao Wang、Conor Fennell、Swati Poojary、Mingming Liu

公路运输工程能源动力工业经济

Haomiaomiao Wang,Conor Fennell,Swati Poojary,Mingming Liu.A SUMO-Based Digital Twin for Evaluation of Conventional and Electric Vehicle Networks[EB/OL].(2025-07-14)[2025-07-25].https://arxiv.org/abs/2507.10280.点此复制

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