Beam yielding load identification by neural networks

  • Bartosz Miller Rzeszów University of Technology
  • Grzegorz Piątkowski Rzeszów University of Technology
  • Leonard Ziemiański Rzeszów University of Technology

Abstract

The paper presents the application of Artificial Neural Networks for the identification of the load causing a partial yielding in the cross-section of a simple supported beam. The identification of the load was based on a change of the dynamic parameters (eigenfrequencies) of the partially yielding structure. On this basis and using neural networks a tool for the location and evaluation of the load causing the deformation was built. The optimum network architecture, learning algorithm, number of epochs, and the minimum number of eigenfrequencies have been found. In order to come to the final conclusions, a wide variety of network architectures (from simple networks with four neurons in one hidden layer to complex networks consisting of two or three simple networks), learning algorithms and different numbers of learning epochs have been tested.

Keywords

References

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Published
May 22, 2023
How to Cite
MILLER, Bartosz; PIĄTKOWSKI, Grzegorz; ZIEMIAŃSKI, Leonard. Beam yielding load identification by neural networks. Computer Assisted Methods in Engineering and Science, [S.l.], v. 6, n. 3-4, p. 449-467, may 2023. ISSN 2956-5839. Available at: <https://cames.ippt.gov.pl/index.php/cames/article/view/1305>. Date accessed: 23 dec. 2024.
Section
Articles