On the Statistics and Predictability of Go-Arounds

This paper takes an empirical approach to identify operational factors at busy airports that may predate go-around maneuvers. Using four years of data from San Francisco International Airport, we begin our investigation with a statistical approach to investigate which features of airborne, ground operations (e.g., number of inbound aircraft, number of aircraft taxiing from gate, etc.) or weather are most likely to fluctuate, relative to nominal operations, in the minutes immediately preceding a missed approach. We analyze these findings both in terms of their implication on current airport operations and discuss how the antecedent factors may affect NextGen. Finally, as a means to assist air traffic controllers, we draw upon techniques from the machine learning community to develop a preliminary alert system for go-around prediction.

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Additional Info

Field Value
Maintainer Vlad Popescu
Last Updated July 17, 2025, 16:34 (UTC)
Created March 31, 2025, 22:03 (UTC)
accessLevel public
accrualPeriodicity irregular
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harvest_source_id 61638e72-b36c-4866-9d28-551a3062f158
harvest_source_title DNG Legacy Data
identifier DASHLINK_308
issued 2011-02-07
landingPage https://c3.nasa.gov/dashlink/resources/308/
modified 2020-01-29
programCode {026:029}
publisher Dashlink
resource-type Dataset
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