DocumentCode
7699
Title
Spatiotemporal Patterns in Large-Scale Traffic Speed Prediction
Author
Asif, Muhammad Tayyab ; Dauwels, Justin ; Chong Yang Goh ; Oran, Ali ; Fathi, Esmail ; Muye Xu ; Dhanya, Menoth Mohan ; Mitrovic, Nikola ; Jaillet, Patrick
Author_Institution
Sch. of Electr. & Electron. Eng., Nanyang Technol. Univ., Singapore, Singapore
Volume
15
Issue
2
fYear
2014
fDate
Apr-14
Firstpage
794
Lastpage
804
Abstract
The ability to accurately predict traffic speed in a large and heterogeneous road network has many useful applications, such as route guidance and congestion avoidance. In principle, data-driven methods, such as support vector regression (SVR), can predict traffic with high accuracy because traffic tends to exhibit regular patterns over time. However, in practice, the prediction performance can significantly vary across the network and during different time periods. Insight into those spatiotemporal trends can improve the performance of intelligent transportation systems. Traditional prediction error measures, such as the mean absolute percentage error, provide information about the individual links in the network but do not capture global trends. We propose unsupervised learning methods, such as k-means clustering, principal component analysis, and self-organizing maps, to mine spatiotemporal performance trends at the network level and for individual links. We perform prediction for a large interconnected road network and for multiple prediction horizons with an SVR-based algorithm. We show the effectiveness of the proposed performance analysis methods by applying them to the prediction data of the SVR.
Keywords
intelligent transportation systems; pattern clustering; prediction theory; regression analysis; road traffic; self-organising feature maps; support vector machines; unsupervised learning; SVR-based algorithm; congestion avoidance; data-driven methods; heterogeneous road network; intelligent transportation systems; k-means clustering; large-scale traffic speed prediction; mean absolute percentage error; performance analysis methods; performance improvement; prediction error measures; prediction horizons; prediction performance; principal component analysis; route guidance; self-organizing maps; spatiotemporal patterns; spatiotemporal performance trend mining; spatiotemporal trends; support vector regression; unsupervised learning methods; Accuracy; Artificial neural networks; Market research; Prediction algorithms; Roads; Smoothing methods; Spatiotemporal phenomena; Large-scale network prediction; spatiotemporal error trends;
fLanguage
English
Journal_Title
Intelligent Transportation Systems, IEEE Transactions on
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/TITS.2013.2290285
Filename
6678316
Link To Document