Stress intensity factor models using mechanics-guided decomposition and symbolic regression
Created by W.Langdon from
gp-bibliography.bib Revision:1.8414
- @Article{Merrell:2024:engfracmech,
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author = "Jonas Merrell and John Emery and Robert M. Kirby and
Jacob Hochhalter",
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title = "Stress intensity factor models using mechanics-guided
decomposition and symbolic regression",
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journal = "Engineering Fracture Mechanics",
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year = "2024",
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volume = "310",
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pages = "110432",
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keywords = "genetic algorithms, genetic programming, Interpretable
machine learning, GPSR, Semi-elliptical surface crack,
Mechanics-based training, Stress intensity factor",
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ISSN = "0013-7944",
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URL = "
https://www.sciencedirect.com/science/article/pii/S0013794424005952",
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DOI = "
doi:10.1016/j.engfracmech.2024.110432",
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abstract = "The finite element method can be used to compute
accurate stress intensity factors (SIFs) for cracks
with complex geometries and boundary conditions. In
contrast, handbook solutions act as surrogate SIF
models that provide significantly faster evaluation
times. However, the development of conventional
surrogate SIF models relies on manual development based
on low-order parameterizations. This limits surrogate
model accuracy and generalizability. In this paper, we
develop a framework for the automated development of
mechanics-guided handbook SIF solutions by using
interpretable machine learning via genetic programming
for symbolic regression (GPSR). Formalizing the
mechanics-based approach of Raju and Newman, SIF
training data is decomposed into multiple subsets. This
decomposition enables parallel GPSR model development
of subfunctions, each of which accounts for specific
geometrical corrections with respect to a known
analytical model. Using this mechanics-based approach
with GPSR allows for equations to be learnt with
improved accuracy and reduced complexity relative to
the Raju Newman equations while maintaining the
inherent interpretability of mathematical expressions.
In this paper, we present equations that match the
complexity of the Raju Newman equations while having
reduced error, as well as equations with similar errors
and reduced complexity",
- }
Genetic Programming entries for
Jonas Merrell
John M Emery
Robert M Kirby
Jacob Dean Hochhalter
Citations