Abstract
AbstractDeparture delays are a major cause of economic loss and inefficiency in the growing industry of passenger flights. A departure delay of a current flight is inevitably affected by the late arrival of the flight immediately preceding it with the same aircraft. We seek to understand the mechanisms of such propagated delays, and to obtain universal metrics by which to evaluate an airline’s operational effectiveness in delay alleviation. Here we use big data collected by the American Bureau of Transportation Statistics to design models of flight delays. Offering two dynamic models of delay propagation, we divided all carriers into two groups exhibiting a shifted power law or an exponentially truncated shifted power law delay distribution, revealing two universal delay propagation classes. Three model parameters, extracted directly from dual data mining, help characterize each airline’s operational efficiency in delay mitigation. Therefore, our modeling framework provides the crucially lacking evaluation indicators for airlines, potentially contributing to the mitigation of future departure delays.
Funder
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Reference41 articles.
1. Barzel, B. & Barabási, A.-L. Universality in network dynamics. Nature Physics 9, 673–681 (2013).
2. Harush, U. & Barzel, B. Patterns of information flow in complex networks. Nature Communications 8, 2181–2190 (2017).
3. Hens, C., Harush, U., Cohen, R., Haber, S. & Barzel, B. Spatio-temporal propagation of signals in complex networks. Nature Physics 15, 403–412 (2016).
4. Fleurquin, P., Ramasco, J. J. & Eguiluz, V. M. Characterization of Delay Propagation in the US Air-Transportation Network. Transportation Journal 53, 330–344 (2014).
5. Sternberg, A. Carvalho, D. Murta, L. Soares, J. and Ogasawara, E. Transportation Research Part E 95, 292-298 (2016).
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