Follow
David Montes de Oca Zapiain
Title
Cited by
Cited by
Year
Accelerating phase-field-based microstructure evolution predictions via surrogate models trained by machine learning methods
D Montes de Oca Zapiain, JA Stewart, R Dingreville
npj Computational Materials 7 (1), 3, 2021
1122021
Training data selection for accuracy and transferability of interatomic potentials
D Montes de Oca Zapiain, MA Wood, N Lubbers, CZ Pereyra, ...
npj Computational Materials 8 (1), 189, 2022
202022
Reduced-order microstructure-sensitive models for damage initiation in two-phase composites
D Montes de Oca Zapiain, E Popova, F Abdeljawad, JW Foulk, ...
Integrating Materials and Manufacturing Innovation 7, 97-115, 2018
192018
Microscopic and macroscopic characterization of grain boundary energy and strength in silicon carbide via machine-learning techniques
M Guziewski, D Montes de Oca Zapiain, R Dingreville, SP Coleman
ACS Applied Materials & Interfaces 13 (2), 3311-3324, 2021
182021
Prediction of microscale plastic strain rate fields in two-phase composites subjected to an arbitrary macroscale strain rate using the materials knowledge system framework
DM de Oca Zapiain, E Popova, SR Kalidindi
Acta Materialia 141, 230-240, 2017
182017
Localization models for the plastic response of polycrystalline materials using the material knowledge systems framework
DM de Oca Zapiain, SR Kalidindi
Modelling and Simulation in Materials Science and Engineering 27 (7), 074008, 2019
172019
FitSNAP: Atomistic machine learning with LAMMPS
A Rohskopf, C Sievers, N Lubbers, MA Cusentino, J Goff, J Janssen, ...
Journal of Open Source Software 8 (84), 5118, 2023
152023
Predicting plastic anisotropy using crystal plasticity and Bayesian neural network surrogate models
DM de Oca Zapiain, H Lim, T Park, F Pourboghrat
Materials Science and Engineering: A 833, 142472, 2022
132022
Characterizing the tensile strength of metastable grain boundaries in silicon carbide using machine learning
D Montes de Oca Zapiain, M Guziewski, SP Coleman, R Dingreville
The Journal of Physical Chemistry C 124 (45), 24809-24821, 2020
102020
Texture-sensitive prediction of micro-spring performance using Gaussian process models calibrated to finite element simulations
A Venkatraman, DM de Oca Zapiain, H Lim, SR Kalidindi
Materials & Design 197, 109198, 2021
92021
Establishing a data-driven strength model for β-tin by performing symbolic regression using genetic programming
DM de Oca Zapiain, JMD Lane, JD Carroll, Z Casias, CC Battaile, ...
Computational Materials Science 218, 111967, 2023
52023
Convolutional neural networks for the localization of plastic velocity gradient tensor in polycrystalline microstructures
D Montes de Oca Zapiain, A Shanker, SR Kalidindi
Journal of Engineering Materials and Technology 144 (1), 011004, 2022
52022
Reduced-order models for ranking damage initiation in dual-phase composites using Bayesian neural networks
A Venkatraman, D Montes de Oca Zapiain, SR Kalidindi
JOM 72, 4359-4369, 2020
52020
Accelerating FEM-Based Corrosion Predictions Using Machine Learning
DM de Oca Zapiain, D Maestas, M Roop, P Noel, M Melia, R Katona
Journal of The Electrochemical Society 171 (1), 011504, 2024
12024
Development of a Deep Learning Model for Capturing Plastic Anisotropy–Texture Linkage
T Park, D Montes de Oca Zapiain, F Pourboghrat, H Lim
JOM 75 (12), 5466-5478, 2023
12023
2-Phase composite damage initiation sensitivity dataset
DM de Oca Zapiain, F Abdeljawad, H Lim, E Popova, SR Kalidindi
12017
Accelerated Predictions of Charge Density Evolution in MD simulations Using Machine Learning
A Venkatraman, M Wilson, D Montes de Oca Zapiain
Bulletin of the American Physical Society, 2024
2024
In-situ x-ray diffraction of bismuth loaded to 4.4 GPa via shock reverberation
N Brown, P Specht, J Custer, M Rodriguez, T Ao, N Valdez, B Donohoe, ...
Bulletin of the American Physical Society, 2024
2024
An Active Learning Framework for the Rapid Assessment of Galvanic Corrosion
DM de Oca Zapiain, A Venkatraman, R Katona, D Maestas, M Roop, ...
2024
Calibration of thermal spray microstructure simulations using Bayesian optimization
DM de Oca Zapiain, A Tran, NW Moore, TM Rodgers
Computational Materials Science 235, 112845, 2024
2024
The system can't perform the operation now. Try again later.
Articles 1–20