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引用次数: 0
摘要
原子模型可以为现代化学、材料科学和生物学领域的新型催化剂设计提供见解。经典力场和 ab initio 计算已被广泛应用于分子模拟。然而,这些方法存在精度低或成本高的缺点。最近,机器学习原子间势(MLIPs)的发展越来越受欢迎,因为它们可以解决相关问题,并能以显著较低的计算成本提供相当精确的结果。本综述讨论了借助 MLIPs 建立催化系统原子模型的问题,展示了最近开发的 MLIP 模型以及催化系统建模的部分应用。我们还强调了 MLIPs 的最佳实践和挑战,并对催化领域 MLIPs 的未来工作进行了展望。
Machine Learning Interatomic Potentials for Heterogeneous Catalysis
Atomistic modeling can provide valuable insights into the design of novel heterogeneous catalysts as needed nowadays in the areas of, e. g., chemistry, materials science, and biology. Classical force fields and ab initio calculations have been widely adopted in molecular simulations. However, these methods usually suffer from the drawbacks of either low accuracy or high cost. Recently, the development of machine learning interatomic potentials (MLIPs) has become more and more popular as they can tackle the problems in question and can deliver rather accurate results at significantly lower computational cost. In this review, the atomistic modeling of catalytic systems with the aid of MLIPs is discussed, showcasing recently developed MLIP models and selected applications for the modeling of heterogeneous catalytic systems. We also highlight the best practices and challenges for MLIPs and give an outlook for future works on MLIPs in the field of heterogeneous catalysis.
期刊介绍:
Chemistry—A European Journal is a truly international journal with top quality contributions (2018 ISI Impact Factor: 5.16). It publishes a wide range of outstanding Reviews, Minireviews, Concepts, Full Papers, and Communications from all areas of chemistry and related fields.
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