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Erschienen in: Transportation 3/2022

13.06.2021

A clustering based traffic flow prediction method with dynamic spatiotemporal correlation analysis

verfasst von: Unsok Ryu, Jian Wang, Unjin Pak, Sonil Kwak, Kwangchol Ri, Junhyok Jang, Kyongjin Sok

Erschienen in: Transportation | Ausgabe 3/2022

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Abstract

There are significant spatiotemporal correlations among the traffic flows of neighboring road sections in the road network. Correctly identifying such correlations makes an essential contribution for improving the accuracy of traffic flow prediction. Many efforts have been made by several researchers to solve this issue, but they assume that the spatiotemporal correlations among traffic flows are stationary in both time and space, i.e., the degrees to which traffic flows affect each other are fixed. In this study, we propose a clustering based traffic flow prediction method that considers the dynamic nature of spatiotemporal correlations. In order to express the short-term dependence between the target road section and neighboring ones, the spatiotemporal correlation matrices are introduced. The historical traffic data are divided into several clusters according to the similarity between spatiotemporal correlation matrices. The spatiotemporal correlation analysis and the predictor selection based on the mutual information are performed in each cluster, and the multiple prediction models are trained separately. A prediction model corresponding to the cluster to which the current traffic pattern belongs is selected to output the prediction result. Experimental results on real traffic data show that the proposed method achieves good prediction accuracy by distinguishing the heterogeneity of spatiotemporal correlations among the traffic flows.

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Metadaten
Titel
A clustering based traffic flow prediction method with dynamic spatiotemporal correlation analysis
verfasst von
Unsok Ryu
Jian Wang
Unjin Pak
Sonil Kwak
Kwangchol Ri
Junhyok Jang
Kyongjin Sok
Publikationsdatum
13.06.2021
Verlag
Springer US
Erschienen in
Transportation / Ausgabe 3/2022
Print ISSN: 0049-4488
Elektronische ISSN: 1572-9435
DOI
https://doi.org/10.1007/s11116-021-10200-9

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