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Prediction of permanent deformation in asphalt pavements using a novel symbiotic organisms search-least squares support vector regression

Cheng, Min-Yuan and Prayogo, Doddy and Wu, Yu-Wei (2019) Prediction of permanent deformation in asphalt pavements using a novel symbiotic organisms search-least squares support vector regression. [UNSPECIFIED]

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      Abstract

      The prediction of asphalt performance can be very important in terms of increasing service life and performance while saving energy and money. In this study, a new hybrid artificial intelligence (AI) system, SOS-LSSVR, has been proposed to predict the permanent deformation potential of asphalt pavement mixtures. SOS-LSSVR utilizes the symbiotic organisms search (SOS) and the least squares support vector regression (LSSVR), which are seen as a complementary system. The prediction model can be established from all input and output data pairs for LSSVR, while SOS optimizes the systems tuning parameters. To avoid sampling bias and to partition the dataset into testing and training, a cross-validation technique was chosen. The results can be compared to those of previous studies and other predictive methods. Through the use of four error indicators, SOS-LSSVR accuracy was verified in predicting the permanent deformation behavior of an asphalt mixture. The present study demonstrates that the proposed AI system is a valuable decision-making tool for road designers. Additionally, the success of SOS-LSSVR in building an accurate prediction model suggests that the proposed self-optimized prediction framework has found an underlying pattern in the current database and thus can potentially be implemented in various disciplines.

      Item Type: UNSPECIFIED
      Additional Information: Scimagojr https://www.scimagojr.com/journalsearch.php?q=24800&tip=sid
      Uncontrolled Keywords: Asphalt mixtures; Artificial intelligence; Permanent deformation; Least squares support vector regression; Symbiotic organisms search
      Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
      T Technology > TA Engineering (General). Civil engineering (General)
      Divisions: Faculty of Civil Engineering and Planning > Civil Engineering Department
      Depositing User: Admin
      Date Deposited: 23 Oct 2019 06:15
      Last Modified: 15 Sep 2020 22:51
      URI: https://repository.petra.ac.id/id/eprint/20286

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