双金属片
吞吐量
纳米颗粒
纳米技术
材料科学
生物传感器
工作流程
Boosting(机器学习)
计算机科学
化学
催化作用
人工智能
金属
生物化学
数据库
电信
冶金
无线
作者
Kaiwei Wan,Hui Wang,Xinghua Shi
出处
期刊:ACS Nano
[American Chemical Society]
日期:2024-05-02
卷期号:18 (19): 12367-12376
被引量:2
标识
DOI:10.1021/acsnano.4c01473
摘要
Bimetallic nanoparticles (NPs) with peroxidase-like (POD-like) activity play a crucial role in biosensing, disease treatment, environmental management, and other fields. However, their development is impeded by a vast range of tunable properties in components and structures, making the establishment of structure–effect relationships and the discovery of active materials challenging. Addressing this, we established robust scaling relationships by meticulously analyzing the catalytic reaction networks of pure metal NPs, which laid the volcano-shaped correlation between the activity and O* adsorption energy. Utilizing these relationships, we introduced an innovative and versatile descriptor of the NPs, which was then integrated into a machine learning-accelerated high-throughput computational workflow, significantly boosting the predictive accuracy for the POD-like activity of bimetallic NPs. Our methodological approach enabled the successful prediction of activities for 1260 bimetallic NPs, leading to the identification of several highly effective catalysts. Furthermore, we distilled several strategies for designing efficient bimetallic NPs based on our screening results.
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