Mohamad Syazwan Zafwan, Mohamad Suffian and Syahiir, Kamil and Ahmad Kamal Ariffin, Mohd Ihsan and Abdul Hadi, Azman and Israr, M. Ibrahim and Kazuhiro, Suga (2024) A Surrogate Model's Decision Tree Method Evaluation for Uncertainty Quantification on a Finite Element Structure via a Fuzzy-Random Approach. Journal of Current Science and Technology, 14 (3). pp. 1-15. ISSN 2630-0656
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Abstract
A novel additive manufacturing method (AM)) constructs a three-dimensional model from a computer-aided design by adding material layer by layer. This technique produces a lightweight end product with complex geometries and has gained recognition among industrial players. Nonetheless, the mechanical properties and geometry components are the uncertainties that prevail in its structures. An alternative approach using the Finite Element Method (FEM) to analyse these uncertainties demands extensive computational effort and time consumption. Therefore, a machine learning (ML) tool using the surrogate modelling technique offers an alternative way to provide and predict simulation outcomes. This study applies two surrogate modelling approaches, the decision tree (DT) and the Gaussian process regression (GPR) methods. Output data from a FEM simulation with uncertainty elements are obtained for the training purposes of the surrogate models. Both ML methods can predict simulation results with high precision. Both approaches obtained an excellent coefficient of determination value, R2 of 0.998, and Root Mean Square Error, RMSE of 0.012, successfully reducing time consumption and computational effort. The DT method shows better robustness when compared to the GPR method. A value change in the input parameter significantly impacts the surrogate model's prediction performance. An adequate quantity of data input for the training phase of both surrogate models exhibits the FEM results with the presence of uncertainty and robustness.
Item Type: | Article |
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Uncontrolled Keywords: | decision tree; finite element method; gaussian process regression; machine learning; surrogate model; uncertainty analysis. |
Subjects: | T Technology > TJ Mechanical engineering and machinery |
Divisions: | Academic Faculties, Institutes and Centres > Faculty of Engineering Faculties, Institutes, Centres > Faculty of Engineering |
Depositing User: | Mohamad Suffian |
Date Deposited: | 11 Sep 2024 08:05 |
Last Modified: | 11 Sep 2024 08:05 |
URI: | http://ir.unimas.my/id/eprint/46001 |
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