Data-driven topology design based on principal component analysis for 3D structural design problems
Jun Yang, Kentaro Yaji, Shintaro Yamasaki

TL;DR
This paper introduces a PCA-based data-driven topology design method that enhances the capability of deep generative models for 3D structural optimization, effectively addressing non-linearity and high-dimensional challenges.
Contribution
It proposes a novel PCA-based approach to improve data-driven topology design, enabling better handling of complex 3D structures without extensive training of deep generative models.
Findings
Successfully minimized maximum stress in 3D structures
Demonstrated effectiveness over traditional sensitivity-based methods
Validated practicability through various experiments
Abstract
Topology optimization is a structural design methodology widely utilized to address engineering challenges. However, sensitivity-based topology optimization methods struggle to solve optimization problems characterized by strong non-linearity. Leveraging the sensitivity-free nature and high capacity of deep generative models, data-driven topology design (DDTD) methodology is considered an effective solution to this problem. Despite this, the training effectiveness of deep generative models diminishes when input size exceeds a threshold while maintaining high degrees of freedom is crucial for accurately characterizing complex structures. To resolve the conflict between the both, we propose DDTD based on principal component analysis (PCA). Its core idea is to replace the direct training of deep generative models with material distributions by using a principal component score matrix…
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Taxonomy
TopicsManufacturing Process and Optimization · Topology Optimization in Engineering
MethodsPrincipal Components Analysis
