基于图深度学习与启发式算法的新型未开发航班段流量预测框架:面向可持续交通发展

A novel untapped flight segment flow prediction framework based on graph deep learning and heuristic algorithm for sustainable transport development

Journal of the Operational Research Society · 2024
被引 2
ABS 3

中文导读

针对缺乏历史数据的未开发航班段,提出一种结合多图注意力网络、长短期记忆网络和NSGA-II的预测框架,在真实数据集上显著优于传统模型,并揭示了市场竞争的关键作用。

Abstract

This study explores a novel machine learning framework for predicting the flow of untapped flight segments, focusing on the unique challenges posed by the absence of historical flow data in airline networks. Utilizing a real-world datasets from a major airline, we evaluate the performance of a graph deep learning-based approach that combines Multi-Graph Attention Networks (MGAT) and Long Short-Term Memory (LSTM) networks, as well as Nondominated Sorting Genetic Algorithm II. The results demonstrate that the proposed framework significantly outperforms traditional models in accurately predicting passenger flow for new flight segments, particularly when compared to statistical benchmarks like time-series models that rely on historical flow data. Moreover, we find that optimizing the affinity coefficients within MGAT using the NSGA- II not only enhances predictive accuracy but also improves the interpretability of the model. Finally, we provide an in-depth analysis of the key factor that influence the predicted outcomes, highlighting the critical role of market competition in untapped segment operations.

机器学习图深度学习航空网络流量预测启发式算法