Publications of Johannes Margraf

Journal Article (22)

2024
Journal Article
Rein, Valentina, Hao Gao, Hendrik Heenen, Wissal Sghaier, Anastasios C. Manikas, Christos Tsakonas, Mehdi Saedi, Johannes Margraf, Costas Galiotis, Gilles Renaud, Oleg V. Konovalov, Irene M.N. Groot, Karsten Reuter and Maciej Jankowski: Operando Characterization and Molecular Simulations Reveal the Growth Kinetics of Graphene on Liquid Copper During Chemical Vapor Deposition.
Journal Article
Xu, Wenbin, Elias Diesen, Tianwei He, Karsten Reuter and Johannes Margraf: Discovering High Entropy Alloy Electrocatalysts in Vast Composition Spaces with Multiobjective Optimization.
2023
Journal Article
Chen, Ke, Christian Kunkel, Bingqing Cheng, Karsten Reuter and Johannes Margraf: Physics-inspired machine learning of localized intensive properties.
Journal Article
Jung, Hyunwook, Lena Sauerland, Sina Stocker, Karsten Reuter and Johannes Margraf: Machine-learning driven global optimization of surface adsorbate geometries.
Journal Article
Margraf, Johannes: Science-Driven Atomistic Machine Learning.
Journal Article
Margraf, Johannes, Hyunwook Jung, Christoph Scheurer and Karsten Reuter: Exploring catalytic reaction networks with machine learning.
Journal Article
Stocker, Sina, Hyunwook Jung, Gábor Csányi, Claude Franklin Goldsmith, Karsten Reuter and Johannes Margraf: Estimating Free Energy Barriers for Heterogeneous Catalytic Reactions with Machine Learning Potentials and Umbrella Integration.
Journal Article
Vondrák, Martin, Karsten Reuter and Johannes Margraf: q-pac: A Python package for machine learned charge equilibration models.
2022
Journal Article
Chen, Ke, Christian Kunkel, Karsten Reuter and Johannes Margraf: Reorganization energies of flexible organic molecules as a challenging target for machine learning enhanced virtual screening.
Journal Article
Keller, Elisabeth, Theodoros Tsatsoulis, Karsten Reuter and Johannes Margraf: Regularized second-order correlation methods for extended systems.
Journal Article
Kube, Pierre, Jinhu Dong, Nuria Sánchez Bastardo, Holger Ruland, Robert Schlögl, Johannes Margraf, Karsten Reuter and Annette Trunschke: Green synthesis of propylene oxide directly from propane.
Journal Article
Levin, Nikita, Johannes Margraf, Jozef Lengyel, Karsten Reuter, Martin Tschurl and Ulrich Heiz: CO2-Activation by size-selected tantalum cluster cations (Ta1–16+): thermalization governing reaction selectivity.
Journal Article
Margraf, Johannes, Zachary W. Ulissi, Yousung Jung and Karsten Reuter: Heterogeneous Catalysis in Grammar School.
Journal Article
Staacke, Carsten, Tabea Huss, Johannes Margraf, Karsten Reuter and Christoph Scheurer: Tackling Structural Complexity in Li2 S-P2S5 Solid-State Electrolytes Using Machine Learning Potentials.
Journal Article
Staacke, Carsten, Simon Wengert, Christian Kunkel, Gábor Csányi, Karsten Reuter and Johannes Margraf: Kernel charge equilibration: efficient and accurate prediction of molecular dipole moments with a machine-learning enhanced electron density model.
Journal Article
Stocker, Sina, Johannes Gasteiger, Florian Becker, Stephan Günnemann and Johannes Margraf: How robust are modern graph neural network potentials in long and hot molecular dynamics simulations?
Journal Article
Türk, Hanna, Elisabetta Landini, Christian Kunkel, Johannes Margraf and Karsten Reuter: Assessing Deep Generative Models in Chemical Composition Space.
Journal Article
Wengert, Simon, Gábor Csányi, Karsten Reuter and Johannes Margraf: A Hybrid Machine Learning Approach for Structure Stability Prediction in Molecular Co-crystal Screenings.
2021
Journal Article
Li, Haobo, Yunxia Liu, Ke Chen, Johannes Margraf, Youyong Li and Karsten Reuter: Subgroup Discovery Points to the Prominent Role of Charge Transfer in Breaking Nitrogen Scaling Relations at Single-Atom Catalysts on VS2.
Journal Article
Staacke, Carsten, Hendrik Heenen, Christoph Scheurer, Gábor Csányi , Karsten Reuter and Johannes Margraf: On the Role of Long-Range Electrostatics in Machine-Learned Interatomic Potentials for Complex Battery Materials.
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