Real-time Traffic Congestion Prediction: A Novel Online Learning Method with Multi-Head Attention Mechanism and LSTM-Based Integrated Learning

2025-99-0420

12/10/2025

Authors
Abstract
Content
Real-time traffic congestion prediction is essential for proactive traffic management, as it enhances the responsiveness of traffic systems, including route guidance, control, and enforcement. However, the heavy reliance on extensive historical data presents a significant challenge for real-time model updates. To overcome this limitation, this study proposes an advanced online learning framework that integrates a multi-head attention mechanism with LSTM-based ensemble learning. This approach incorporates traffic congestion factors as input features and employs average delay per kilometer as the predictive output. The experimental findings indicate that: 1) the proposed approach successfully enables real-time traffic congestion forecasting, and 2) it demonstrates strong adaptability in dynamic traffic environments.
Meta TagsDetails
Citation
Fu, C., Liu, J., Lu, Z., Wumaierjiang, A., et al., "Real-time Traffic Congestion Prediction: A Novel Online Learning Method with Multi-Head Attention Mechanism and LSTM-Based Integrated Learning," 2025 International Conference on Intelligent Transportation and Future Mobility (ITFM2025), Guilin, China, April 11, 2025, https://doi.org/10.4271/2025-99-0420.
Additional Details
Publisher
Published
12/10/2025
Product Code
2025-99-0420
Content Type
Technical Paper
Language
English