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Inverse design of catalytic active sites via interpretable topology-based deep generative models

Bingxu Wang, Shisheng Zheng, Jie Wu, Jingyan Li, Feng Pan

2025npj Computational Materials14 citationsDOIOpen Access PDF

Abstract

Abstract The rational design of catalyst structures tailored to target performance is an ambitious and profoundly impactful goal. Key challenges include achieving refined representations of the three-dimensional structure of active sites and imbuing models with robust physical interpretability. Herein, we developed a topology-based variational autoencoder framework (PGH-VAEs) to enable the interpretable inverse design of catalytic active sites. Leveraging high-entropy alloys as a case, we demonstrate that persistent GLMY homology, an advanced topological algebraic analysis tool, enables the quantification of three-dimensional structural sensitivity and establishes correlations with adsorption properties. The multi-channel PGH-VAEs illustrate how coordination and ligand effects shape the latent space and influence the adsorption energies. Building on the inverse design results from PGH-VAEs, the strategies to optimize the composition and facet structures to maximize the proportion of optimal active sites are proposed. This interpretable inverse design framework can be extended to diverse systems, paving the way for AI-driven catalyst design.

Topics & Concepts

InverseGenerative grammarTopology (electrical circuits)Computer scienceGenerative modelArtificial intelligenceMathematicsCombinatoricsGeometryMachine Learning in Materials ScienceCatalysis and Hydrodesulfurization StudiesCatalysis and Oxidation Reactions
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