To read this content please select one of the options below:

Development of pavement roughness regression models based on smartphone measurements

Turki I. Al-Suleiman (Obaidat) (Department of Civil Engineering, Jordan University of Science and Technology, Irbid, Jordan)
Yazan Ibrahim Alatoom (Department of Civil Engineering, Jordan University of Science and Technology, Irbid, Jordan)

Journal of Engineering, Design and Technology

ISSN: 1726-0531

Article publication date: 24 May 2022

162

Abstract

Purpose

The purpose of this paper was to study the possibility of using smartphone roughness measurements for developing pavement roughness regression models as a function of pavement age, traffic loading and traffic volume variables. Also, the effects of patching and pavement distresses on pavement roughness were investigated. The work focused on establishing pavement roughness prediction models and applying these models to pavement management systems (PMS) to help decision-makers choose the best maintenance and rehabilitation (M&R) options by using cost-effective methods.

Design/methodology/approach

Signal processing techniques including filtering and processing techniques were used to obtain the International Roughness Index (IRI) from raw acceleration data collected from smartphone accelerometer sensors. The obtained IRI values were inputted as a dependent variable in analytical regression models as well as several independent variables with proper transformations.

Findings

According to the study results, several regression models were developed with a big variation in the coefficients of determination (R2). However, the best models included pavement age, accumulated traffic volume (∑TV) and construction quality factor (CQF) with R2 equal to 0.63. It was also found that the effects of pavement distresses and patching was significant at a-level < 0.05. The patching effect on pavement roughness was found higher than the effect of other pavement distresses.

Practical implications

The presented results and methods in this paper could be used in the future predictions of pavement roughness and help the decision-makers to estimate M&R needs. The work focused on establishing IRI prediction models and applying these models to the PMS to help decision-makers choose the best M & R options.

Originality/value

To develop sound pavement roughness models, it is essential to collect roughness data using automated procedures. However, applying these procedures in developing countries faces several difficulties such as the high price and operation costs of roughness equipment and lack of technical experience. The advantage of using IRI values taken from smartphones is that the roughness evaluation survey may be expanded to cover the full road network at a cheaper cost than with automated instruments. Therefore, if the roughness survey covers more roads, the prediction model’s accuracy will be improved.

Keywords

Acknowledgements

The authors of this article are grateful to Greater Amman Municipality for providing the necessary data to complete this work.

Funding statement: Not applicable.

Competing interest’s statement: The authors of this research declare there are no conflicts of interest.

Citation

Al-Suleiman (Obaidat), T.I. and Alatoom, Y.I. (2022), "Development of pavement roughness regression models based on smartphone measurements", Journal of Engineering, Design and Technology, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/JEDT-12-2021-0723

Publisher

:

Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

Related articles