Development of Predictive Models for Initiation and Propagation of Field Transverse Cracking

Author:

Zhang Weiguang1,Shen Shihui1,Basak Prasanta2,Wen Haifang1,Wu Shenghua3,Faheem Ahmed4,Mohammad Louay N.56

Affiliation:

1. Department of Civil and Environmental Engineering, Washington State University, 405 Spokane Street, Sloan 101, Pullman, WA 99164.

2. Division of Mathematics and Natural Sciences, Department of Statistics, 149 LRC, Pennsylvania State University, Altoona, PA 16601.

3. Division of Business and Engineering, 103B Sheetz Family Center

4. Department of Civil and Environmental Engineering, University of Wisconsin–Platteville, Platteville, WI 53818.

5. College of Engineering, Temple University, 1947 North 12th Street, Philadelphia, PA 19122.

6. Department of Civil and Environmental Engineering, Louisiana Transportation Research Center, Louisiana State University, 3520B Patrick F. Taylor Hall, Baton Rouge, LA 70803.

Abstract

The development of field transverse cracking prediction models is highly complicated because of several factors, including the difficulty in differentiating thermal cracking from reflective cracking in the field, the high variability of field conditions, and the potential variability in crack initiation and crack propagation mechanisms. As a result, a statistical-based approach is preferred to a mechanical-based prediction model. In this study, statistical methods, partial least squares regression, and binary logistic regression were used to establish prediction models for field transverse cracking. Results indicated that crack initiation and crack propagation were controlled by predictor variables. Material properties (mixture creep compliance, work density, and percentage passing the No. 200 sieve), pavement structure (overlay thickness), climate (low temperature hour), and traffic (average annual daily truck traffic) were found to be key indicators for transverse crack propagation. Low temperature hour, percentage passing No. 200 sieve, indirect tensile strength, and service life were critical predictor variables for crack initiation. In particular, the crack initiation model, developed by the binary logistic regression, predicted the probability of crack initiation. Both models show good predictability and are well validated. These models appear to work for hot-mix and warm-mix asphalt pavements.

Publisher

SAGE Publications

Subject

Mechanical Engineering,Civil and Structural Engineering

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