Transformers \`a Grande Vitesse
- URL: http://arxiv.org/abs/2105.08526v2
- Date: Thu, 21 Dec 2023 01:23:26 GMT
- Title: Transformers \`a Grande Vitesse
- Authors: Farid Arthaud, Guillaume Lecoeur, Alban Pierre
- Abstract summary: We aim at predicting the travel time of trains on rail sections at the scale of an entire rail network in real-time.
Our approach yields very positive results on real-world data when compared to currently-used and experimental prediction techniques.
- Score: 0.09208007322096534
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Robust travel time predictions are of prime importance in managing any
transportation infrastructure, and particularly in rail networks where they
have major impacts both on traffic regulation and passenger satisfaction. We
aim at predicting the travel time of trains on rail sections at the scale of an
entire rail network in real-time, by estimating trains' delays relative to a
theoretical circulation plan.
Predicting the evolution of a given train's delay is a uniquely hard problem,
distinct from mainstream road traffic forecasting problems, since it involves
several hard-to-model phenomena: train spacing, station congestion and
heterogeneous rolling stock among others. We first offer empirical evidence of
the previously unexplored phenomenon of delay propagation at the scale of a
railway network, leading to delays being amplified by interactions between
trains and the network's physical limitations.
We then contribute a novel technique using the transformer architecture and
pre-trained embeddings to make real-time massively parallel predictions for
train delays at the scale of the whole rail network (over 3000 trains at peak
hours, making predictions at an average horizon of 70 minutes). Our approach
yields very positive results on real-world data when compared to currently-used
and experimental prediction techniques.
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