Zhou Nuodan, Liu Wen, Jan Faheem, Han ZhongKang, Li Bo
Shenyang National Laboratory for Materials Science, Institute of Metal Research, Chinese Academy of Sciences, Shenyang 110016, Liaoning, People's Republic of China.
School of Materials Science and Engineering, University of Science and Technology of China, Shenyang 110016, Liaoning, People's Republic of China.
ACS Omega. 2023 Jun 21;8(26):23982-23990. doi: 10.1021/acsomega.3c02675. eCollection 2023 Jul 4.
Platinum-based materials are the most widely used catalysts in propane direct dehydrogenation, which could achieve a balanced activity between both propane conversion and propene formation. One of the core issues of Pt catalysts is how to efficiently activate the strong C-H bond. It has been suggested that adding second metal promoters could greatly solve this problem. In the current work, first-principles calculations combined with machine learning are performed in order to obtain the most promising metal promoters and identify key descriptors for control performance. The combination of three different modes of adding metal promoters and two ratios between promoters and platinum sufficiently describes the system under investigation. The activity of propane activation and the formation of propene are reflected by the increase or decrease of the adsorption energy and C-H bond activation of propane and propene after the addition of promoters. The data of adsorption energy and kinetic barriers from first-principles calculations are streamed into five machine-learning methods including gradient boosting regressor (GBR), K neighbors regressor (KNR), random forest regressor (RFR), and AdaBoost regressor (ABR) together with the sure independence screening and sparsifying operator (SISSO). The metrics (RMSE and ) from different methods indicated that GBR and SISSO have the most optimal performance. Furthermore, it is found that some descriptors derived from the intrinsic properties of metal promoters can determine their properties. In the end, PtMo is identified as the most active catalyst. The present work not only provides a solid foundation for optimizing Pt catalysts but also provides a clear roadmap to screen metal alloy catalysts.
铂基材料是丙烷直接脱氢中应用最广泛的催化剂,它能在丙烷转化和丙烯生成之间实现活性平衡。铂催化剂的核心问题之一是如何有效活化强C-H键。有人提出添加第二金属助剂可大大解决这个问题。在当前工作中,进行了第一性原理计算与机器学习相结合的研究,以获得最有前景的金属助剂并确定控制性能的关键描述符。三种不同的添加金属助剂模式与助剂和铂之间的两种比例的组合充分描述了所研究的体系。丙烷活化活性和丙烯生成通过添加助剂后丙烷和丙烯的吸附能及C-H键活化的增加或减少来反映。来自第一性原理计算的吸附能和动力学势垒数据与确定独立筛选和稀疏化算子(SISSO)一起输入到包括梯度提升回归器(GBR)、K近邻回归器(KNR)、随机森林回归器(RFR)和自适应增强回归器(ABR)在内的五种机器学习方法中。不同方法的指标(RMSE和 )表明GBR和SISSO具有最优性能。此外,发现一些源自金属助剂固有性质的描述符可以决定它们的性能。最终,PtMo被确定为最具活性的催化剂。本工作不仅为优化铂催化剂提供了坚实基础,也为筛选金属合金催化剂提供了清晰的路线图。