LGMTRL-SCISep 1, 2025

CbLDM: A Diffusion Model for recovering nanostructure from pair distribution function

arXiv:2509.01370v3h-index: 4
Originality Incremental advance
AI Analysis

This addresses the problem of understanding nanomaterial structure-property relationships for materials science researchers, representing an incremental improvement with specific gains.

The paper tackles the nanostructure inverse problem by developing CbLDM, a conditional diffusion model that recovers nanostructures from pair distribution functions, achieving significantly higher prediction accuracy than existing models.

Nowadays, the nanostructure inverse problem is an attractive problem that helps researchers to understand the relationship between the properties and the structure of nanomaterials. This article focuses on the problem of using PDF to recover the nanostructure, which this article views as a conditional generation problem. This article propose a deep learning model CbLDM, Condition-based Latent Diffusion Model. Based on the original latent diffusion model, the sampling steps of the diffusion model are reduced and the sample generation efficiency is improved by using the conditional prior to estimate conditional posterior distribution, which is the approximated distribution of p(z|x). In addition, this article uses the Laplacian matrix instead of the distance matrix to recover the nanostructure, which can reduce the reconstruction error. Finally, this article compares CbLDM with existing models which were used to solve the nanostructure inverse problem, and find that CbLDM demonstrates significantly higher prediction accuracy than these models, which reflects the ability of CbLDM to solve the nanostructure inverse problem and the potential to cope with other continuous conditional generation tasks.

Foundations

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