Predicting maximum deflection of N-Edged thin-shelled hyperbolic-Paraboloid umbrella using machine learning techniques
Created by W.Langdon from
gp-bibliography.bib Revision:1.8414
- @Article{Smith:2024:tws,
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author = "Sam Smith and Iman Mansouri and Maria Garlock and
Shengzhe Wang",
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title = "Predicting maximum deflection of N-Edged thin-shelled
hyperbolic-Paraboloid umbrella using machine learning
techniques",
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journal = "Thin-Walled Structures",
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year = "2024",
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volume = "205",
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pages = "112412",
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keywords = "genetic algorithms, genetic programming, Felix
candela, Hyperbolic paraboloid (hypar), Concrete shell,
Umbrella, Gene expression programming, Machine
learning, Symbolic regression, conceptual design",
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ISSN = "0263-8231",
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URL = "
https://www.sciencedirect.com/science/article/pii/S026382312400853X",
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DOI = "
doi:10.1016/j.tws.2024.112412",
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abstract = "Many thin-shelled hyperbolic paraboloid (hypar)
umbrella forms have been built in the last 60 years as
roof coverings. While the stresses in these forms
remain relatively low, the deflections are a critical
design parameter, and one that must be considered by
architects and engineers in the conceptual design
phase, meaning the design stage when the scale and form
is given to the structure. To-date, there is no
closed-form solution that can predict the maximum
deflection of umbrellas due to their highly varying and
complex geometry. The best option for predicting
deflection is via finite element analysis, which is
time-consuming for conceptual (preliminary) design
purposes. In response, this paper uses machine learning
via genetic programming (GP) and gene expression
programming (GEP) to develop closed-form equations that
predict the maximum corner deflection of N-edged hypar
umbrellas - where N = 3, 4, 5, 6, 7, and 8. For a given
a boundary condition and material, geometry is the most
significant parameter influencing a shell's stiffness;
thus, elastic finite element (FE) models use geometric
properties as input variables (N, projected area,
normalised rise, and shell thickness). The maximum
corner deflection is recorded as an output and the FE
analyses generate a large dataset of 53,754 results. It
is observed that both GP and GEP can effectively
parameterize the maximum deflection of N-edged hypar
umbrellas, with GEP producing more concise, but
relatively less accurate, equations than GP. While the
formulations are trained using concrete material, a
material factor multiplier transforms the results to
other material properties within the assumption of
elastic limits. The results of the study can be used to
assist with conceptual design of hypar umbrellas and to
validate complex FE models of hypar umbrellas. This
research also illustrates the use of machine learning
techniques as applied to the conceptual design of
structures with highly varying geometries",
- }
Genetic Programming entries for
Sam Smith
Iman Mansouri
Maria Garlock
Shengzhe Wang
Citations