Lattice design recommendation for multi-loading structure using machine learning
The drive to reduce material usage and improve properties of structures has led to additive manufacturing techniques being used to develop lattice structures. However, designing the optimal lattice for specific applications is challenging due to high computational resources to evaluate and thi...
Saved in:
Main Author: | |
---|---|
Other Authors: | |
Format: | Final Year Project |
Language: | English |
Published: |
Nanyang Technological University
2023
|
Subjects: | |
Online Access: | https://hdl.handle.net/10356/167781 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Nanyang Technological University |
Language: | English |
Summary: | The drive to reduce material usage and improve properties of structures has led to additive
manufacturing techniques being used to develop lattice structures. However, designing the optimal
lattice for specific applications is challenging due to high computational resources to evaluate and
this prompted the exploration of machine learning methods for lattice design.
In this study, a machine learning based approach will be implemented, leveraging on datasets of
lattice unit cells of different geometry and strut thickness and their corresponding mechanical
properties. Gaussian Process Regression outperformed Random Forest Regression in the
interpolated and extrapolated prediction of maximum total deformation in their default parameters
using cubic lattice unit cells dataset with an absolute percentage error difference of 0.54% and
8.39% compared to 11.40% and 36.54% respectively. Further analysis was done on the Gaussian
Process Regression to show that RQ kernel performed better than the RBF kernel for prediction of
maximum total deformation, maximum equivalent stress, maximum shear stress, maximum shear
elastic strain for cubic lattice using two features of pressure loads where the mean absolute
percentage difference does not exceed 1%. However, the prediction of three features for the cubic,
cubic with bcc, octa and octet lattice unit cells which included the strut thickness was not optimal.
To improve the performance, data augmentation techniques were implemented in conjunction with
grid search to optimize the hyperparameters. The results showed improvements in the
generalization errors of the predictions. Further studies are needed to explore the potential of other
machine learning models or techniques to enhance performance of the Gaussian Process
Regression model. However, the findings suggest that machine learning techniques hold potential
in the utilization of optimizing lattice designs. |
---|