Open access
Date
2023Type
- Conference Paper
ETH Bibliography
yes
Altmetrics
Abstract
Emerging sensors and intelligent traffic technologies provide extensive data sets in a traffic network. However, realizing the full potential of such data sets for a unique representation of real-world states is challenging due to data accuracy, noise, and temporal-spatial resolution. Data assimilation is a known group of methodological approaches that exploit physics-informed traffic models and data observations to perform short-term predictions of the traffic state in freeway environments. At the same time, neural networks capture high non-linearities, similar to those presented in traffic networks. Despite numerous works applying different variants of Kalman filters, the possibility of traffic state estimation with deep-learning-based methodologies is only partially explored in the literature. We present a deep-learning modeling approach to perform traffic state estimation on large freeway networks. The proposed framework is trained on local observations from static and moving sensors and identifies differences between well-trusted data and model outputs. The detected patterns are then used throughout the network, even where there are no available observations to estimate fundamental traffic quantities. The preliminary results of the work highlight the potential of deep learning for traffic state estimation. Show more
Permanent link
https://doi.org/10.3929/ethz-b-000584466Publication status
publishedBook title
Proceedings of the 4th Symposium on Management of Future Motorway and Urban Traffic Systems 2022Journal / series
VerkehrstelematikVolume
Pages / Article No.
Publisher
TUDpressEvent
Subject
Traffic state; Traffic prediction; Traffic models; Deep learning; Data assimilationOrganisational unit
08686 - Gruppe Strassenverkehrstechnik
02655 - Netzwerk Stadt u. Landschaft ARCH u BAUG / Network City and Landscape ARCH and BAUG
Related publications and datasets
Is part of: https://doi.org/10.25368/2023.91
Notes
Conference lecture held on December 2, 2022More
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ETH Bibliography
yes
Altmetrics