Multiple-Interval Freeway Traffic Flow Forecasting
Abstract
Get full access to this article
View all access and purchase options for this article.
References
Cite article
Cite article
Cite article
Download to reference manager
If you have citation software installed, you can download article citation data to the citation manager of your choice
Information, rights and permissions
Information
Published In

Authors
Metrics and citations
Metrics
Journals metrics
This article was published in Transportation Research Record: Journal of the Transportation Research Board.
VIEW ALL JOURNAL METRICSArticle usage*
Total views and downloads: 19
*Article usage tracking started in December 2016
Altmetric
See the impact this article is making through the number of times it’s been read, and the Altmetric Score.
Learn more about the Altmetric Scores
Articles citing this one
Receive email alerts when this article is cited
Web of Science: 0
Crossref: 11
- Short-term Subway Passenger Flow Prediction based on GCN-LSTM-MHA
- Inferencing hourly traffic volume using data-driven machine learning a...
- Methodology for spatio‐temporal predictions of traffic counts across a...
- Learning to Recommend Signal Plans under Incidents with Real-Time Traf...
- Short-Term Passenger Flow Prediction of a Passageway in a Subway Stati...
- A Spatio-Temporal Structured LSTM Model for Short-Term Prediction of O...
- Urban Traffic Prediction through the Second Use of Inexpensive Big Dat...
- Collective Traffic Prediction with Partially Observed Traffic History ...
- Predictions of Freeway Traffic Speeds and Volumes Using Vector Autoreg...
- Traffic Prediction Using Multivariate Nonparametric Regression
- A prototype case-based reasoning system for real-time freeway traffic ...
Figures and tables
Figures & Media
Tables
View Options
Get access
Access options
If you have access to journal content via a personal subscription, university, library, employer or society, select from the options below:
loading institutional access options
Alternatively, view purchase options below:
Purchase 24 hour online access to view and download content.
Access journal content via a DeepDyve subscription or find out more about this option.
