npj Computational Materials

Papers
(The H4-Index of npj Computational Materials is 64. The table below lists those papers that are above that threshold based on CrossRef citation counts [max. 250 papers]. The publications cover those that have been published in the past four years, i.e., from 2022-05-01 to 2026-05-01.)
ArticleCitations
Electron-mediated anharmonicity and its role in the Raman spectrum of graphene642
Networking autonomous material exploration systems through transfer learning325
Dynamical phase-field model of cavity electromagnonic systems286
Strain and ligand effects in the 1-D limit: reactivity of steps261
Sparse representation for machine learning the properties of defects in 2D materials199
Active learning of effective Hamiltonian for super-large-scale atomic structures186
Multiscale kinetic model of ethylene oligomerization in Ni-NU-1000 metal-organic framework164
Insights into oxygen diffusion in rare earth disilicate environmental barrier coatings162
FALCON: fast active learning for machine learning potentials in atomistic and ab initio molecular dynamics simulations128
Structure and properties of graphullerene: a semiconducting two-dimensional C60 crystal120
Active learning to overcome exponential-wall problem for effective structure prediction of chemical-disordered materials119
Accurate piezoelectric tensor prediction with equivariant attention tensor graph neural network119
Exploring the role of nonlocal Coulomb interactions in perovskite transition metal oxides118
Making atomistic materials calculations accessible with the AiiDAlab Quantum ESPRESSO app113
Probing multi-dimensional composition spaces in search of strong metallic alloys113
cmtj: Simulation package for analysis of multilayer spintronic devices109
SA-GAT-SR: self-adaptable graph attention networks with symbolic regression for high-fidelity material property prediction108
AI-assisted rapid crystal structure generation towards a target local environment107
Crosslinking degree variations enable programming and controlling soft fracture via sideways cracking100
Bayesian optimization acquisition functions for accelerated search of cluster expansion convex hull of multi-component alloys100
Facilitated the discovery of new γ/γ′ Co-based superalloys by combining first-principles and machine learning99
Prediction of intrinsic multiferroicity and large valley polarization in a layered Janus material97
Ultra-fast interpretable machine-learning potentials96
Origin of suppressed ferroelectricity in κ-Ga2O3: interplay between polarization and lattice domain walls94
Dynamical mean field theory for real materials on a quantum computer93
JARVIS-Leaderboard: a large scale benchmark of materials design methods91
Identifying the ground state structures of point defects in solids91
First principles methodology for studying magnetotransport in narrow gap semiconductors with ZrTe5 example90
Vibrationally resolved optical excitations of the nitrogen-vacancy center in diamond89
Machine learning-aided first-principles calculations of redox potentials88
Advancing organic photovoltaic materials by machine learning-driven design with polymer-unit fingerprints87
Accelerated identification of equilibrium structures of multicomponent inorganic crystals using machine learning potentials87
Author Correction: Active learning for accelerated design of layered materials87
Quantum anomalous hall effect in collinear antiferromagnetism87
A critical examination of robustness and generalizability of machine learning prediction of materials properties86
Machine learning enhanced analysis of EBSD data for texture representation86
RadonPy: automated physical property calculation using all-atom classical molecular dynamics simulations for polymer informatics84
Ultrafast laser-driven topological spin textures on a 2D magnet84
MatSciBERT: A materials domain language model for text mining and information extraction84
Machine learning surrogate for 3D phase-field modeling of ferroelectric tip-induced electrical switching80
Known Unknowns: Out-of-Distribution Property Prediction in Materials and Molecules80
Machine-learning guided search for phonon-mediated superconductivity in boron and carbon compounds78
Combined study of phase transitions in the P2-type NaXNi1/3Mn2/3O2 cathode material: experimental, ab-initio and multiphase-field results76
From electrons to phase diagrams with machine learning potentials using pyiron based automated workflows75
Accelerating electron diffraction analysis using graph neural networks and attention mechanisms74
Revealing the evolution of order in materials microstructures using multi-modal computer vision73
Electro-chemo-mechanical modelling of structural battery composite full cells72
Tunable sliding ferroelectricity and magnetoelectric coupling in two-dimensional multiferroic MnSe materials72
High-throughput parameter estimation from experimental data using Bayesian Inference with accelerated sampling72
High-speed and low-power molecular dynamics processing unit (MDPU) with ab initio accuracy70
Raman signatures of single point defects in hexagonal boron nitride quantum emitters70
Machine learning-enabled atomistic insights into phase boundary engineering of solid-solution ferroelectrics70
High-throughput discovery of fluoride-ion conductors via a decoupled, dynamic, and iterative (DDI) framework70
Graph atomic cluster expansion for foundational machine learning interatomic potentials70
Combining feature-based approaches with graph neural networks and symbolic regression for synergistic performance and interpretability68
A machine learning approach to designing and understanding tough, degradable polyamides68
Tracking perovskite crystallization via deep learning-based feature detection on 2D X-ray scattering data67
Machine vision-based detections of transparent chemical vessels toward the safe automation of material synthesis66
From Corpus to Innovation: Advancing Organic Solar Cell Design with Large Language Models66
Machine learning revealed giant thermal conductivity reduction by strong phonon localization in two-angle disordered twisted multilayer graphene66
Discovering novel lead-free solder alloy by multi-objective Bayesian active learning with experimental uncertainty66
Benchmarking universal machine learning interatomic potentials for supported nanoparticles: decoupling energy accuracy from structural exploration66
First principles study of dielectric properties of ferroelectric perovskite oxides with extended Hubbard interactions66
Enhancing the efficiency of time-dependent density functional theory calculations of dynamic response properties64
Prediction of the Cu oxidation state from EELS and XAS spectra using supervised machine learning64
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