Machine learning in solid heterogeneous catalysis: Recent developments, challenges and perspectives

Y Guan, D Chaffart, G Liu, Z Tan, D Zhang… - Chemical Engineering …, 2022 - Elsevier
Recently, the availability of extensive catalysis-related data generated by experimental data
and theoretical calculations has promoted the development of machine learning (ML) …

A review on the different aspects and challenges of the dry reforming of methane (DRM) reaction

AGS Hussien, K Polychronopoulou - Nanomaterials, 2022 - mdpi.com
The dry reforming of methane (DRM) reaction is among the most popular catalytic reactions
for the production of syngas (H2/CO) with a H2: CO ratio favorable for the Fischer–Tropsch …

Deep dive into machine learning density functional theory for materials science and chemistry

L Fiedler, K Shah, M Bussmann, A Cangi - Physical Review Materials, 2022 - APS
With the growth of computational resources, the scope of electronic structure simulations has
increased greatly. Artificial intelligence and robust data analysis hold the promise to …

Perspective on computational reaction prediction using machine learning methods in heterogeneous catalysis

J Xu, XM Cao, P Hu - Physical Chemistry Chemical Physics, 2021 - pubs.rsc.org
Heterogeneous catalysis plays a significant role in the modern chemical industry. Towards
the rational design of novel catalysts, understanding reactions over surfaces is the most …

Data-driven design of electrocatalysts: principle, progress, and perspective

S Zhu, K Jiang, B Chen, S Zheng - Journal of Materials Chemistry A, 2023 - pubs.rsc.org
To achieve carbon neutrality, electrocatalysis has the potential to be applied in the
technological upgrading of numerous industries. Therefore, the search for high-performance …

Machine learning in experimental materials chemistry

B Selvaratnam, RT Koodali - Catalysis Today, 2021 - Elsevier
The development of advanced materials is an important aspect of modern life. However, the
discovery of novel materials involves searching the vast chemical space to find materials …

[HTML][HTML] Computational modeling of green hydrogen generation from photocatalytic H2S splitting: Overview and perspectives

Y Li, D Bahamon, M Sinnokrot, K Al-Ali… - … of Photochemistry and …, 2021 - Elsevier
Hydrogen plays an important role in developing a clean and sustainable future energy
scenario. Substantial efforts to produce green hydrogen from water splitting, biomass and …

Graphs and Kernelized Learning Applied to Interactions of Hydrogen with Doped Gold Nanoparticle Electrocatalysts

A Pihlajamäki, S Malola… - The Journal of …, 2023 - ACS Publications
Understanding hydrogen adsorption on metal nanoparticles is a key prerequisite for
designing efficient electrocatalysts for water splitting and the hydrogen evolution reaction …

Evaluation of Machine Learning Models on Electrochemical CO2 Reduction Using Human Curated Datasets

BR Farris, T Niang-Trost, MS Branicky… - ACS Sustainable …, 2022 - ACS Publications
Machine learning holds the potential to be a powerful tool to aid in designing catalytic and
sustainable chemical systems. However, it is important for experimental researchers to …

Machine learning approach for screening alloy surfaces for stability in catalytic reaction conditions

GA Sulley, J Hamm, MM Montemore - Journal of Physics: Energy, 2022 - iopscience.iop.org
A catalytic surface should be stable under reaction conditions to be effective. However, it
takes significant effort to screen many surfaces for their stability, as this requires intensive …