Abstract

Due to the strong propagation causality of delays between airports, this paper proposes a delay prediction model based on a deep graph neural network to study delay prediction from the perspective of an airport network. We regard airports as nodes of a graph network and use a directed graph network to construct airports’ relationship. For adjacent airports, weights of edges are measured by the spherical distance between them, while the number of flight pairs between them is utilized for airports connected by flights. On this basis, a diffusion convolution kernel is constructed to capture characteristics of delay propagation between airports, and it is further integrated into the sequence-to-sequence LSTM neural network to establish a deep learning framework for delay prediction. We name this model as deep graph-embedded LSTM (DGLSTM). To verify the model’s effectiveness and superiority, we utilize the historical delay data of 325 airports in the United States from 2015 to 2018 as the model training set and test set. The experimental results suggest that the proposed method is superior to the existing mainstream methods in terms of accuracy and robustness.

Highlights

  • With the rapid development of the air transport industry, the contradiction between the rapidly increasing air traffic flow and limited airspace resources has become increasingly prominent, leading to frequent flight delays

  • E advantage of deep graph-embedded long shortterm memory model (LSTM) (DGLSTM) lies in its long-term memory ability

  • A random sampling mechanism is introduced to improve the accuracy of online prediction

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Summary

Introduction

With the rapid development of the air transport industry, the contradiction between the rapidly increasing air traffic flow and limited airspace resources has become increasingly prominent, leading to frequent flight delays. According to a statistical report from VariFlight, the actual number of flights departing from airports worldwide in 2019 was about 37.12 million, with an on-time departure rate of 75.58% and an average delay of 26.47 minutes [1]. Flight delays have brought many adverse effects on passengers, airlines, and the civil aviation industry. Flight delays disrupt the passengers’ itinerary and cause great inconvenience. Flight delays affect the passenger travel experience, so passengers may choose other airlines or transportation methods, resulting in a decline in passenger flow and substantial economic losses to the airline. Flight delays will affect the development of the entire civil aviation industry

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