IRMA-International.org: Creator of Knowledge
Information Resources Management Association
Advancing the Concepts & Practices of Information Resources Management in Modern Organizations

A Passenger Flow Prediction Method Using SAE-GCN-BiLSTM for Urban Rail Transit

A Passenger Flow Prediction Method Using SAE-GCN-BiLSTM for Urban Rail Transit
View Sample PDF
Author(s): Fan Liu (School of Management, Zhengzhou University of Economics and Business, China)
Copyright: 2024
Volume: 15
Issue: 1
Pages: 21
Source title: International Journal of Swarm Intelligence Research (IJSIR)
Editor(s)-in-Chief: Yuhui Shi (Southern University of Science and Technology (SUSTech), China)
DOI: 10.4018/IJSIR.335100

Purchase

View A Passenger Flow Prediction Method Using SAE-GCN-BiLSTM for Urban Rail Transit on the publisher's website for pricing and purchasing information.

Abstract

To address the problems of existing passenger flow prediction methods such as low accuracy, inadequate learning of spatial features of station topology, and inability to apply to large networks, a SAE-GCN-BiLSTM-based passenger flow forecasting method for urban rail transit is proposed. First, the external features are extracted layer by layer using stacked autoencoder (SAE). Then, graph convolutional network (GCN) is used to capture the spatial features of station topology, and bi-directional long and short-term memory network (BiLSTM) is used to extract the bi-directional temporal features, realizing the extraction of the spatio-temporal features. Finally, external features and spatio-temporal features are fused for accurate prediction of urban rail transit passenger flow. The experimental results show that the proposed method is higher than several other advanced models in the evaluation indexes under different granularities, indicating that the model effectively develops the accuracy and robustness of urban rail transit passenger flow prediction.

Related Content

Jing Liu, Shoubao Su, Haifeng Guo, Yuhua Lu, Yuexia Chen. © 2024. 11 pages.
Fan Liu. © 2024. 21 pages.
Kai Zhang, Zi Tang. © 2024. 21 pages.
Huijun Liang, Aokang Pang, Chenhao Lin, Jianwei Zhong. © 2024. 29 pages.
. © 2024.
Yifu Chen, Jun Li, Lin Zhang. © 2023. 31 pages.
Fazli Wahid, Rozaida Ghazali, Lokman Hakim Ismail, Ali M. Algarwi Aseere. © 2023. 13 pages.
Body Bottom