Interpretable soft computing predictions of elastic shear buckling in tapered steel plate girders
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- @Article{ABDELALEEM:2022:tws,
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author = "Basem H. AbdelAleem and Mohamed K. Ismail and
May Haggag and Wael El-Dakhakhni and Assem A. A. Hassan",
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title = "Interpretable soft computing predictions of elastic
shear buckling in tapered steel plate girders",
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journal = "Thin-Walled Structures",
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volume = "176",
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pages = "109313",
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year = "2022",
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ISSN = "0263-8231",
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DOI = "doi:10.1016/j.tws.2022.109313",
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URL = "https://www.sciencedirect.com/science/article/pii/S026382312200235X",
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keywords = "genetic algorithms, genetic programming, Data-driven
models, Elastic shear buckling strength, Multi-gene
genetic programming, Variable importance, Partial
dependence plots, Tapered end web panel",
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abstract = "The complexity of the shear buckling in tapered plate
girders has motivated researchers to conduct
experimental and numerical investigations to understand
the underlying mechanisms controlling such phenomenon,
and subsequently develop related design-oriented
expressions. However, existing predictive models have
been developed and validated using limited datasets
and/or traditional regression techniques-restricting
both the model utility, when considering a wider range
of design parameters, and the model generalizability,
due to associated uncertainties. To address these
issues, the present study employed a powerful soft
computing technique-multi-gene genetic programming
(MGGP), to develop design expressions to predict the
elastic shear buckling strength of tapered end plate
girder web panels. A dataset of 427 experimental and
experimentally validated numerical results was used in
training, validating, and testing the developed MGGP
models. Guided by mechanics and findings from previous
studies, the key parameters controlling the strength
were identified, and MGGP were employed to reveal the
interdependence between such parameters and
subsequently develop interpretable predictive models.
The prediction accuracy of the developed models was
evaluated against that of other existing models using
various statistical measures. Several filter and
embedded variable importance techniques were used to
rank the model input parameters according to their
significance in predicting the elastic shear buckling
strength. These techniques include the variable
importance random forest and the relative influence
gradient boosting techniques. Moreover, partial
dependence plots were employed to explore the effect of
the input variables on the strength. The results
obtained from this study demonstrated the robustness of
the developed MGGP expression for predicting the
elastic shear buckling strength of tapered plate girder
end web panel. The developed model also exhibited a
superior prediction accuracy and generalizability
compared to currently existing ones. Furthermore, the
developed partial dependence plots facilitated
interpreting the influence of all input variables on
the predicted elastic shear buckling strength",
- }
Genetic Programming entries for
Basem H AbdelAleem
Mohamed K Ismail
May Haggag
Wael El-Dakhakhni
Assem A A Hassan
Citations