Litcius/Paper detail

Microstructure reconstruction using diffusion-based generative models

Kang‐Hyun Lee, Gun Jin Yun

2023Mechanics of Advanced Materials and Structures67 citationsDOI

Abstract

This paper proposes a microstructure reconstruction framework with denoising diffusion models for the first time. The novelty and strength of the proposed model lie in its universality and generality for the microstructure characterization and reconstruction (MCR) that can be applied to various types of composite materials. The applicability of the diffusion-based models is validated with several types of microstructures (e.g., polycrystalline alloy, carbonate, ceramics, copolymer, fiber composite, etc.) that have different morphological characteristics. Moreover, an implicit probabilistic model (which yields non-Markovian diffusion processes) is formulated to accelerate the sampling process, thereby controlling the computational cost considering the practicability and reliability.

Topics & Concepts

MicrostructureProbabilistic logicComputer scienceMaterials scienceArtificial intelligenceComposite materialComposite Material MechanicsAdvanced Mathematical Modeling in EngineeringModel Reduction and Neural Networks
Microstructure reconstruction using diffusion-based generative models | Litcius