Affiliation:
1. School of Transportation and Logistics Southwest Jiaotong University Chengdu China
2. Department of Civil and Environmental Engineering University of Wisconsin–Madison Wisconsin Madison USA
3. School of Rail Transportation Soochow University Soochow China
4. Alabama Transportation Institute The University of Alabama Alabama Tuscaloosa USA
Abstract
AbstractNetwork‐wide short‐term passenger flow prediction is critical for the operation and management of metro systems. However, it is challenging due to the inherent non‐stationarity, nonlinearity, and spatial–temporal dependencies within passenger flow. To tackle these challenges, this paper introduces a hybrid model called multi‐scale dynamic propagation spatial–temporal network (MSDPSTN). Specifically, the model employs multivariate empirical mode decomposition to jointly decompose the multivariate passenger flow into multi‐scale intrinsic mode functions. Then, a set of dynamic graphs is developed to reveal the passenger propagation law in metro networks. Based on the representation, a deep learning model is proposed to achieve multistep passenger flow prediction, which employs the dynamic propagation graph attention network with long short‐term memory to extract the spatial–temporal dependencies. Extensive experiments conducted on a real‐world dataset from Chengdu, China, validate the superiority of the proposed model. Compared to state‐of‐the‐art baselines, MSDPSTN reduces the mean absolute error, root mean squared error, and mean absolute percentage error by at least 3.243%, 4.451%, and 4.139%, respectively. Further quantitative analyses confirm the effectiveness of the components in MSDPSTN. This paper contributes to addressing inherent features of passenger flow to enhance prediction performance, offering critical insights for decision‐makers in implementing real‐time operational strategies.
Funder
National Natural Science Foundation of China
Science and Technology Department of Sichuan Province
Reference86 articles.
1. A Decision Support System for Proactive-Robust Traffic Network Management
2. Mesoscopic-Wavelet Freeway Work Zone Flow and Congestion Feature Extraction Model
3. Analysis of freeway traffic time‐series data by using Box‐Jenkins techniques;Ahmed M. S.;Transportation Research Record,1979
4. Alon U. &Yahav E.(2020).On the bottleneck of graph neural networks and its practical implications. arXiv.http://arxiv.org/abs/2006.05205
5. Exploring time variants for short-term passenger flow