The short-term passenger flow prediction of the urban rail transit system is of great significance for traffic operation and management. The emerging deep learning-based models provide effective methods to improve prediction accuracy. However, most of the existing models mainly predict the passenger flow on general weekdays, while few studies focus on predicting the holiday passenger flow, which can provide more significant information for operators because congestions or accidents generally occur on holidays. To this end, we propose a deep learning-based model named GCN-Transformer comprising graph conventional neural network (GCN) and Transformer for short-term passenger flow prediction on holidays. The GCN is applied to extract the spatial features of passenger flows and the Transformer is applied to extract the temporal features of passenger flows. Moreover, in addition to the historical passenger flow data, social media data are also incorporated into the prediction model, which has been proven to have a potential correlation with the fluctuation of passenger flow. The GCN-Transformer is tested on two large-scale real-world datasets from Nanning, China during the New Year holiday and is compared with several conventional prediction models. Results demonstrate its better robustness and advantages among baseline methods, which provides overwhelming support for practical applications of short-term passenger flow prediction on holidays
翻译:城市铁路交通系统的短期客流量预测对交通运行和管理具有重大意义。新兴的深层次学习模型提供了提高预测准确性的有效方法。然而,大多数现有模型主要预测一般周日的客流量,而很少有研究侧重于预测假日客流量,因为交通拥堵或事故通常在假日发生,因此可以向运营商提供更重要的信息。为此,我们提议了一个深层次的学习模型,名为GCN-Transext,由图表式常规神经网络和变异器组成,用于短期旅客流量预测。GCN用于提取旅客流动的空间特征,而变异器用于提取旅客流动的时间特征。此外,除了历史乘客流量数据外,社会媒体数据也被纳入预测模型,这已证明与旅客流动的波动有潜在关联。GCN-Transtrain在新年假日期间用中国南宁的两个大型真实数据集进行了测试,并与若干常规预测模型进行了比较。结果显示,其更稳健性和优势在基线假日之间,为旅客流量提供了压倒性支持。