Application of symbolic regression for constitutive modeling of plastic deformation
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- @Article{kabliman:2021:apples,
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author = "Evgeniya Kabliman and Ana Helena Kolody and
Johannes Kronsteiner and Michael Kommenda and
Gabriel Kronberger",
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title = "Application of symbolic regression for constitutive
modeling of plastic deformation",
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journal = "Applications in Engineering Science",
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year = "2021",
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volume = "6",
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pages = "100052",
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month = jun,
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keywords = "genetic algorithms, genetic programming, Material
constitutive equations, Machine learning, Symbolic
regression, Data-driven modelling, Physics-based
modelling, Finite element analysis",
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ISSN = "2666-4968",
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URL = "https://www.sciencedirect.com/science/article/pii/S2666496821000182",
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DOI = "doi:10.1016/j.apples.2021.100052",
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size = "11 pages",
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abstract = "In numerical process simulations, in-depth knowledge
about material behaviour during processing in the form
of trustworthy material models is crucial. Among the
different constitutive models used in the literature
one can distinguish a physics-based approach (white-box
model), which considers the evolution of material
internal state variables, such as mean dislocation
density, and data-driven models (grey or even
black-box). Typically, parameters in physics-based
models such as physical constants or material
parameters, are interpretable and have a physical
meaning. However, even physics-based models often
contain calibration coefficients that are fitted to
experimental data. In the present work, we investigate
the applicability of symbolic regression for (1)
predicting calibration coefficients of a physics-based
model and (2) for deriving a constitutive model
directly from measurement data. Our goal is to find
mathematical expressions, which can be integrated into
numerical simulation models. For this purpose, we have
chosen symbolic regression to derive the constitutive
equations based on data from compression testing with
varying process parameters. To validate the derived
constitutive models, we have implemented them into a FE
solver (herein, LS-DYNA), and calculated the
force-displacement curves. The comparison with
experiments shows a reasonable agreement for both
data-driven and physics-based (with fitted and learned
calibration parameters) models.",
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notes = "Also known as \cite{KABLIMAN2021100052}
LKR Light Metals Technologies, Austrian Institute of
Technology, Ranshofen, Austria",
- }
Genetic Programming entries for
Evgeniya Kabliman
Ana Helena Kolody
Johannes Kronsteiner
Michael Kommenda
Gabriel Kronberger
Citations