Multitype Origin-Destination (OD) Passenger Flow Prediction for Urban Rail Transit: A Deep Learning Clustering First Predicting Second Integrated Framework
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引用次数: 0
Abstract
Accurately predicting origin-destination (OD) passenger flows serves as the basis for implementing efficient plans, including line planning and timetabling. However, due to the complexity and variety of OD passenger flows types, general prediction models have difficulty in capturing the features of different OD passenger flows, which in turn leads to poor prediction performance. To address this issue, we propose an integrated framework that combines clustering and prediction methods. First, an unsupervised deep learning model is devised to automatically cluster OD flow types by capturing shape characteristics. Second, three types of features are created to enhance training efficiency, including static features, time-dependent observed features, and time-dependent known features. Based on the clustering of OD passenger flow, a weighted adaptive passenger flow prediction model is developed. The study employs a temporal fusion transformers model to enable multitype OD passenger flow prediction. In the numerical experiments, the model was applied to the urban rail transit in South China, and the model clustered 15,168 OD pairs into 4 types for prediction. The findings show that this approach enhanced the prediction accuracy by 2.0%–9.6% compared to the LSTM model and by 1.6%–4.3% compared to the Graph WaveNet. Moreover, the model can accurately assess the various features for diverse types of OD flows.
准确预测始发站-目的地(OD)客流是实施高效计划(包括线路规划和时刻表编制)的基础。然而,由于始发站客流类型复杂多样,一般预测模型难以捕捉不同始发站客流的特征,进而导致预测效果不佳。为解决这一问题,我们提出了一种结合聚类和预测方法的综合框架。首先,我们设计了一个无监督深度学习模型,通过捕捉形状特征来自动聚类 OD 流量类型。其次,为了提高训练效率,我们创建了三种类型的特征,包括静态特征、随时间变化的观测特征和随时间变化的已知特征。在对 OD 客流进行聚类的基础上,建立了加权自适应客流预测模型。该研究采用时间融合变换器模型来实现多类型 OD 客流预测。在数值实验中,该模型被应用于华南地区的城市轨道交通,并将 15 168 对 OD 聚类为 4 种类型进行预测。结果表明,与 LSTM 模型相比,该方法的预测准确率提高了 2.0%-9.6%,与 Graph WaveNet 相比,提高了 1.6%-4.3%。此外,该模型还能准确评估不同类型 OD 流量的各种特征。
期刊介绍:
The Journal of Advanced Transportation (JAT) is a fully peer reviewed international journal in transportation research areas related to public transit, road traffic, transport networks and air transport.
It publishes theoretical and innovative papers on analysis, design, operations, optimization and planning of multi-modal transport networks, transit & traffic systems, transport technology and traffic safety. Urban rail and bus systems, Pedestrian studies, traffic flow theory and control, Intelligent Transport Systems (ITS) and automated and/or connected vehicles are some topics of interest.
Highway engineering, railway engineering and logistics do not fall within the aims and scope of JAT.