2024
DOI: 10.1007/s42421-024-00112-2
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Deep Learning for Traffic Prediction and Trend Deviation Identification: A Case Study in Hong Kong

Xiexin Zou,
Edward Chung,
Hongbo Ye
et al.

Abstract: This paper introduces a robust methodology for predicting traffic volume and speed on major strategic routes in Hong Kong by leveraging data from data.gov.hk and utilizing deep learning models. The approach offers predictions from 6 min to 1 h, considering detector reliability. By extracting hidden deep features from historical detector data to establish detector profiles and grouping detectors into clusters based on profile similarities, the method employs a CNN-LSTM prediction model for each cluster. The stu… Show more

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