Litcius/Paper detail

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

Weihua Lei, Luiz G. A. Alves, Luı́s A. Nunes Amaral

2022Nature Communications39 citationsDOIOpen Access PDF

Abstract

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 C O 2 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 C O 2 emissions. Our forecasting approach could be helpful in building scenarios for planning future infrastructure.

Topics & Concepts

Enhanced Data Rates for GSM EvolutionComputer scienceFlow networkBaseline (sea)Transportation infrastructureScale (ratio)Transport engineeringTransportation planningArtificial intelligenceEngineeringGeographyGeologyMathematical optimizationCartographyMathematicsOceanographyComplex Network Analysis TechniquesComplex Systems and Time Series AnalysisOpinion Dynamics and Social Influence