PFFN : Periodic Feature-Folding Deep Neural Network for Traffic Condition Forecasting

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

2 Scopus Citations
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Author(s)

Detail(s)

Original languageEnglish
Pages (from-to)3108-3120
Journal / PublicationIEEE Internet of Things Journal
Volume11
Issue number2
Online published21 Jul 2023
Publication statusPublished - 15 Jan 2024

Abstract

Accurate forecasting of traffic conditions is critical for improving urban transportation safety, stability, and efficiency. It is challenging to produce explicit traffic forecasts due to complex and dynamic spatiotemporal contexts. Most existing works only capture partial characteristics and features of traffic data, and there still exists a great potential of uplifting the forecasting performances. In this paper, we propose a periodic feature-folding network (PFFN) that globally folds the spatial-temporal-geo-character features of collected data into pivotal levels to enhance the forecasting performance of traffic conditions. Meanwhile, the historical and recent traffic information within the subgraph is locally folded to capture similar traffic patterns and determine meaningful high-level features in latent space via a novel gated attention plug (GAP). During forecasting, the auxiliary road attributes are joint-wise folded with locally engineered features to realize the multi-step forecasting. Experimental results on two publicly accessible real-world urban traffic datasets show that the proposed PFFN can outperform the state-of-the-art benchmarks, significantly improving the performance of forecasting short-term traffic conditions. © 2023 IEEE.

Research Area(s)

  • Convolutional neural networks, Data models, data-driven methods, deep learning, Forecasting, Predictive models, Roads, spatial-temporal patterns, traffic condition forecasting, Traffic congestion, traffic data analytics, Transportation