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Combining machine learning models via adaptive ensemble weighting for prediction of shear capacity of reinforced‑concrete deep beams

Prayogo, Doddy and Cheng, Min-Yuan and Wu, Yu-Wei and Tran, Duc-Hoc (2019) Combining machine learning models via adaptive ensemble weighting for prediction of shear capacity of reinforced‑concrete deep beams. [UNSPECIFIED]

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      Abstract

      This study presents a novel artificial intelligence (AI) technique based on two support vector machine (SVM) models and symbiotic organisms search (SOS) algorithm, called “optimized support vector machines with adaptive ensemble weight- ing” (OSVM-AEW), to predict the shear capacity of reinforced-concrete (RC) deep beams. This ensemble learning-based system combines two supervised learning models—the support vector machine (SVM) and least-squares support vector machine (LS-SVM)—with the SOS optimization algorithm as the optimizer. In OSVM-AEW, SOS is integrated to simulta- neously select the optimal parameters of SVM and LS-SVM, and control the coordination process of the learning outputs. Experimental results show that OSVM-AEW achieves the greatest evaluation criteria for coefficient of correlation (0.9620), coefficient of determination (0.9254), mean absolute error (0.3854 MPa), mean absolute percentage error (7.68%), and root- mean-squared error (0.5265 MPa). This paper demonstrates the successful application of OSVM-AEW as an efficient tool for helping structural engineers in the RC deep beams design process.

      Item Type: UNSPECIFIED
      Uncontrolled Keywords: Shear strength, RC deep beams, Ensemble model, Symbiotic organisms search, Support vector machine
      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: 29 Sep 2023 05:39
      Last Modified: 02 Oct 2023 20:38
      URI: https://repository.petra.ac.id/id/eprint/20649

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