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DNN-MLVEM: A Data-Driven Macromodel for RC Shear Walls Based on Deep Neural Networks

Author

Listed:
  • German Solorzano

    (Department of Civil Engineering and Energy Technology, OsloMet–Oslo Metropolitan University, 0166 Oslo, Norway)

  • Vagelis Plevris

    (Department of Civil and Architectural Engineering, Qatar University, Doha P.O. Box 2713, Qatar)

Abstract

This study proposes the DNN-MVLEM, a novel macromodel for the non-linear analysis of RC shear walls based on deep neural networks (DNN); while most RC shear wall macromodeling techniques follow a deterministic approach to find the right configuration and properties of the system, in this study, an alternative data-driven strategy is proposed instead. The proposed DNN-MVLEM is composed of four vertical beam-column elements and one horizontal shear spring. The beam-column elements implement the fiber section formulation with standard non-linear uniaxial material models for concrete and steel, while the horizontal shear spring uses a multi-linear force–displacement relationship. Additionally, three calibration factors are introduced to improve the performance of the macromodel. The data-driven component of the proposed strategy consists of a large DNN that is trained to predict the force–displacement curve of the shear spring and the three calibration factors. The training data is created using a parametric microscopic FEM model based on the multi-layer shell element formulation and a genetic algorithm (GA) that optimizes the response of the macromodel to match the behavior of the microscopic FEM model. The DNN-MVLEM is tested in two types of examples, first as a stand-alone model and then as part of a two-bay multi-story frame structure. The results show that the DNN-MVLEM is capable of reproducing the results obtained with the microscopic FEM model up to 100 times faster and with an estimated error lower than 5%.

Suggested Citation

  • German Solorzano & Vagelis Plevris, 2023. "DNN-MLVEM: A Data-Driven Macromodel for RC Shear Walls Based on Deep Neural Networks," Mathematics, MDPI, vol. 11(10), pages 1-19, May.
  • Handle: RePEc:gam:jmathe:v:11:y:2023:i:10:p:2347-:d:1149742
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