Journal of South China University of Technology(Natural Science Edition) ›› 2022, Vol. 50 ›› Issue (3): 21-27.doi: 10.12141/j.issn.1000-565X.210320

Special Issue: 2022年交通运输工程

• Traffic & Transportation Engineering • Previous Articles     Next Articles

Passenger Flow Forecast of Urban Rail Transit Based on Graph Convolution and Recurrent Neural Network

LIU Xiaolei1 DUAN Zhengyu1 YU Qing1 MAO Xiaoxin2 MA Zhongzheng3   

  1. 1. Key Laboratory of Road Traffic Engineering of the Ministry of Education, Tongji University, Shanghai 201804, China;
    2. CAD Research Center of Tongji University, Shanghai 201804, China;
    3. Shanghai Shentong Metro Group Co., Ltd., Shanghai 201102, China
  • Received:2021-05-20 Revised:2021-08-11 Online:2022-03-25 Published:2022-03-01
  • Contact: 段征宇(1978-),男,副教授,主要从事交通规划、交通数据分析研究。 E-mail:d_zy@163.com
  • About author:刘晓磊(1997-),女,博士生,主要从事交通大数据研究。E-mail:liuxiaolei_2021@163.com
  • Supported by:
    Supported by Shanghai Science and Technology Commission Research Project (20dz1202903)

Abstract: Passenger flow forecast is of great significance to the organization and management of urban rail transit. This paper constructed a graph convolution and recurrent neural network (GCGRU model) by combining graph convolutional network with recurrent neural network. The graph convolutional network was used to learn the complex topological structure of an urban rail network and capture spatial correlation characteristics. Then one of the recurrent neural network variants called gated recurrent unit was used to learn the variation of multi-characteristics of traffic trends and to capture the temporal characteristics. An experiment was carried out with the passenger flow data obtained from the entire network with all subway cross-sections in Shanghai in a whole year, and the mean decrease impurity method provided by random forest was used for feature selection. The experimental results show that the GCGRU model can well capture the temporal and spatial correlation in the prediction of large-scale urban rail transit passenger flow, with a prediction accuracy of 89%. The prediction results can provide a basis for managers to manage and organize rail transit passenger flow as well as provide travelers with early warning information, ensuring the safe and efficient operation of the urban rail transit network.

Key words: passenger flow forecast, graph convolution network, gated recurrent unit, temporal feature, spatial feature

CLC Number: