[go: up one dir, main page]
More Web Proxy on the site http://driver.im/
IEICE Transactions on Information and Systems
Online ISSN : 1745-1361
Print ISSN : 0916-8532
Regular Section
MF-CNN: Traffic Flow Prediction Using Convolutional Neural Network and Multi-Features Fusion
Di YANGSongjiang LIZhou PENGPeng WANGJunhui WANGHuamin YANG
Author information
JOURNAL FREE ACCESS

2019 Volume E102.D Issue 8 Pages 1526-1536

Details
Abstract

Accurate traffic flow prediction is the precondition for many applications in Intelligent Transportation Systems, such as traffic control and route guidance. Traditional data driven traffic flow prediction models tend to ignore traffic self-features (e.g., periodicities), and commonly suffer from the shifts brought by various complex factors (e.g., weather and holidays). These would reduce the precision and robustness of the prediction models. To tackle this problem, in this paper, we propose a CNN-based multi-feature predictive model (MF-CNN) that collectively predicts network-scale traffic flow with multiple spatiotemporal features and external factors (weather and holidays). Specifically, we classify traffic self-features into temporal continuity as short-term feature, daily periodicity and weekly periodicity as long-term features, then map them to three two-dimensional spaces, which each one is composed of time and space, represented by two-dimensional matrices. The high-level spatiotemporal features learned by CNNs from the matrices with different time lags are further fused with external factors by a logistic regression layer to derive the final prediction. Experimental results indicate that the MF-CNN model considering multi-features improves the predictive performance compared to five baseline models, and achieves the trade-off between accuracy and efficiency.

Content from these authors
© 2019 The Institute of Electronics, Information and Communication Engineers
Previous article Next article
feedback
Top