# Deep Generative Design: Integration of Topology Optimization and   Generative Models

**Authors:** Sangeun Oh, Yongsu Jung, Seongsin Kim, Ikjin Lee, Namwoo Kang

arXiv: 1903.01548 · 2020-05-27

## TL;DR

This paper introduces an AI-driven design automation framework that combines topology optimization and deep generative models to produce diverse, aesthetic, and performance-optimized designs, validated through a 2D wheel case study.

## Contribution

It presents a novel integration of topology optimization with deep generative models for automated design exploration, enhancing diversity and robustness of generated designs.

## Key findings

- Generated designs show improved aesthetics and diversity.
- The framework effectively explores new design options from limited data.
- Anomaly detection assesses the novelty of generated designs.

## Abstract

Deep learning has recently been applied to various research areas of design optimization. This study presents the need and effectiveness of adopting deep learning for generative design (or design exploration) research area. This work proposes an artificial intelligent (AI)-based design automation framework that is capable of generating numerous design options which are not only aesthetic but also optimized for engineering performance. The proposed framework integrates topology optimization and deep generative models (e.g., generative adversarial networks (GANs)) in an iterative manner to explore new design options, thus generating a large number of designs starting from limited previous design data. In addition, anomaly detection can evaluate the novelty of generated designs, thus helping designers choose among design options. The 2D wheel design problem is applied as a case study for validation of the proposed framework. The framework manifests better aesthetics, diversity, and robustness of generated designs than previous generative design methods.

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Source: https://tomesphere.com/paper/1903.01548