作为潜在电催化剂的稳定、低成本金属氧化物的数据挖掘

Xue Jia, Hao Li
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引用次数: 0

摘要

金属氧化物(MO)是一类电催化剂,可作为贵金属的低成本替代品。然而,许多金属氧化物在电化学操作条件下稳定性较差。材料项目是迄今为止最大的计算材料数据库之一,其中的Pourbaix图对于评估潜在电催化剂的水稳定性至关重要。在此,我们从材料项目数据库中进行了数据挖掘,为工业上重要的电催化反应(包括氧还原反应 (ORR)、氧进化反应 (OER)、氯进化反应 (CER)、氢进化反应 (HER) 和氮还原反应 (NRR))确定潜在的稳定 MO。我们发现,许多 MOs 在电催化条件下具有潜在的稳定性,尤其是在中性和碱性介质中。最后,我们总结了那些之前已通过实验合成但尚未作为电催化剂进行探索的 MOs。这种全面的评估有效地缩小了探索范围,促进了对材料稳定性的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data mining of stable, low-cost metal oxides as potential electrocatalysts

Metal oxides (MOs) are a class of electrocatalysts which could be the low-cost alternatives to precious metals. However, many MOs suffer from poor stability under electrochemical operating conditions. The Materials Project stands out as one of the largest computational materials databases to date, where the bulk Pourbaix diagrams are essential in assessing the aqueous stability of potential electrocatalysts. Herein, we performed data mining from the Materials Project database to identify potentially stable MOs for industrially important electrocatalytic reactions including oxygen reduction reaction (ORR), oxygen evolution reaction (OER), chlorine evolution reaction (CER), hydrogen evolution reaction (HER), and nitrogen reduction reaction (NRR). We found that many MOs can be potentially stable under electrocatalytic conditions, especially in neutral and alkaline medium. Finally, we summarized those MOs that had been previously experimentally synthesized but haven’t been explored as electrocatalysts. This comprehensive assessment effectively narrows down the exploration scope and facilitates the evaluation of material stability.

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Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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