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Title:

TRAFFIC VOLUME FORECASTING METHODS FOR RURAL STATE HIGHWAYS

Accession Number:

00489553

Record Type:

Component

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Order URL: http://worldcat.org/isbn/0309047692

Abstract:

This study builds on previous efforts found in the field of rural traffic forecasting. The study combines careful statistical analysis with subjective judgment to develop models that are statistically reliable and easy to use. This study developed two different kinds of models--aggregate and disaggregate--to forecast traffic volumes at rural locations in Indiana's state highway network. These models are developed using traffic data from continuous count stations in rural locations as well as data for various county, state, and national level demographic and economic predictor variables. Aggregate models are based on the functional classification of a highway, whereas the disaggregate models are location-specific. These models forecast annual average daily traffic (AADT) for future years as a function of present year AADT, modified by the various predictor variables. The use of both aggregate and disaggregate models will provide more reliable traffic forecasts. The number of predictor variables employed in the models was kept to a minimum. The statistical analysis also found that the predictor variables are statistically significant; no other variables will provide significant predictive power to the models. The models developed in this study provide good R-squared values. More refined statistical techniques reinforce the choice of variables used in the models.

Supplemental Notes:

This paper appears in Transportation Research Record No. 1203, Demand Forecasting and Trip Generation-Route Choice Dynamics. Distribution, posting, or copying of this PDF is strictly prohibited without written permission of the Transportation Research Board of the National Academy of Sciences. Unless otherwise indicated, all materials in this PDF are copyrighted by the National Academy of Sciences. Copyright © National Academy of Sciences. All rights reserved

Monograph Accession #:

01413989

Authors:

Saha, Sunil K
Fricker, Jon D

Pagination:

p. 10-26

Publication Date:

1988

Serial:

Transportation Research Record

Issue Number: 1203
Publisher: Transportation Research Board
ISSN: 0361-1981

ISBN:

0309047692

Features:

Figures (7) ; References (16) ; Tables (17)

Old TRIS Terms:

Subject Areas:

Data and Information Technology; Highways; Planning and Forecasting; I72: Traffic and Transport Planning

Files:

TRIS, TRB, ATRI

Created Date:

Nov 30 1989 12:00AM

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