双金属片
催化作用
化学
工作流程
反向
灵活性(工程)
工艺工程
扩散
分解
纳米技术
氨
材料设计
生化工程
氢
吸附
氨生产
化学工程
合金
多相催化
环境友好型
钥匙(锁)
制氢
化学过程
生成语法
生成模型
计算机科学
实验设计
设计要素和原则
作者
Jiaqi Yang,Kailong Ye,Shaohua Xie,Qiang Li,Charles Milhans,Fudong Liu,Fanglin Che
摘要
In the past decade, artificial intelligence and deep learning have played increasingly prominent roles in materials design and discovery. Among these, generative AI models, known for their ability to create unique and complex structures, have emerged as state-of-the-art tools for materials screening due to their high efficiency and low computational cost. In catalysis, one of the major challenges is identifying promising material candidates within an immense chemical space. This challenge can be addressed using generative approaches, such as diffusion-based inverse design models. In this study, we present a machine learning-guided workflow that employed a diffusion model for the inverse design of bimetallic alloy catalysts for low-carbon ammonia decomposition, a key reaction for ammonia emission control and sustainable hydrogen production. Catalyst candidates were evaluated using nitrogen adsorption energy as the key descriptor, inspired by multiscale modeling. The proposed workflow identified low-cost, environmentally friendly catalysts with excellent catalytic performance, which have been validated theoretically and experimentally. Our framework decoupled the generative and property-prediction components, enhancing both flexibility and accuracy in the catalytic material design process.
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