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Main Authors: Liu, Ke, Hansen, Mark
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.11211
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author Liu, Ke
Hansen, Mark
author_facet Liu, Ke
Hansen, Mark
contents Ground Delay Programs (GDPs) have been widely used to resolve excessive demand-capacity imbalances at arrival airports by shifting foreseen airborne delay to pre-departure ground delay. While offering clear safety and efficiency benefits, GDPs may also create additional delay because of imperfect execution and uncertainty in predicting arrival airport capacity. This paper presents a methodology for measuring excess delay resulting from individual GDPs and investigates factors that influence excess delay using regularized regression models. We measured excess delay for 1210 GDPs from 33 U.S. airports in 2019. On a per-restricted flight basis, the mean excess delay is 35.4 min with std of 20.6 min. In our regression analysis of the variation in excess delay, ridge regression is found to perform best. The factors affecting excess delay include time variations during gate out and taxi out for flights subject to the GDP, program rate setting and revisions, and GDP time duration.
format Preprint
id arxiv_https___arxiv_org_abs_2405_11211
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Excess Delay from GDP: Measurement and Causal Analysis
Liu, Ke
Hansen, Mark
Systems and Control
Machine Learning
Ground Delay Programs (GDPs) have been widely used to resolve excessive demand-capacity imbalances at arrival airports by shifting foreseen airborne delay to pre-departure ground delay. While offering clear safety and efficiency benefits, GDPs may also create additional delay because of imperfect execution and uncertainty in predicting arrival airport capacity. This paper presents a methodology for measuring excess delay resulting from individual GDPs and investigates factors that influence excess delay using regularized regression models. We measured excess delay for 1210 GDPs from 33 U.S. airports in 2019. On a per-restricted flight basis, the mean excess delay is 35.4 min with std of 20.6 min. In our regression analysis of the variation in excess delay, ridge regression is found to perform best. The factors affecting excess delay include time variations during gate out and taxi out for flights subject to the GDP, program rate setting and revisions, and GDP time duration.
title Excess Delay from GDP: Measurement and Causal Analysis
topic Systems and Control
Machine Learning
url https://arxiv.org/abs/2405.11211