模拟结构和覆盖对实际非均相催化剂反应性的影响

Benjamin W. J. Chen, Manos Mavrikakis
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引用次数: 0

摘要

当催化剂进行反应时,吸附剂常常密集地覆盖在催化剂表面,动态地改变催化剂的结构和反应活性。了解吸附诱导的现象,并在我们对改进催化剂的更广泛的探索中利用它们是一个重大的挑战,而这个挑战才刚刚开始得到解决。在这里,我们通过关注新兴的计算机建模方法,绘制了一条通往更深入理解这种现象的路径,这些方法将越来越多地结合机器学习技术。我们首先研究了催化剂表面的吸附如何导致整个纳米粒子局部甚至全局的结构变化,以及这如何影响它们的反应性。然后,我们评估当前的努力和在开发稳健和预测模拟建模这种行为的剩余挑战。最后,我们在四个关键领域提供了我们的观点-人工智能的集成,建立强大的催化信息学基础设施,与实验表征的协同作用,以及自适应建模框架-我们相信这些可以帮助克服根据这些复杂现象合理设计催化剂的剩余挑战。了解吸附诱导的现象,并在改进催化剂的设计中利用它们是一个令人兴奋的挑战,而这一挑战才刚刚开始得到解决。这篇综述探讨了如何通过前沿计算,结合原位和操作实验,揭示吸附物和催化剂之间的动态相互作用,以及如何将这些相互作用用于合理的催化剂设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Modeling the impact of structure and coverage on the reactivity of realistic heterogeneous catalysts

Modeling the impact of structure and coverage on the reactivity of realistic heterogeneous catalysts
Adsorbates often cover the surfaces of catalysts densely as they carry out reactions, dynamically altering their structure and reactivity. Understanding adsorbate-induced phenomena and harnessing them in our broader quest for improved catalysts is a substantial challenge that is only beginning to be addressed. Here we chart a path toward a deeper understanding of such phenomena by focusing on emerging in silico modeling methodologies, which will increasingly incorporate machine learning techniques. We first examine how adsorption on catalyst surfaces can lead to local and even global structural changes spanning entire nanoparticles, and how this affects their reactivity. We then evaluate current efforts and the remaining challenges in developing robust and predictive simulations for modeling such behavior. Last, we provide our perspectives in four critical areas—integration of artificial intelligence, building robust catalysis informatics infrastructure, synergism with experimental characterization, and adaptive modeling frameworks—that we believe can help surmount the remaining challenges in rationally designing catalysts in light of these complex phenomena. Understanding adsorbate-induced phenomena and leveraging them in the design of improved catalysts presents an exciting challenge that is only beginning to be addressed. This Review explores how cutting-edge computations, combined with in situ and operando experiments, can unravel the dynamic interplay between adsorbates and catalysts, and how these interactions can be used for rational catalyst design.
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