Deep Learning Model for Short-Term Origin–Destination Distribution Prediction in Urban Rail Transit Network Considering Destination Choice Behavior

Yue Wang, Enjian Yao, Yongsheng Zhang, Long Pan, He Hao
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Abstract

Urban rail transit (URT) has emerged as a crucial mode of transportation in metropolitan areas. For the effective operation of expanding URT networks, accurate short-term origin–destination (OD) demand distribution predictions are essential. This study introduces a novel deep-learning-based model for predicting short-term OD distribution in extensive networks, taking destination choice behaviors into account. First, we perform a comprehensive analysis of station passenger flows and OD flows from both temporal and spatial dimensions. Then, we develop the origin–destination distribution prediction (ODDP) model, combining the destination choice model (DCM) with the deep learning model (DLM). The DCM aims to understand OD distribution patterns from a behavioral perspective by transforming real-time inflows into OD distributions. Meanwhile, the DLM, employing attention and convolution layers, effectively captures the intricate temporal and spatial dynamics of passenger flows. Our model is evaluated using data from the Guangzhou Metro network in China, showing significant enhancements in prediction accuracy, model interpretability, and overall robustness. The implementation of our model promises substantial benefits for the operational efficiency of URT systems.
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考虑目的地选择行为的城市轨道交通网络短期始发站-目的地分布预测深度学习模型
城市轨道交通(URT)已成为大都市地区的重要交通方式。为了有效运营不断扩大的城市轨道交通网络,准确预测短期出发地-目的地(OD)需求分布至关重要。本研究引入了一种基于深度学习的新型模型,用于预测广泛网络中的短期始发站分布,并将目的地选择行为考虑在内。首先,我们从时间和空间两个维度对车站客流和 OD 流量进行了全面分析。然后,我们结合目的地选择模型(DCM)和深度学习模型(DLM),开发了始发站-目的地分布预测(ODDP)模型。DCM 旨在通过将实时流入量转化为 OD 分布,从行为角度理解 OD 分布模式。同时,DLM 采用注意力层和卷积层,能有效捕捉客流错综复杂的时空动态。我们使用中国广州地铁网络的数据对模型进行了评估,结果表明,我们的模型在预测准确性、模型可解释性和整体鲁棒性方面都有显著提高。我们模型的实施有望大大提高城市轨道交通系统的运营效率。
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