Technical Papers
Apr 21, 2015

Framework for Development and Comprehensive Comparison of Empirical Pavement Performance Models

Publication: Journal of Transportation Engineering
Volume 141, Issue 8

Abstract

Empirical performance-prediction models are a central part of every network-level pavement management system. In this regard, a variety of novel techniques including computational intelligence have been applied, mainly without a systematic approach to ensure compliance with principles of pavement engineering. In this study, a framework is provided for development and comprehensive comparison of alternative techniques for pavement performance modeling. As an example, several machine-learning techniques are compared in developing flexible pavement-roughness prediction models using Federal Highway Administration (FHWA’s) long-term pavement performance (LTPP) data. Three important principles of model development—maximum likelihood, consistency, and parsimony—are considered in providing a robust parameterization guideline. Variant architectures of artificial neural networks (ANN), radial basis function (RBF) networks, and support vector machines (SVM) are tested to determine the optimum parameters. Final developed models are compared through quantitative and qualitative evaluations by means of a testing database that has not been used for model development. The example comparison gives the generalized RBF network model an edge over other machine-learning techniques in predicting pavement performance. This framework can be implemented by roadway agencies to develop a robust and representative performance-prediction model for pavement management systems. Moreover, the provided framework can be used to benchmark and compare alternative modeling paradigms for specific prediction problems.

Get full access to this article

View all available purchase options and get full access to this article.

References

Attoh-Okine, N. O. (1994). “Predicting roughness progression in flexible pavements using artificial neural networks.” Proc., 3rd Int. Conf. on Managing Pavements, Vol. 1, National Research Council, Transportation Research Board, Washington, DC, 55–62.
Funahashi, K. (1989). “On the approximate realization of continuous mappings by neural networks.” Neural Networks J., 2(3), 183–192.
Gupta, H. V., Wagener, T., and Yuqiong, L. (2008). “Reconciling theory with observations: Elements of a diagnostic approach to model evaluation.” Hydrol. Processes, 22(18), 3802–3813.
Haas, R., Hudson, W. R., and Zaniewski, J. (1994). Modern pavement management, Krieger Publishing, Malabar, FL.
Haider, S., Chatti, K., Buch, N., Lyles, R., Pulipaka, A., and Gilliland, D. (2007). “Effect of design and site factors on the long-term performance of flexible pavements.” J. Perform. Constr. Facil., 283–292.
Haykin, S. (1999). Neural networks: A comprehensive foundation, 2nd Ed., Prentice Hall, NJ.
Hornik, K., Stinchcombe, M., and White, H. (1989). “Multilayer feed-forward networks are universal approximators.” Neural Networks J., 2(5), 359–366.
Hunt, P. D., and Bunker, J. M. (2003). “Study of site specific roughness progression for a bitumen-sealed unbound granular pavement network.”, Transportation Research Board, Washington, DC, 273–281.
Jain, A. K., Mao, J., and Mohiuddin, K. M. (1996). “Artificial neural networks: A tutorial.” Computer, 29(3), 31–44.
Jolliffe, I. T. (1986). Principal component analysis, Springer, New York.
Kargah-Ostadi, N., Stoffels, S. M., and Tabatabaee, N. (2010). “Network-level pavement roughness model for rehabilitation recommendations.”, Transportation Research Board, Washington, DC, 124–133.
Kutay, M. E. (2007). “Spectral analysis of factors affecting roughness in flexible pavements.” 23rd World Road Congress, World Road Association (PIARC), Paris.
LTPP (Long-Term Pavement Performance). (2013). “Long-term pavement performance (LTPP) standard data release 27.0.”, Federal Highway Administration, U.S. Dept. of Transportation, McLean, VA.
MacKay, D. J. C. (1992). “Bayesian interpolation.” Neural Comput., 4(3), 415–447.
Perera, R. W., Byrum, C., and Kohn, S. D. (1997). “Investigation of development of pavement roughness.”, Office of Infrastructure Research and Development, FHWA, McLean, VA.
Perera, R. W., and Kohn, S. D. (2001). “LTPP data analysis: Factors affecting pavement smoothness.”, National Cooperative Highway Research Program, Transportation Research Board, Washington, DC.
Prozzi, J. A., and Madanat, S. M. (2003). “Empirical-mechanistic model for estimating pavement roughness.” 82nd Annual Meeting of Transportation Research Board, Transportation Research Board, Washington, DC.
Smola, A. J., and Scholkopf, B. (2004). “A tutorial on support vector regression.” Stat. Comput., 14(3), 199–222.
Tighe, S. (2002). “Evaluation of subgrade and climatic zone influences on pavement performance in the Canadian strategic highway program’s (C-SHRP) long-term pavement performance (LTPP) study.” Can. Geotech. J., 39(2), 377–387.
Von Quintus, H. L., Eltahan, A., and Yau, A. (2001). “Smoothness models for hot-mix asphalt-surfaced pavements; developed from long-term pavement performance program data.”, Washington, DC, 139–156.
Yang, J., Lu, J. J., Gunaratne, M., and Xiang, Q. (2003). “Forecasting overall pavement condition with neural networks: Application on Florida highway network.”, Washington, DC, 3–12.

