Machine Learning-Accelerated Discovery of A 2 BC 2 Ternary Electrides with Diverse Anionic Electron Densities.
Zhiqi WangYutong GongMatthew L EvansYujing YanShiyao WangNanxi MiaoRuiheng ZhengGian Marco RignaneseJunjie WangPublished in: Journal of the American Chemical Society (2023)
This study combines machine learning (ML) and high-throughput calculations to uncover new ternary electrides in the A 2 BC 2 family of compounds with the P 4/ mbm space group. Starting from a library of 214 known A 2 BC 2 phases, density functional theory calculations were used to compute the maximum value of the electron localization function, indicating that 42 are potential electrides. A model was then trained on this data set and used to predict the electride behavior of 14,437 hypothetical compounds generated by structural prototyping. Then, the stability and electride features of the 1254 electride candidates predicted by the model were carefully checked by high-throughput calculations. Through this tiered approach, 41 stable and 104 metastable new A 2 BC 2 electrides were predicted. Interestingly, all three kinds of electrides, i.e., electron-deficient, electron-neutral, and electron-rich electrides, are present in the set of predicted compounds. Three of the most promising new electrides (two electron-rich, Nd 2 ScSi 2 and La 2 YbGe 2 , and one electron-deficient Y 2 LiSi 2 ) were then successfully synthesized and characterized experimentally. Furthermore, the synthesized electrides were found to exhibit high catalytic activities for NH 3 synthesis under mild conditions when Ru-loaded. The electron-deficient Y 2 LiSi 2 , in particular, was seen to exhibit a good balance of catalytic activity and chemical stability, suggesting its future application in catalysis.