Literature DB >> 28837771

Predicting Catalytic Activity of Nanoparticles by a DFT-Aided Machine-Learning Algorithm.

Ryosuke Jinnouchi1, Ryoji Asahi1.   

Abstract

Catalytic activities are often dominated by a few specific surface sites, and designing active sites is the key to realize high-performance heterogeneous catalysts. The great triumphs of modern surface science lead to reproduce catalytic reaction rates by modeling the arrangement of surface atoms with well-defined single-crystal surfaces. However, this method has limitations in the case for highly inhomogeneous atomic configurations such as on alloy nanoparticles with atomic-scale defects, where the arrangement cannot be decomposed into single crystals. Here, we propose a universal machine-learning scheme using a local similarity kernel, which allows interrogation of catalytic activities based on local atomic configurations. We then apply it to direct NO decomposition on RhAu alloy nanoparticles. The proposed method can efficiently predict energetics of catalytic reactions on nanoparticles using DFT data on single crystals, and its combination with kinetic analysis can provide detailed information on structures of active sites and size- and composition-dependent catalytic activities.

Year:  2017        PMID: 28837771     DOI: 10.1021/acs.jpclett.7b02010

Source DB:  PubMed          Journal:  J Phys Chem Lett        ISSN: 1948-7185            Impact factor:   6.475


  9 in total

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Review 4.  Applications of Machine Learning in Alloy Catalysts: Rational Selection and Future Development of Descriptors.

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Journal:  Adv Sci (Weinh)       Date:  2022-03-01       Impact factor: 17.521

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Review 6.  Towards operando computational modeling in heterogeneous catalysis.

Authors:  Lukáš Grajciar; Christopher J Heard; Anton A Bondarenko; Mikhail V Polynski; Jittima Meeprasert; Evgeny A Pidko; Petr Nachtigall
Journal:  Chem Soc Rev       Date:  2018-11-12       Impact factor: 54.564

7.  Quantum-mechanical transition-state model combined with machine learning provides catalyst design features for selective Cr olefin oligomerization.

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8.  The TensorMol-0.1 model chemistry: a neural network augmented with long-range physics.

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Journal:  Chem Sci       Date:  2018-01-18       Impact factor: 9.825

Review 9.  Functional and Material Properties in Nanocatalyst Design: A Data Handling and Sharing Problem.

Authors:  Daniel Lach; Uladzislau Zhdan; Adam Smolinski; Jaroslaw Polanski
Journal:  Int J Mol Sci       Date:  2021-05-13       Impact factor: 5.923

  9 in total

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