Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14279/34395
Title: New Predictive Model for the Computation of Reinforced Concrete Column Shear Strength
Authors: van der Westhuizen, Ashley Megan 
Bakas, Nikolaos P. 
Markou, George 
Major Field of Science: Engineering and Technology
Field Category: Civil Engineering
Keywords: seismic assessment;reinforced concrete columns;shear strength;machine learning;design equations
Issue Date: 24-Dec-2024
Source: International Journal of Computational Methods, 2024
Journal: International Journal of Computational Methods 
Abstract: The computing of the fundamental period of structures during seismic design is well documented in 13 design codes but is mainly dependent on the height of the structure, which is considered to be the most influential 14 parameter. It is, however, important to consider a phenomenon called the soil-structure interaction (SSI), as this 15 has been found to have a detrimental effect, especially for buildings founded on soft soils. A pilot research project 16 foresaw the use of machine learning (ML) algorithms trained on relatively limited data sets for the development 17 of a more accurate and objective fundamental period formula. Therefore, a data set that consists of 98,308 18 fundamental period data points was created through the use of a High-Performance Computer (HPC), which is 19 the largest data set of its kind. The HPC results were then used to train, test, and validate different ML algorithms. 20 It was found that XGBoost-HYT-CV with hyperparameter tuning performed the best with a correlation of 99.99% 21 and a Mean Average Percentage Error (MAPE) of 0.5%. Furthermore, the XGBoost-HYT-CV model 22 outperformed all under-study ML models when using an additional data set that consisted of out-of-sample 23 building geometries and soil properties, with a resulting MAPE of 9%. Finally, irregular buildings were also used 24 to test the performance of the proposed predictive models.
URI: https://hdl.handle.net/20.500.14279/34395
ISSN: 0219-8762
DOI: 10.3390/computers14010002
Rights: CC0 1.0 Universal
Type: Article
Affiliation : University of Pretoria 
National Infrastructures for Research and Technology 
Cyprus University of Technology 
Publication Type: Peer Reviewed
Appears in Collections:Άρθρα/Articles

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