| Literature DB >> 30406644 |
Gihan Panapitiya1, Guillermo Avendaño-Franco1, Pengju Ren2,3, Xiaodong Wen2,3, Yongwang Li2,3, James P Lewis1,2.
Abstract
We propose a machine-learning model, based on the random-forest method, to predict CO adsorption in thiolate protected nanoclusters. Two phases of feature selection and training, based initially on the Au25 nanocluster, are utilized in our model. One advantage to a machine-learning approach is that correlations in defined features disentangle relationships among the various structural parameters. For example, in Au25, we find that features based on the distribution of Ag atoms relative to the CO adsorption site are the most important in predicting adsorption energies. Our machine-learning model is easily extended to other Au-based nanoclusters, and we demonstrate predictions about CO adsorption on Ag-alloyed Au36 and Au133 nanoclusters.Entities:
Year: 2018 PMID: 30406644 DOI: 10.1021/jacs.8b08800
Source DB: PubMed Journal: J Am Chem Soc ISSN: 0002-7863 Impact factor: 15.419