Shape related constraints aware generation of Mechanical Designs through Deep Convolutional GAN

10/22/2020
by   Waad Almasri, et al.
0

Mechanical product engineering often must comply with manufacturing or geometric constraints related to the shaping process. Mechanical design hence should rely on robust and fast tools to explore complex shapes, typically for design for additive manufacturing (DfAM). Topology optimization is such a powerful tool, yet integrating geometric constraints (shape-related) into it is hard. In this work, we leverage machine learning capability to handle complex geometric and spatial correlations to integrate into the mechanical design process geometry-related constraints at the conceptual level. More precisely, we explore the generative capabilities of recent Deep Learning architectures to enhance mechanical designs, typically for additive manufacturing. In this work, we build a generative Deep-Learning-based approach of topology optimization integrating mechanical conditions in addition to one typical manufacturing condition (the complexity of a design i.e. a geometrical condition). The approach is a dual-discriminator GAN: a generator that takes as input the mechanical and geometrical conditions and outputs a 2D structure and two discriminators, one to ensure that the generated structure follows the mechanical constraints and the other to assess the geometrical constraint. We also explore the generation of designs with a non-uniform material distribution and show promising results. Finally, We evaluate the generated designs with an objective evaluation of all wanted aspects: the mechanical as well as the geometrical constraints.

READ FULL TEXT

page 26

page 31

page 32

page 33

page 34

page 36

page 37

research
03/15/2022

Topology optimization including a model of the layer by layer additive manufacturing process

A topology optimization formulation including a model of the layer-by-la...
research
08/30/2022

Self-support topology optimization considering distortion for metal additive manufacturing

This paper proposes a self-support topology optimization method that con...
research
10/24/2020

A Characterization of 3D Printability

Additive manufacturing technologies are positioned to provide an unprece...
research
02/07/2023

Vibration-suppressed toolpath generation for kinematic and energy performance optimization in large dimension additive manufacturing

Product quality and sustainability in large dimension additive manufactu...
research
08/08/2023

Explicit Topology Optimization of Conforming Voronoi Foams

Topology optimization is able to maximally leverage the high DOFs and me...
research
01/14/2023

Diatom-inspired architected materials using language-based deep learning: Perception, transformation and manufacturing

Learning from nature has been a quest of humanity for millennia. While t...
research
02/26/2023

Multi-objective Generative Design of Three-Dimensional Composite Materials

Composite materials with 3D architectures are desirable in a variety of ...

Please sign up or login with your details

Forgot password? Click here to reset