A Deep Learning Approach to Predict Hamburg Rutting Curve
Hamed Majidifard, Behnam Jahangiri, Punyaslok Rath, Amir H. Alavi,, William G. Buttlar

TL;DR
This paper presents a CNN-based deep learning model to predict asphalt pavement rutting depth from HWTT data, enabling cost-effective and rapid assessment of rutting performance without extensive laboratory testing.
Contribution
The study introduces a novel CNN model trained on a large HWTT dataset to accurately predict rutting depth and curve, incorporating multiple mixture and testing variables.
Findings
High prediction accuracy demonstrated through validation.
Model effectively captures influence of mixture variables on rutting.
Potential to replace or supplement laboratory testing for rutting assessment.
Abstract
Rutting continues to be one of the principal distresses in asphalt pavements worldwide. This type of distress is caused by permanent deformation and shear failure of the asphalt mix under the repetition of heavy loads. The Hamburg wheel tracking test (HWTT) is a widely used testing procedure designed to accelerate, and to simulate the rutting phenomena in the laboratory. Rut depth, as one of the outputs of the HWTT, is dependent on a number of parameters related to mix design and testing conditions. This study introduces a new model for predicting the rutting depth of asphalt mixtures using a deep learning technique - the convolution neural network (CNN). A database containing a comprehensive collection of HWTT results was used to develop a CNN-based machine learning prediction model. The database includes 10,000 rutting depth data points measured across a large variety of asphalt…
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Taxonomy
MethodsConvolution
