Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6717415 | Construction and Building Materials | 2018 | 9 Pages |
Abstract
Artificial Intelligence algorithm support vector regression (SVR) has proved successful in outperforming conventional Witczak and ANN models for estimation of dynamic modulus (Eâ) of asphalt mixes. However, there were two issues related to the development of Eâ prediction models that the present study addresses. Firstly, since aggregates occupy almost 95% by weight of HMA, it is quite possible that the morphology of these aggregates play an important role in influencing the Eâ values. To address this issue, aggregate shape parameters, namely, angularity, sphericity, texture and form were used with aggregate gradation for stiffness estimation. Secondly, to fine tune the hyper-parameters firefly algorithm (FA) was coupled with SVR. Eâ tests of 20 HMA mixes having different sources, sizes of aggregates, and volumetric properties were conducted at 4 temperatures and 6 frequencies. Aggregate shape parameters were measured using the automated aggregate image measurement system (AIMS). SVR-FA models were developed that predicted the Eâ with an R2 of 0.98. SVR-FA models were compared with SVR and ANN models for Eâ prediction. Further, a sensitivity analysis was conducted to identify the important input parameters. Lastly, an approach for formulation of SVR-FA model equations for direct prediction of HMA stiffness is also discussed. FA proved instrumental in improving the efficiency of SVR by optimizing the hyper-parameters with lesser manual effort. Finally, it was concluded that SVR-FA algorithm is capable of successfully predicting the Eâ values using the aggregate shape parameters.
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Authors
Dharamveer Singh, Saurabh Maheshwari, Musharraf Zaman, Sesh Commuri,