A parallel spatiotemporal deep learning network for highway traffic flow forecasting
Author(s) -
Dongxiao Han,
Juan Chen,
Jian Sun
Publication year - 2019
Publication title -
international journal of distributed sensor networks
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.324
H-Index - 53
eISSN - 1550-1477
pISSN - 1550-1329
DOI - 10.1177/1550147719832792
Subject(s) - computer science , traffic flow (computer networking) , deep learning , convolutional neural network , key (lock) , artificial intelligence , flow (mathematics) , flow network , term (time) , data mining , artificial neural network , machine learning , computer network , mathematical optimization , physics , geometry , computer security , mathematics , quantum mechanics
Spatiotemporal features have a significant influence on traffic flow prediction. Due to the potentially internal relationship of adjacent roads, spatial information can, to some extent, affect traffic flow forecasting. Simultaneously, periodic information of traffic flow data can also be positively affected by temporal features. Considering these key points, this article proposes a parallel spatiotemporal deep learning network for short-term highway traffic flow forecasting, which learns features from the time and space dimensions. In the introduced model, the convolutional neural network is used to extract spatial features and long short-term memory is used to extract temporal features of traffic flow. The parallel-connected structure of convolutional neural network and long short-term memory reflects much powerful performance in traffic flow prediction. To apply the parallel spatiotemporal deep learning network in large dataset prediction, a dataset of Shanghai inner ring elevated road is used to predic...
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