A CNN-GRU Hybrid Model for Predicting Airport Departure Taxiing Time

Ligang Yuan, Jing Liu, Haiyan Chen, Daoming Fang, Wenlu Chen
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Abstract

Scene taxiing time is an important indicator for assessing the operational efficiency of airports as well as green airports, and it is also a fundamental parameter in flight regularity statistics. The accurate prediction of taxiing time can help decision makers to further optimize flight pushback sequences and improve airport operational efficiency while increasing flight punctuality. In this paper, we propose a hybrid deep learning model for departure taxiing time prediction based on the new influence factors of taxiing time. Taking Pudong International Airport as the research object, after analyzing the scene operation mode, we construct the origin–destination pairs (ODPs) with stand groups and runways and then propose two structure-related factors, corridor departure flow and departure flow proportion of ODP, as the new features. Based on the new feature set, we construct a departure taxiing dataset for training the prediction model. Then, a departure taxiing time prediction model based on convolutional neural networks (CNNs) and gated recurrent units (GRUs) is proposed, which uses a CNN model to extract the high-dimensional features from the taxiing data and then inputs them to a GRU model for taxiing time prediction. Finally, we conduct a series of comparison experiments on the historical taxiing dataset of Pudong Airport. The prediction results show that the proposed hybrid prediction model has the best performances compared with other deep learning models, and the proposed structure-related features have high correlations with departure taxiing time. The prediction results of taxiing time for different ODPs also verify the generalizability of the proposed model.
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用于预测机场起飞滑行时间的 CNN-GRU 混合模型
场面滑行时间是评估机场运行效率和绿色机场的重要指标,也是航班正常率统计的基本参数。准确预测滑行时间可以帮助决策者进一步优化航班推回顺序,提高机场运行效率,同时提高航班正点率。本文基于滑行时间的新影响因素,提出了一种离港滑行时间预测的混合深度学习模型。以浦东国际机场为研究对象,在分析了现场运行模式后,构建了具有站群和跑道的始发站对(ODP),并提出了廊道离港流量和ODP离港流量比例两个结构相关因素作为新特征。基于新特征集,我们构建了一个离港滑行数据集,用于训练预测模型。然后,我们提出了基于卷积神经网络(CNN)和门控递归单元(GRU)的离港滑行时间预测模型,该模型使用 CNN 模型从滑行数据中提取高维特征,然后将其输入 GRU 模型进行滑行时间预测。最后,我们在浦东机场的历史滑行数据集上进行了一系列对比实验。预测结果表明,与其他深度学习模型相比,所提出的混合预测模型具有最佳性能,而且所提出的结构相关特征与离港滑行时间具有很高的相关性。不同ODP的滑行时间预测结果也验证了所提模型的普适性。
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