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A hybrid machine learning approach for congestion prediction and warning

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  • Dongxue Li
  • Yao Hu
  • Chuliang Wu
  • Wangyong Chen
  • Feiyun Wang

Abstract

Global traffic management encounters a significant challenge in traffic congestion. This paper presents a hybrid machine learning method for predicting traffic congestion. It leverages Convolutional Neural Network-Gated Recurrent Unit (CNN-GRU) network for parameter prediction and combines clustering and classification models, using the K-means algorithm to categorize traffic states into four levels and constructing a KNN classification model based on this segmentation. This results in the K-means-KNN model. Predicted parameters are inputted into the K-means-KNN model for congestion level prediction. Validation with real traffic flow data shows that the CNN-GRU network can capture spatiotemporal features more effectively. For instance, in traffic flow prediction, it reduces the MAPE by 7.39% and 51.14% compared to CNN and GRU, respectively. K-means-KNN excels in traffic state discrimination, achieving a congestion prediction accuracy of 91.8%. These results underscore the efficacy of the hybrid machine learning method in assessing and predicting urban traffic congestion.

Suggested Citation

  • Dongxue Li & Yao Hu & Chuliang Wu & Wangyong Chen & Feiyun Wang, 2025. "A hybrid machine learning approach for congestion prediction and warning," Transportation Planning and Technology, Taylor & Francis Journals, vol. 48(2), pages 387-411, February.
  • Handle: RePEc:taf:transp:v:48:y:2025:i:2:p:387-411
    DOI: 10.1080/03081060.2024.2367751
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