Advanced electrocatalysts with unusual active sites for electrochemical water splitting
Electrochemical water splitting represents a promising technology for green hydrogen
production. To design advanced electrocatalysts, it is crucial to identify their active sites and …
production. To design advanced electrocatalysts, it is crucial to identify their active sites and …
Operando modeling of zeolite-catalyzed reactions using first-principles molecular dynamics simulations
Within this Perspective, we critically reflect on the role of first-principles molecular dynamics
(MD) simulations in unraveling the catalytic function within zeolites under operating …
(MD) simulations in unraveling the catalytic function within zeolites under operating …
[HTML][HTML] Comprehensive exploration of graphically defined reaction spaces
Existing reaction transition state (TS) databases are comparatively small and lack chemical
diversity. Here, this data gap has been addressed using the concept of a graphically-defined …
diversity. Here, this data gap has been addressed using the concept of a graphically-defined …
Accurate transition state generation with an object-aware equivariant elementary reaction diffusion model
Transition state search is key in chemistry for elucidating reaction mechanisms and
exploring reaction networks. The search for accurate 3D transition state structures, however …
exploring reaction networks. The search for accurate 3D transition state structures, however …
[HTML][HTML] Machine-learning driven global optimization of surface adsorbate geometries
The adsorption energies of molecular adsorbates on catalyst surfaces are key descriptors in
computational catalysis research. For the relatively large reaction intermediates frequently …
computational catalysis research. For the relatively large reaction intermediates frequently …
[HTML][HTML] A human-machine interface for automatic exploration of chemical reaction networks
Autonomous reaction network exploration algorithms offer a systematic approach to explore
mechanisms of complex chemical processes. However, the resulting reaction networks are …
mechanisms of complex chemical processes. However, the resulting reaction networks are …
[HTML][HTML] 2023 Roadmap on molecular modelling of electrochemical energy materials
New materials for electrochemical energy storage and conversion are the key to the
electrification and sustainable development of our modern societies. Molecular modelling …
electrification and sustainable development of our modern societies. Molecular modelling …
Generative ai and process systems engineering: The next frontier
This review article explores how emerging generative artificial intelligence (GenAI) models,
such as large language models (LLMs), can enhance solution methodologies within process …
such as large language models (LLMs), can enhance solution methodologies within process …
Staged Training of Machine-Learning Potentials from Small to Large Surface Unit Cells: Efficient Global Structure Determination of the RuO2(100)-c(2 × 2) …
Y Lee, J Timmermann, C Panosetti… - The Journal of …, 2023 - ACS Publications
Machine-learning (ML) potentials trained with density functional theory (DFT) data boost the
sampling capabilities in first-principles global surface structure determination. Particular data …
sampling capabilities in first-principles global surface structure determination. Particular data …
XPK: Toward Accurate and Efficient Microkinetic Modeling in Heterogeneous Catalysis
Z Chen, Z Liu, X Xu - ACS Catalysis, 2023 - ACS Publications
The traditional trial-and-error approach can no longer meet the surging demand for
developing catalysts to address the grand challenges of energy and environment, while …
developing catalysts to address the grand challenges of energy and environment, while …