npj Computational Materials

Papers
(The H4-Index of npj Computational Materials is 51. 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 2020-11-01 to 2024-11-01.)
ArticleCitations
Recent advances and applications of deep learning methods in materials science359
Atomistic Line Graph Neural Network for improved materials property predictions245
Machine learning for perovskite materials design and discovery231
The joint automated repository for various integrated simulations (JARVIS) for data-driven materials design224
Theoretical prediction of high melting temperature for a Mo–Ru–Ta–W HCP multiprincipal element alloy172
Small data machine learning in materials science145
Benchmarking graph neural networks for materials chemistry144
Accelerating materials discovery using artificial intelligence, high performance computing and robotics119
Machine learning in concrete science: applications, challenges, and best practices119
Mechanism of keyhole pore formation in metal additive manufacturing118
Phase-field modeling of grain evolutions in additive manufacturing from nucleation, growth, to coarsening117
Two-step machine learning enables optimized nanoparticle synthesis105
Accelerating phase-field-based microstructure evolution predictions via surrogate models trained by machine learning methods102
Performant implementation of the atomic cluster expansion (PACE) and application to copper and silicon101
Two-dimensional Stiefel-Whitney insulators in liganded Xenes99
Machine learning the Hubbard U parameter in DFT+U using Bayesian optimization96
Explainable machine learning in materials science94
Understanding and design of metallic alloys guided by phase-field simulations92
Deep learning framework for material design space exploration using active transfer learning and data augmentation92
MatSciBERT: A materials domain language model for text mining and information extraction86
Compositionally restricted attention-based network for materials property predictions86
Machine-learned interatomic potentials for alloys and alloy phase diagrams86
A review of the recent progress in battery informatics84
Accurate and scalable graph neural network force field and molecular dynamics with direct force architecture81
Band degeneracy enhanced thermoelectric performance in layered oxyselenides by first-principles calculations81
Thermal transport and phase transitions of zirconia by on-the-fly machine-learned interatomic potentials79
Benchmarking the performance of Bayesian optimization across multiple experimental materials science domains77
Sign-reversible valley-dependent Berry phase effects in 2D valley-half-semiconductors75
Predominance of non-adiabatic effects in zero-point renormalization of the electronic band gap75
Teaching solid mechanics to artificial intelligence—a fast solver for heterogeneous materials74
Computational screening study of double transition metal carbonitrides M′2M″CNO2-MXene as catalysts for hydrogen evolution reaction72
Understanding X-ray absorption spectra by means of descriptors and machine learning algorithms72
Representations of molecules and materials for interpolation of quantum-mechanical simulations via machine learning71
Restructured single parabolic band model for quick analysis in thermoelectricity71
High-throughput predictions of metal–organic framework electronic properties: theoretical challenges, graph neural networks, and data exploration70
Application of phase-field method in rechargeable batteries68
Constrained crystals deep convolutional generative adversarial network for the inverse design of crystal structures68
Magnetic Moment Tensor Potentials for collinear spin-polarized materials reproduce different magnetic states of bcc Fe65
Graph neural networks for an accurate and interpretable prediction of the properties of polycrystalline materials65
Machine learning property prediction for organic photovoltaic devices63
Mechanistic data-driven prediction of as-built mechanical properties in metal additive manufacturing62
Computational high-throughput screening of alloy nanoclusters for electrocatalytic hydrogen evolution61
High performance Wannier interpolation of Berry curvature and related quantities with WannierBerri code61
Nanodevices engineering and spin transport properties of MnBi2Te4 monolayer60
Learning two-phase microstructure evolution using neural operators and autoencoder architectures60
Chemical hardness-driven interpretable machine learning approach for rapid search of photocatalysts56
Electrically and magnetically switchable nonlinear photocurrent in РТ-symmetric magnetic topological quantum materials56
Design high-entropy carbide ceramics from machine learning55
The origin of the lattice thermal conductivity enhancement at the ferroelectric phase transition in GeTe53
Damage mechanism identification in composites via machine learning and acoustic emission53
Interpretable machine-learning strategy for soft-magnetic property and thermal stability in Fe-based metallic glasses52
Predicting stable crystalline compounds using chemical similarity51
Ab initio molecular dynamics and materials design for embedded phase-change memory51
Materials property prediction for limited datasets enabled by feature selection and joint learning with MODNet51
2D spontaneous valley polarization from inversion symmetric single-layer lattices51
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