Technical Papers
Mar 7, 2014

Methodology to Characterize Ideal Short-Term Counting Conditions and Improve AADT Estimation Accuracy Using a Regression-Based Correcting Function

Publication: Journal of Transportation Engineering
Volume 140, Issue 5

Abstract

Transportation agencies’ motor vehicle count programs tend to be well established and robust with clear guidelines to collect short-term count data, to analyze data, develop annual average daily traffic (AADT) adjustment factors, and to estimate AADT volumes. In contrast, bicycle and pedestrian traffic monitoring is an area of work for most transportation agencies. In most agencies, there are a low numbers of counting sites and limited agency experience to manage a city-wide or state-wide system of collecting, processing, and using nonmotorized data. Short duration counts are used to estimate longer duration volumes such as AADT. Because bicycle or pedestrian short-term counts vary dramatically over time and significantly more than motorized vehicle counts, the direct application of motorized vehicle AADT estimation methods may be inadequate. The goal of this paper is to present a methodology that will enhance, if needed, existing AADT estimation methods widely employed for motorized vehicle counts. The proposed methodology is based on the analysis of AADT estimation errors using regression models to estimate a correcting function that accounts for weather and activity factors. The methodology can be applied to any type of traffic with high volume variability but in this research is applied to a permanent bicycle counting station in Portland, Oregon. The results indicate that the proposed methodology is simple and useful for finding ideal short-term counting conditions and improving AADT estimation accuracy.

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References

Ahmed, F., Rose, G., Figliozzi, M., and Jakob, C. (2012). “Commuter cyclist’s sensitivity to changes in weather: Insight from two cities with different climatic conditions.” Proc., 91st Annual Meeting of the Transportation Research Board, Transportation Research Board, Washington, DC.
American Association of State Highway and Transportation Officials (AASHTO). (1992). “AASHTO guidelines for traffic data programs.” American Association of State Highway and Transportation Officials, Washington, DC.
Dowds, J., and Sullivan, J. (2011). “Applying a vehicle-miles of travel calculation methodology to a county-wide calculation of bicycle and pedestrian miles of travel.” Transportation Research Board, Washington, DC.
El Esaway, M., Lim, C., Sayed, T., and Mosa, A. (2013). “Development of daily adjustment factors for bicycle traffic.” J. Transp. Eng., 859–871.
Federal Highway Administration (FHWA). (2013). Traffic monitoring guide, 2013 update, Dept. of Transportation, Washington, DC.
Flynn, B. S., Dana, G. S., Sears, J., and Aultman-Hall, L. (2012). “Weather factor impacts on commuting to work by bicycle.” Prev. Med., 54(2), 122–124.
Gadda, S., Magoon, A., and Kockelman, K. M. (2007). “Quantifying the uncertainty in annual average daily traffic (AADT) count estimates.” World Conf. on Transport Research, Lyon, France.
Gallop, C., Tse, C., and Zhao, J. (2012). “A seasonal autoregressive model of Vancouver bicycle traffic using weather variables.” Proc., 91st Annual Meeting of the Transportation Research Board, Transportation Research Board of the National Academies, Washington, DC.
Hankey, S., et al. (2012). “Estimating use of non-motorized infrastructure: Models of bicycle and pedestrian traffic in Minneapolis, MN.” Landsc. Urban Plann., 107(3), 307–316.
Lewin, A. (2011). “Temporal and weather impacts on bicycle volumes. (CD-ROM).” Transportation Research Board of the National Academies, Washington, DC.
Lindsey, G., Wilson, J., Rubchinskaya, E., Yang, J., and Han, Y. (2007). “Estimating urban trail traffic: Methods for existing and proposed trails.” Landsc. Urban Plann., 81(4), 299–315.
Miranda-Moreno, L., and Nosal, T. (2011). “Weather or not to cycle.” J. Transp. Res. Board, 2247, 42–52.
Miranda-Moreno, L. F., and Nosal, T. (2012). “Cycling and weather: A multi-city and multi-facility study in North America.” Proc., 91st Annual Meeting of the Transportation Research Board, Transportation Research Board of the National Academies, Washington, DC.
Nankervis, M. (1999). “The effect of weather and climate on bicycle commuting.” Transp. Res. Part A, 33(6), 417–431.
National Oceanic & Atmospheric Administration (NOAA). (2013). “Climate data online.” Portland Int. Airport Daily and Hourly Weather Data, Portland, OR. 〈http://www.ncdc.noaa.gov/cdo-web〉 (Oct.15, 2014).
Niemeier, D. A. (1996). “Longitudinal analysis of bicycle count variability: Results and modeling implications.” J. Transp. Eng., 200–206.
Nordback, K., Marshall, W. E., Janson, B. N., and Stolz, E. (2013). “Estimating annual average daily bicyclists: Error and accuracy.” Proc., 92nd Annual Meeting of the Transportation Research Board, Transportation Research Board of the National Academies, Washington, DC.
Nordback, K. L. (2012). “Estimating annual average daily bicyclists and analyzing cyclist safety at urban intersections.” Ph.D. thesis, Univ. of Colorado Denver, Denver.
Phung, J., and Rose, G. (2007). “Temporal variations in usage of Melbourne’s bike paths.” Proc., 30th Australasian Transport Research Forum, Melbourne: Forum Papers (CD-ROM), Melbourne, Victoria, Australia, 25–27.
Rose, G. F., Ahmed, M. F., Figliozzi, M., and Jakob, C. (2011). “Quantifying and comparing the effects of weather on bicycle demand in Melbourne (Australia) and Portland (USA).” Proc., 90th Annual Meeting of the Transportation Research Board, Transportation Research Board of the National Academies, Washington, DC.
Thomas, T., Jaarsma, R., and Tutert, B. (2009). “Temporal variations of bicycle demand in the Netherlands: Influence of weather on cycling.” Transportation Research Board 88th Annual Meeting (CD-ROM), Transportation Research Board of the National Academies, Washington, DC.
Wang, X., Lindsey, G., Hankey, S., and Hoff, K. (2014). “Estimating mixed-mode urban trail traffic using negative binomial regression models.” J. Urban Plann. Dev., 04013006.

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Go to Journal of Transportation Engineering
Journal of Transportation Engineering
Volume 140Issue 5May 2014

History

Received: Aug 9, 2013
Accepted: Jan 14, 2014
Published online: Mar 7, 2014
Published in print: May 1, 2014
Discussion open until: Aug 7, 2014

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Authors

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Miguel Figliozzi [email protected]
Associate Professor, Civil and Environmental Engineering, Portland State Univ., P.O. Box 751, Portland, OR 97207 (corresponding author). E-mail: [email protected]
Pam Johnson
Graduate Research Assistant, Civil and Environmental Engineering, Portland State Univ., P.O. Box 751, Portland, OR 97207.
Christopher Monsere
Associate Professor, Civil and Environmental Engineering, Portland State Univ., P.O. Box 751, Portland, OR 97207.
Krista Nordback, M.ASCE
Research Associate, Oregon Transportation Research and Education Consortium, Portland State Univ., P.O. Box 751, Portland, OR 97207.

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