INTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING
<p align="justify"> For over a century of thin cylindrical shells buckling deterministic solution known has a diverge result to the experiment. The gap between classical buckling theory and experimental results drove the study to discover the reason behind this discrepancy. Furthe...
Saved in:
Main Author: | |
---|---|
Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/75151 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
id |
id-itb.:75151 |
---|---|
spelling |
id-itb.:751512023-07-25T13:35:56ZINTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING Geluntung Wafi, Muhammad Indonesia Final Project shell buckling, gaussian process regression, shapley additive explanation. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/75151 <p align="justify"> For over a century of thin cylindrical shells buckling deterministic solution known has a diverge result to the experiment. The gap between classical buckling theory and experimental results drove the study to discover the reason behind this discrepancy. Further, the classical buckling theory might not fully capture the true complexity of the relationship between material properties and geometrical parameters with the critical buckling load. To that end, this final project combines finite element simulation and explainable machine learning to uncover such a relationship. This final project employs Gaussian Process Regression (GPR) with six input variables, namely, Young’s modulus, Poisson ratio, shell length, shell thickness, shell radius, and FTQC (Fabrication Tolerance Quality Class). The model achieved good prediction accuracy with ? 3% error averaged to the whole model and can continue for another step. Shapley additive explanation (SHAP) was introduced to explain the GPR model by letting the user examine every variable of the model and their interaction with another variable. The thickness of the cylinder was found to have a significant impact on the model, followed by Young’s modulus, shell radius, FTQC, shell length, and Poisson ratio. The outcome shows several aberrations to the classical theory, especially in how the variables interact and depart from linearity. text |
institution |
Institut Teknologi Bandung |
building |
Institut Teknologi Bandung Library |
continent |
Asia |
country |
Indonesia Indonesia |
content_provider |
Institut Teknologi Bandung |
collection |
Digital ITB |
language |
Indonesia |
description |
<p align="justify"> For over a century of thin cylindrical shells buckling deterministic solution
known has a diverge result to the experiment. The gap between classical
buckling theory and experimental results drove the study to discover the reason
behind this discrepancy. Further, the classical buckling theory might not fully
capture the true complexity of the relationship between material properties and
geometrical parameters with the critical buckling load. To that end, this final
project combines finite element simulation and explainable machine learning
to uncover such a relationship. This final project employs Gaussian Process
Regression (GPR) with six input variables, namely, Young’s modulus, Poisson
ratio, shell length, shell thickness, shell radius, and FTQC (Fabrication
Tolerance Quality Class). The model achieved good prediction accuracy with
? 3% error averaged to the whole model and can continue for another step.
Shapley additive explanation (SHAP) was introduced to explain the GPR model
by letting the user examine every variable of the model and their interaction
with another variable. The thickness of the cylinder was found to have a
significant impact on the model, followed by Young’s modulus, shell radius,
FTQC, shell length, and Poisson ratio. The outcome shows several aberrations
to the classical theory, especially in how the variables interact and depart from
linearity.
|
format |
Final Project |
author |
Geluntung Wafi, Muhammad |
spellingShingle |
Geluntung Wafi, Muhammad INTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING |
author_facet |
Geluntung Wafi, Muhammad |
author_sort |
Geluntung Wafi, Muhammad |
title |
INTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING |
title_short |
INTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING |
title_full |
INTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING |
title_fullStr |
INTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING |
title_full_unstemmed |
INTERPRETABLE MACHINE LEARNING FOR GEOMETRICAL VARIABLE SENSITIVITY ANALYSIS: APPLICATION TO AXIALLY COMPRESSED CYLINDRICAL BUCKLING |
title_sort |
interpretable machine learning for geometrical variable sensitivity analysis: application to axially compressed cylindrical buckling |
url |
https://digilib.itb.ac.id/gdl/view/75151 |
_version_ |
1822994174652186624 |