Using Machine Learning to Examine Impact of Type of Performance Indicator on Flexible Pavement Deterioration Modeling

  title={Using Machine Learning to Examine Impact of Type of Performance Indicator on Flexible Pavement Deterioration Modeling},
  author={S. Madeh Piryonesi and Tamer E. El-Diraby},
  journal={Journal of Infrastructure Systems},
AbstractLimited research has been conducted on the application of data analytics to the prediction of the Pavement Condition Index (PCI) of asphalt roads. More importantly, studies comparing the pr... 
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