Denoising diffusion algorithm for inverse design of microstructures with
fine-tuned nonlinear material properties
- URL: http://arxiv.org/abs/2302.12881v1
- Date: Fri, 24 Feb 2023 20:31:48 GMT
- Title: Denoising diffusion algorithm for inverse design of microstructures with
fine-tuned nonlinear material properties
- Authors: Nikolaos N. Vlassis and WaiChing Sun
- Abstract summary: We introduce a denoising diffusion algorithm to discover microstructures with nonlinear fine-tuned properties.
A convolutional neural network surrogate is trained to replace high-fidelity finite element simulations to filter out prototypes outside the admissible range.
The algorithm is tested on the open-source mechanical MNIST data set.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, we introduce a denoising diffusion algorithm to discover
microstructures with nonlinear fine-tuned properties. Denoising diffusion
probabilistic models are generative models that use diffusion-based dynamics to
gradually denoise images and generate realistic synthetic samples. By learning
the reverse of a Markov diffusion process, we design an artificial intelligence
to efficiently manipulate the topology of microstructures to generate a massive
number of prototypes that exhibit constitutive responses sufficiently close to
designated nonlinear constitutive responses. To identify the subset of
microstructures with sufficiently precise fine-tuned properties, a
convolutional neural network surrogate is trained to replace high-fidelity
finite element simulations to filter out prototypes outside the admissible
range. The results of this study indicate that the denoising diffusion process
is capable of creating microstructures of fine-tuned nonlinear material
properties within the latent space of the training data. More importantly, the
resulting algorithm can be easily extended to incorporate additional
topological and geometric modifications by introducing high-dimensional
structures embedded in the latent space. The algorithm is tested on the
open-source mechanical MNIST data set. Consequently, this algorithm is not only
capable of performing inverse design of nonlinear effective media but also
learns the nonlinear structure-property map to quantitatively understand the
multiscale interplay among the geometry and topology and their effective
macroscopic properties.
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