Information & Authors

Information

Published In

Go to Journal of Transportation Engineering
Journal of Transportation Engineering
Volume 141Issue 8August 2015

History

Received: Jun 29, 2014
Accepted: Feb 20, 2015
Published online: Apr 21, 2015
Published in print: Aug 1, 2015
Discussion open until: Sep 21, 2015

Permissions

Request permissions for this article.

Authors

Affiliations

Nima Kargah-Ostadi, Ph.D. [email protected]
Graduate Engineer, Fugro Roadware, Inc., 8613 Cross Park Dr., Austin, TX 78754 (corresponding author). E-mail: [email protected]
Shelley M. Stoffels
P.E.
Associate Professor, Dept. of Civil and Environmental Engineering, Pennsylvania State Univ., 208 Sackett Building, University Park, PA 16802.

Metrics & Citations

Metrics

Citations

Download citation

If you have the appropriate software installed, you can download article citation data to the citation manager of your choice. Simply select your manager software from the list below and click Download.

Cited by

View Options

Get Access

Access content

Please select your options to get access

Log in/Register Log in via your institution (Shibboleth)
ASCE Members: Please log in to see member pricing

Purchase

Save for later Information on ASCE Library Cards
ASCE Library Cards let you download journal articles, proceedings papers, and available book chapters across the entire ASCE Library platform. ASCE Library Cards remain active for 24 months or until all downloads are used. Note: This content will be debited as one download at time of checkout.

Terms of Use: ASCE Library Cards are for individual, personal use only. Reselling, republishing, or forwarding the materials to libraries or reading rooms is prohibited.
ASCE Library Card (5 downloads)
$105.00
Add to cart
ASCE Library Card (20 downloads)
$280.00
Add to cart
Buy Single Article
$35.00
Add to cart

Get Access

Access content

Please select your options to get access

Log in/Register Log in via your institution (Shibboleth)
ASCE Members: Please log in to see member pricing

Purchase

Save for later Information on ASCE Library Cards
ASCE Library Cards let you download journal articles, proceedings papers, and available book chapters across the entire ASCE Library platform. ASCE Library Cards remain active for 24 months or until all downloads are used. Note: This content will be debited as one download at time of checkout.

Terms of Use: ASCE Library Cards are for individual, personal use only. Reselling, republishing, or forwarding the materials to libraries or reading rooms is prohibited.
ASCE Library Card (5 downloads)
$105.00
Add to cart
ASCE Library Card (20 downloads)
$280.00
Add to cart
Buy Single Article
$35.00
Add to cart

Media

Figures

Other

Tables

Share

Share

Copy the content Link

Share with email

Email a colleague

Share