Barry, David J.2021-06-042021-06-042020-05-23Barry DJ. (2021) Estimating runway veer-off risk using a Bayesian network with flight data. Transportation Research Part C: Emerging Technologies, Voume 128, July 2021, Article number 1031800968-090Xhttps://doi.org/10.1016/j.trc.2021.103180https://dspace.lib.cranfield.ac.uk/handle/1826/16732Risk assessments in airline operations are mostly qualitative, despite abundant data from programmes such as flight data monitoring (FDM) and flight operations quality assurance (FOQA). In this paper, features relating to runway excursion causal factors are extracted from flight data from over 310,448 flights from Airbus A320 series aircraft flown on a European network. The data is combined with meteorological data to provide additional features. Bayesian networks are then learnt from the feature set, and two network learning algorithms are compared, Bayesian Search and Greedy Thick Thinning (GTT). Cross-validation of the resulting networks shows both algorithms produce similarly performing networks, and a subjective analysis concludes that the GTT algorithm is marginally preferred. The resulting networks produce relative probabilities, which airlines can use to quantitatively assess runway veer-off risk under different scenarios, such as different meteorological conditions and unstable approaches. This paper's main finding is that by utilising existing data sources, such as FDM and weather databases, airlines can create and use Bayesian networks alongside their existing qualitative risk assessment methods to provide quantitative risk assessment and understand the effect of different conditions on those risks. This is not possible with current methods in use by airlines. The method described can be extended to other operational safety risks, such as runway overrun.enAttribution-NonCommercial-NoDerivatives 4.0 InternationalRunway veeroffRunway excursionFlight operations quality assurance (FOQA)Risk assessment with Bayesian networksFlight data monitoring (FDM)Airline operational safetyEstimating runway veer-off risk using a Bayesian network with flight dataArticle