Xiran Cheng, Chenyu Wu, Jiayan Xu, Yulan Han, Wenbo Xie* and P. Hu*,
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引用次数: 0
摘要
本视角探讨了机器学习势(MLP)在异相催化研究中的整合,重点关注其在识别原位活性位点和增强对催化过程的理解方面的作用。MLP 利用来自高通量密度泛函理论 (DFT) 计算的大量数据库来训练模型,从而以接近 DFT 的精度预测原子构型、能量和作用力。这些功能使 MLP 能够处理更大的系统,并延长模拟时间,从而超越传统 ab initio 方法的限制。MLP 与全局优化算法相结合,可以对广阔的结构空间进行系统研究,为反应条件下催化剂表面结构建模做出了重大贡献。本综述旨在广泛介绍 MLP 的最新进展和应用 MLP 的实践指导,并展示几个 MLP 驱动的发现范例,这些发现涉及反应条件下的表面结构变化和异相催化中活性位点的性质。此外,还讨论了这种方法面临的普遍挑战。
Leveraging Machine Learning Potentials for In-Situ Searching of Active sites in Heterogeneous Catalysis
This Perspective explores the integration of machine learning potentials (MLPs) in the research of heterogeneous catalysis, focusing on their role in identifying in situ active sites and enhancing the understanding of catalytic processes. MLPs utilize extensive databases from high-throughput density functional theory (DFT) calculations to train models that predict atomic configurations, energies, and forces with near-DFT accuracy. These capabilities allow MLPs to handle significantly larger systems and extend simulation times beyond the limitations of traditional ab initio methods. Coupled with global optimization algorithms, MLPs enable systematic investigations across vast structural spaces, making substantial contributions to the modeling of catalyst surface structures under reactive conditions. The review aims to provide a broad introduction to recent advancements and practical guidance on employing MLPs and also showcases several exemplary cases of MLP-driven discoveries related to surface structure changes under reactive conditions and the nature of active sites in heterogeneous catalysis. The prevailing challenges faced by this approach are also discussed.
期刊介绍:
Chemical research focused on precision enables more controllable predictable and accurate outcomes which in turn drive innovation in measurement science sustainable materials information materials personalized medicines energy environmental science and countless other fields requiring chemical insights.Precision Chemistry provides a unique and highly focused publishing venue for fundamental applied and interdisciplinary research aiming to achieve precision calculation design synthesis manipulation measurement and manufacturing. It is committed to bringing together researchers from across the chemical sciences and the related scientific areas to showcase original research and critical reviews of exceptional quality significance and interest to the broad chemistry and scientific community.