Skip to main content
Intended for healthcare professionals
Restricted access
Research article
First published January 2000

Estimating an Origin-Destination Table Under Repeated Counts of In-Out Volumes at Highway Ramps: Use of Artificial Neural Networks

Abstract

A method is proposed that applies an artificial neural network model to estimate an origin-destination (O-D) matrix for a freeway network for which the data on inflow and outflow at the ramps are gathered regularly. This problem is the same as estimating the elements of an O-D table, given that many sets of data about the right-hand column total (trip production) and the bottom row total (trip attraction) are available. A neural network model is developed to emulate the stimulusresponse process on the freeway traffic, in which the stimulus is the inflow at the entrance ramps and the response the outflow at the exit ramps. After the neural network of a particular structure is trained by many sets of data (e.g., sets of daily volumes), the weights of the neural network are found to represent the ramp-to-ramp volume expressed in the proportion of the in-flow at the corresponding ramps. The model is applied to estimate a ramp-to-ramp O-D table for the Tokyo expressway network. The result is compared with the actual O-D table obtained from a survey. The model is found to be useful not only for estimating the O-D volume with much less data than for the traditional method, but also for verifying the existence of a pattern in the traffic flow.

Get full access to this article

View all access and purchase options for this article.

References

1. Furth P. G. Updating Ride Checks with Multiple Point Checks. In Transportation Research Record 1209, TRB, National Research Council, Washington, D.C., 1989, pp. 49–57.
2. Van Zuylen H. J., and Willumsen L. G. The Most Likely Trip Matrix Estimated from Traffic Counts. Transportation Research, Vol. 14B, 1980, pp. 281–293.
3. Hendrickson C., and McNeil S. Estimation of Origin-Destination Matrices with Constrained Regression. In Transportation Research Record 976, TRB, National Research Council, Washington, D.C., 1984, pp. 25–32.
4. Kikuchi S., Nanda R., and Perincherry V. A Method to Estimate Trip O-D Patterns Using a Neural Network Approach. Transportation Planning and Technology, Vol. 17, 1993, pp. 51–65.
5. Lubin J., Jones K., and Kornhauser A. Using Backpropagation Networks to Access Several Image Representation Schemes for Object Recognition. Proc., International Joint Conference on Neural Networks 2, 1990, pp. 618–625.
6. Hecht-Nielsen R. Neurocomputing. Addison Wesley, Reading, Mass., 1990.
7. Kosko B. Neural Networks and Fuzzy Systems. A Dynamical Systems Approach to Machine Intelligence. Prentice Hall, Englewood Cliffs, N.J., 1991.
8. Wasserman P. D. Advanced Methods in Neural Computing. Van Nostrand Reinhold, New York, 1993.

Cite article

Cite article

Cite article

OR

Download to reference manager

If you have citation software installed, you can download article citation data to the citation manager of your choice

Share options

Share

Share this article

Share with email
EMAIL ARTICLE LINK
Share on social media

Share access to this article

Sharing links are not relevant where the article is open access and not available if you do not have a subscription.

For more information view the Sage Journals article sharing page.

Information, rights and permissions

Information

Published In

Article first published: January 2000
Issue published: January 2000

Rights and permissions

© 2000 National Academy of Sciences.
Request permissions for this article.

Authors

Affiliations

Shinya Kikuchi
Transportation Engineering Program, Department of Civil Engineering, 342 DuPont Hall, University of Delaware, Newark, DE 19716-3120
Mitsuru Tanaka
McCormick and Taylor Associates, Two Commerce Square, 10th Floor, 2001 Market Street, Philadelphia, PA 19106

Metrics and citations

Metrics

Journals metrics

This article was published in Transportation Research Record: Journal of the Transportation Research Board.

VIEW ALL JOURNAL METRICS

Article usage*

Total views and downloads: 10

*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: 4

  1. A hybrid neural network for large-scale expressway network OD predicti...
    Go to citation Crossref Google Scholar
  2. Sustainable approach to land development opportunities based on both o...
    Go to citation Crossref Google Scholar
  3. OD Matrices Network Estimation from Link Counts by Neural Networks
    Go to citation Crossref Google Scholar
  4. Constructing a Transit Origin–Destination Table Using the Uncertainty ...
    Go to citation Crossref Google Scholar

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:


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.

View options

PDF/ePub

View PDF/ePub