A Multi-Layer CNN-GRUSKIP model based on transformer for spatial TEMPORAL traffic flow prediction
Ain Shams Engineering Journal, Vol. 15, Issue 12, December 2024 Traffic flow prediction remains a cornerstone for intelligent transportation systems ITS, influencing both route optimization and environmental efforts. While Recurrent Neural Networks RNN and traditional Convolutional Neural Networks C...
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Zusammenfassung: | Ain Shams Engineering Journal, Vol. 15, Issue 12, December 2024 Traffic flow prediction remains a cornerstone for intelligent transportation
systems ITS, influencing both route optimization and environmental efforts.
While Recurrent Neural Networks RNN and traditional Convolutional Neural
Networks CNN offer some insights into the spatial temporal dynamics of traffic
data, they are often limited when navigating sparse and extended spatial
temporal patterns. In response, the CNN-GRUSKIP model emerges as a pioneering
approach. Notably, it integrates the GRU-SKIP mechanism, a hybrid model that
leverages the Gate Recurrent Unit of GRU capabilities to process sequences with
the SKIP feature of ability to bypass and connect longer temporal dependencies,
making it especially potent for traffic flow predictions with erratic and
extended patterns. Another distinctive aspect is its non-standard 6-layer CNN,
meticulously designed for in-depth spatiotemporal correlation extraction. The
model comprises (1) the specialized CNN feature extraction, (2) the GRU-SKIP
enhanced long-temporal module adept at capturing extended patterns, (3) a
transformer module employing encoder-decoder and multi-attention mechanisms to
hone prediction accuracy and trim model complexity, and (4) a bespoke
prediction module. When tested against real-world datasets from California of
Caltrans Performance Measurement System PeMS, specifically PeMS districts 4 and
8, the CNN-GRUSKIP consistently outperformed established models such as ARIMA,
Graph Wave Net, HA, LSTM, STGCN, and APTN. With its potent predictive prowess
and adaptive architecture, the CNN-GRUSKIP model stands to redefine ITS
applications, especially where nuanced traffic dynamics are in play. |
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DOI: | 10.48550/arxiv.2501.07593 |