Continuous adaptive prediction of highway traffic volumes using artificial neural networks

Publication: 
Sault Ste. Marie, Ont.:
Standard No: 
OSTMA-COSC-Thompson-David-J-19960402
Creator: 

Thompson, David

Historical Context: 

This report details the investigation into the effect of several artificial neural network (ANN) architectures on the ability of these networks to predict highway traffic volumes (HTVs). The scope of this project is intended as a basis for further research by determining favourable choices for an underlying network architecture which may be expanded to incorporate recurrent temporal sensitive features. This will be determined on the basis of the errors that the predicted traffic volumes deviate from the target values in the training set. The training phase of the models will exclude data for up to a year to allow for the performance evaluation of the trained networks.

Responsibility: 
David Thompson
Start Date: 
1996
Description Level: 
End Date: 
1996
Date Range: 
1996 April 02
Physical Description: 

1.25 MB of textual records (PDF)

Notes: 

Audience: Undergraduate. -- Dissertation: Thesis (B. A.). -- Algoma University, 1996. -- Submitted in partial fulfillment of course requirements for COSC 4235. -- Includes figures and tables. -- Contents: Thesis.

rec_shelfloc: 
2013-064-001
Repository: 
Algoma University Archive
Container Number: 
001