吸附
密度泛函理论
化学
材料科学
计算化学
物理化学
作者
Siby Thomas,Felix Mayr,Ajith Kulangara Madam,Alessio Gagliardi
摘要
, resulting in improved sensitivity due to changes in the electronic properties. Additionally, we explored supervised ML regression models to evaluate their ability to act as a surrogate for the DFT-based adsorption energy calculation. Using both system statistics and smooth overlap of atomic position (SOAP)-based featurization, we observed that adsorption energies can be predicted with a mean absolute error of 0.10 eV.
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