Prediction of stress-strain curves for aluminium alloys using symbolic regression
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{kabliman:2019:ESAFORM,
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author = "Evgeniya Kabliman and Ana Helena Kolody and
Michael Kommenda and Gabriel Kronberger",
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title = "Prediction of stress-strain curves for aluminium
alloys using symbolic regression",
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booktitle = "Proceedings of the 22nd International ESAFORM
Conference on Material Forming",
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year = "2019",
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volume = "2113",
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number = "1",
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series = "AIP Conference Proceedings",
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pages = "180009--1–-180009--6",
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month = "07",
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publisher = "AIP",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-0-7354-1847-9",
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ISSN = "0094-243X",
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URL = "https://doi.org/10.1063/1.5112747",
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eprint = "https://pubs.aip.org/aip/acp/article-pdf/doi/10.1063/1.5112747/13181889/180009_1_online.pdf",
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DOI = "doi:10.1063/1.5112747",
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size = "6 pages",
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abstract = "An in-depth understanding of material flow behaviour
is crucial for numerical simulation of plastic
deformation processes. In present work, we use a
Symbolic Regression method in combination with Genetic
Programming for modelling flow stress curves. In
contrast to classical regression methods that fit
parameters to an equation of a given form, symbolic
regression searches for both numerical parameters and
the equation form simultaneously; therefore, no prior
assumption on a flow model is required. This
identification process is done by generating and
adapting equations iteratively using a genetic
algorithm. The constitutive model is derived for two
aluminium wrought alloys: a conventional AA6082 and
modified Cu-containing AA7000 alloy. The required
dataset is created by performing a series of hot
compression tests at temperatures between 350 degrees C
and 500 degrees C and strain rates from 0.001 to 0.1
using a deformation dilatometer. The measured data,
experimental set-up parameters as well as the material
process history and its chemical composition are stored
in a SQL database using a python script. To correct raw
measured data, e.g. minimize the noise, an in-house
Flow Stress Analysis Toolkit was used. The obtained
results represent a data-driven free-form constitutive
model and are compared to a physics-based model, which
describes the flow stress in terms of internal state
parameters (herein, mean dislocation density). We find
that both models reproduce reasonably well the measured
data, while for modelling using symbolic regression no
prior knowledge on materials behaviour was required.",
- }
Genetic Programming entries for
Evgeniya Kabliman
Ana Helena Kolody
Michael Kommenda
Gabriel Kronberger
Citations