In this paper, we employ the long-short-term memory model (LSTM) to predict the real-time go-around probability as an arrival flight is approaching JFK airport and within 10 nm of the landing runway threshold. We further develop methods to examine the causes to go-around occurrences both from a global view and an individual flight perspective. According to our results, in-trail spacing, and simultaneous runway operation appear to be the top factors that contribute to overall go-around occurrences. We then integrate these pre-trained models and analyses with real-time data streaming, and finally develop a demo web-based user interface that integrates the different components designed previously into a real-time tool that can eventually be used by flight crews and other line personnel to identify situations in which there is a high risk of a go-around.
Abstract:
Publication date:
May 18, 2024
Publication type:
Preprint
Citation:
Liu, K., Ding, K., Dai, L., Hansen, M., Chan, K., & Schade, J. (2024). Real-Time Go-Around Prediction: A case study of JFK airport (No. arXiv:2405.12244). arXiv. https://doi.org/10.48550/arXiv.2405.12244