Neural network identification of building natural periods with various splitting up of the patterns into training and testing sets

  • Krystyna Kuźniar Pedagogical University of Cracow

Abstract

The paper deals with an application of neural networks for computation of fundamental natural periods of buildings with load-bearing walls. The identification problem is formulated as a relation between structural and soil parameters and the fundamental period of building. The patterns are based on long-term tests performed 6n actual structures. Various splitting up of the set of patterns into training and testing sets are considered in the analysis. The carried out analysis leads to conclusion that, even in "the worst" case of randomly selected testing patterns, the natural periods of vibrations of buildings are obtained with accuracy quite satisfactory for engineering practice.

Keywords

References

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Published
Aug 24, 2022
How to Cite
KUŹNIAR, Krystyna. Neural network identification of building natural periods with various splitting up of the patterns into training and testing sets. Computer Assisted Methods in Engineering and Science, [S.l.], v. 14, n. 2, p. 243-250, aug. 2022. ISSN 2956-5839. Available at: <https://cames.ippt.pan.pl/index.php/cames/article/view/829>. Date accessed: 22 nov. 2024.
Section
Articles