2024
DOI: 10.1371/journal.pone.0306892
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Spatiotemporal information enhanced multi-feature short-term traffic flow prediction

Deqi Huang,
Jiajia He,
Yating Tu
et al.

Abstract: Accurately predicting traffic flow is crucial for optimizing traffic conditions, reducing congestion, and improving travel efficiency. To explore spatiotemporal characteristics of traffic flow in depth, this study proposes the MFSTBiSGAT model. The MFSTBiSGAT model leverages graph attention networks to extract dynamic spatial features from complex road networks, and utilizes bidirectional long short-term memory networks to capture temporal correlations from both past and future time perspectives. Additionally,… Show more

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