Improved Sensitivity of Base Layer on the Performance of Rigid Pavement
Sajib Saha, Fan Gu, Xue Luo, and Robert L. Lytton

TL;DR
This study enhances rigid pavement performance prediction by developing an ANN model for modified k-values and using improved resilient modulus, resulting in higher sensitivity to base layer properties and better response prediction under various bonding conditions.
Contribution
The paper introduces an ANN-based model for predicting modified k-values and resilient modulus, improving sensitivity and accuracy over traditional Pavement ME design methods.
Findings
Modified MR values are more sensitive to water content in the base layer.
ANN-predicted k-values can assess pavement response under partial bonding.
Enhanced models better reflect the influence of unbound layers on pavement performance.
Abstract
The performance of rigid pavement is greatly affected by the properties of base/subbase as well as subgrade layer. However, the performance predicted by the AASHTOWare Pavement ME design shows low sensitivity to the properties of base and subgrade layers. To improve the sensitivity and better reflect the influence of unbound layers a new set of improved models i.e., resilient modulus (MR) and modulus of subgrade reaction (k-value) are adopted in this study. An Artificial Neural Network (ANN) model is developed to predict the modified k-value based on finite element (FE) analysis. The training and validation datasets in the ANN model consist of 27000 simulation cases with different combinations of pavement layer thickness, layer modulus and slab-base interface bond ratio. To examine the sensitivity of modified MR and k-values on pavement response, eight pavement sections data are…
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Taxonomy
TopicsAsphalt Pavement Performance Evaluation · Infrastructure Maintenance and Monitoring · Concrete and Cement Materials Research
