STG-GAN: A spatiotemporal graph generative adversarial networks for
short-term passenger flow prediction in urban rail transit systems
- URL: http://arxiv.org/abs/2202.06727v3
- Date: Wed, 16 Aug 2023 04:00:33 GMT
- Title: STG-GAN: A spatiotemporal graph generative adversarial networks for
short-term passenger flow prediction in urban rail transit systems
- Authors: Jinlei Zhang, Hua Li, Lixing Yang, Guangyin Jin, Jianguo Qi, Ziyou Gao
- Abstract summary: Short-term passenger flow prediction is an important but challenging task for better managing urban rail transit systems.
We propose a novel deep learning-basedtemporal graph generative adversarial network (STG-GAN) model with higher prediction accuracy, higher efficiency, and lower memory occupancy.
This study can provide critical experience in conducting short-term passenger flow predictions, especially from the perspective of real-world applications.
- Score: 11.167132464665578
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Short-term passenger flow prediction is an important but challenging task for
better managing urban rail transit (URT) systems. Some emerging deep learning
models provide good insights to improve short-term prediction accuracy.
However, there exist many complex spatiotemporal dependencies in URT systems.
Most previous methods only consider the absolute error between ground truth and
predictions as the optimization objective, which fails to account for spatial
and temporal constraints on the predictions. Furthermore, a large number of
existing prediction models introduce complex neural network layers to improve
accuracy while ignoring their training efficiency and memory occupancy,
decreasing the chances to be applied to the real world. To overcome these
limitations, we propose a novel deep learning-based spatiotemporal graph
generative adversarial network (STG-GAN) model with higher prediction accuracy,
higher efficiency, and lower memory occupancy to predict short-term passenger
flows of the URT network. Our model consists of two major parts, which are
optimized in an adversarial learning manner: (1) a generator network including
gated temporal conventional networks (TCN) and weight sharing graph convolution
networks (GCN) to capture structural spatiotemporal dependencies and generate
predictions with a relatively small computational burden; (2) a discriminator
network including a spatial discriminator and a temporal discriminator to
enhance the spatial and temporal constraints of the predictions. The STG-GAN is
evaluated on two large-scale real-world datasets from Beijing Subway. A
comparison with those of several state-of-the-art models illustrates its
superiority and robustness. This study can provide critical experience in
conducting short-term passenger flow predictions, especially from the
perspective of real-world applications.
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