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Title:

Decision Support System for Predicting Traffic Diversion Impact Across Transportation Networks Using Support Vector Regression
Cover of Decision Support System for Predicting Traffic Diversion Impact Across Transportation Networks Using Support Vector Regression

Accession Number:

01042635

Record Type:

Component

Availability:

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Washington, DC 20001 United States
Order URL: http://www.trb.org/Main/Public/Blurbs/159707.aspx

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Order URL: http://worldcat.org/isbn/9780309104517

Abstract:

This paper describes follow-up research to a previous study by the authors that used case-based reasoning (CBR) and support vector regression (SVR) to evaluate the likely impacts of implementing diversion strategies in response to incidents on highway networks. In the previous study, the training and testing of the CBR and SVR tools were performed on a single transportation network from South Carolina, which limited the applicability of the developed tool to the specific network for which it was developed. To address this limitation, the current study investigates the feasibility of developing a generic decision support system (DSS) capable of predicting traffic diversion impacts for new transportation networks that the tool has not previously seen. In such cases, users need only to input the geometric and traffic variables, via a graphical user interface, and the tool, which uses a SVR model, will predict the benefits of diverting traffic for a specific incident on the new site. To illustrate the feasibility of developing such a tool, two different highway networks covering portions of I-85 and I-385 in South Carolina were used to train the SVR model, which was then tested on a third network covering portions of I-89 in Vermont. The study found only a 15% difference between the predictions of the SVR model and those of a detailed simulation counterpart, demonstrating the feasibility of developing a generic DSS. Adding more sites and parameters to train the software is also expected to improve the prediction accuracy of the DSS.

Monograph Accession #:

01088321

Language:

English

Authors:

Bhavsar, Parth
Chowdhury, Mashrur A
Sadek, Adel W
Sarasua, Wayne A
Ogle, Jennifer Harper

Pagination:

pp 100-106

Publication Date:

2007

Serial:

Transportation Research Record: Journal of the Transportation Research Board

Issue Number: 2024
Publisher: Transportation Research Board
ISSN: 0361-1981

ISBN:

9780309104517

Media Type:

Print

Features:

Figures (5) ; Maps (3) ; References (14) ; Tables (1)

Geographic Terms:

Subject Areas:

Highways; Operations and Traffic Management; Planning and Forecasting; I72: Traffic and Transport Planning; I73: Traffic Control

Files:

TRIS, TRB, ATRI

Created Date:

Feb 8 2007 7:48PM

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