Generative AI for cementitious microstructure synthesis

Mar 14, 2025·
Minfei Liang (梁敏飞)
Minfei Liang (梁敏飞)
· 1 min read
Abstract
The microstructure of cement paste determines the overall performance of concrete and therefore obtaining the microstructure is an essential step in concrete studies. Traditional methods to obtain the microstructure, such as scanning electron microscopy (SEM) and X-ray computed tomography (XCT), are time-consuming and expensive. Herein we propose using Denoising Diffusion Probabilistic Models (DDPM) to synthesize realistic microstructures of cement paste. A DDPM with a U-Net architecture is employed to generate high-fidelity microstructure images that closely resemble those derived from SEM. The synthesized images are subjected to comprehensive image analysis, phase segmentation, and micromechanical analysis to validate their accuracy. Findings demonstrate that DDPM-generated microstructures not only visually match the original microstructures but also exhibit similar greyscale statistics, phase assemblage, phase connectivity, and micromechanical properties. This approach offers a cost-effective and efficient alternative for generating microstructure data, facilitating advanced multiscale computational studies of cement paste properties.
Type
Publication
In Developments in the Built Environment

The denoising process of generating a cement microstructure from Gaussian noise:

Image 1
The stress-strain curves of generated and original microstructures obtained from Lattice Fracture Models:
Image 2

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