Litcius/Paper detail

Interpreting X-ray Diffraction Patterns of Metal–Organic Frameworks via Generative Artificial Intelligence

Bin Feng, Bingxu Wang, Linpeng Lv, Mingzheng Zhang, Zhefeng Chen, Feng Pan, Shunning Li

2025Journal of the American Chemical Society5 citationsDOI

Abstract

Metal-organic frameworks (MOFs) have attracted considerable attention owing to their multifaceted applications and structurally tunable characteristics. Powder X-ray diffraction (XRD) is an essential technique for high-throughput characterization of MOFs. However, it remains challenging to automatically interpret the XRD data due to the diversity and complexity of the geometric structures of MOFs. Herein, we propose a generative artificial intelligence framework based on the Stable-Diffusion architecture for deciphering the structures of MOFs from powder XRD patterns. This model, named as Xrd2Mof, has incorporated domain-specific knowledge by using a coarse-grained representation scheme, which leads to an accuracy of over 93% in identifying the ground truth MOF structure corresponding to the targeted XRD pattern. Xrd2Mof can be directly applied to a diverse range of MOF structures that cover nearly all types of framework topologies, thereby establishing a novel technological avenue for automated structural analysis of MOFs in self-driving laboratories.

Topics & Concepts

Representation (politics)Generative grammarCover (algebra)Characterization (materials science)Artificial intelligenceChemistryPowder diffractionComputer scienceDiffractionGround truthRange (aeronautics)NanotechnologyPattern recognition (psychology)Generative modelFeature (linguistics)Metal-Organic Frameworks: Synthesis and ApplicationsX-ray Diffraction in CrystallographyMachine Learning in Materials Science