Multi-Dimensional Regression Models for Predicting the Wall Thickness Distribution of Corrugated Pipes
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{albrecht:2022:Polymers,
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author = "Hanny Albrecht and Wolfgang Roland and
Christian Fiebig and Gerald Roman Berger-Weber",
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title = "Multi-Dimensional Regression Models for Predicting the
Wall Thickness Distribution of Corrugated Pipes",
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journal = "Polymers",
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year = "2022",
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volume = "14",
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number = "17",
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pages = "Article No. 3455",
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keywords = "genetic algorithms, genetic programming",
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ISSN = "2073-4360",
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URL = "https://www.mdpi.com/2073-4360/14/17/3455",
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DOI = "doi:10.3390/polym14173455",
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abstract = "Corrugated pipes offer both higher stiffness and
higher flexibility while simultaneously requiring less
material than rigid pipes. Production rates of
corrugated pipes have therefore increased significantly
in recent years. Due to rising commodity prices, pipe
manufacturers have been driven to produce corrugated
pipes of high quality with reduced material input. To
the best of our knowledge, corrugated pipe geometry and
wall thickness distribution significantly influence
pipe properties. Essential factors in optimising wall
thickness distribution include adaptation of the mold
block geometry and structure optimisation. To achieve
these goals, a conventional approach would typically
require numerous iterations over various pipe
geometries, several mold block geometries, and then
fabrication of pipes to be tested
experimentally—an approach which is very
time-consuming and costly. To address this issue, we
developed multi-dimensional mathematical models that
predict the wall thickness distribution in corrugated
pipes as functions of the mold geometry by using
symbolic regression based on genetic programming (GP).
First, the blow molding problem was transformed into a
dimensionless representation. Then, a screening study
was performed to identify the most significant
influencing parameters, which were subsequently varied
within wide ranges as a basis for a comprehensive,
numerically driven parametric design study. The data
set obtained was used as input for data-driven
modelling to derive novel regression models for
predicting wall thickness distribution. Finally, model
accuracy was confirmed by means of an error analysis
that evaluated various statistical metrics. With our
models, wall thickness distribution can now be
predicted and subsequently used for structural
analysis, thus enabling digital mold block design and
optimising the wall thickness distribution.",
-
notes = "also known as \cite{polym14173455}",
- }
Genetic Programming entries for
Hanny Albrecht
Wolfgang Roland
Christian Fiebig
Gerald Roman Berger-Weber
Citations