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Forecasting the evolution of fast-changing transportation networks using machine learning

Transportation

Forecasting the evolution of fast-changing transportation networks using machine learning

W. Lei, L. G. A. Alves, et al.

This research explores the dynamic of edge removal in major transportation networks, specifically the Brazilian bus and U.S. air systems, utilizing machine learning for accurate predictions. Conducted by Weihua Lei, Luiz G. A. Alves, and Luís A. Nunes Amaral, the study highlights complex behavior amidst external shocks, offering valuable insights for infrastructure planning.

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Abstract
Transportation networks play a critical role in human mobility and the exchange of goods, but they are also the primary vehicles for the worldwide spread of infections, and account for a significant fraction of CO2 emissions. We investigate the edge removal dynamics of two mature but fast-changing transportation networks: the Brazilian domestic bus transportation network and the U.S. domestic air transportation network. We use machine learning approaches to predict edge removal on a monthly time scale and find that models trained on data for a given month predict edge removals for the same month with high accuracy. For the air transportation network, we also find that models trained for a given month are still accurate for other months even in the presence of external shocks. We take advantage of this approach to forecast the impact of a hypothetical dramatic reduction in the scale of the U.S. air transportation network as a result of policies to reduce CO2 emissions. Our forecasting approach could be helpful in building scenarios for planning future infrastructure.
Publisher
Nature Communications
Published On
Jul 22, 2022
Authors
Weihua Lei, Luiz G. A. Alves, Luís A. Nunes Amaral
Tags
edge removal
transportation networks
machine learning
Brazilian bus network
U.S. air transportation
infrastructure planning
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