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Source code and simulation data for the prediction of the electrodeposition mechanism of nanostructured metallic coatings

Authors :
G. Rosano-Ortega
M. Bedolla-Hernández
F.J. Sánchez-Ruiz
J. Bedolla-Hernández
P.S. Schabes-Retchkiman
C.A. Vega-Lebrún
E. Vargas-Viveros
Source :
Data in Brief, Vol 48, Iss , Pp 109269- (2023)
Publication Year :
2023
Publisher :
Elsevier, 2023.

Abstract

This data article presents a simulation model based on quantum mechanics and energy potentials for obtaining simulation data that allows, from the perspective of materials informatics, the prediction of the electrodeposition mechanism for forming nanostructured metallic coatings. The development of the research is divided into two parts i) the formulation (Quantum mechanical model and Corrected model for electron prediction; using a modified Schrödinger equation) and ii) the implementation of the theoretical prediction model (Discretization of the model). For the simulation process, the finite element method (FEM) was used considering the equation of electric potential and electroneutrality with and without the inclusion of quantum leap. We also provide the code to perform QM simulations in CUDA®, and COMSOL® software, the simulation parameters, and data for two metallic arrangements of chromium nanoparticles (CrNPs) electrodeposited on commercial steel substrate. (CrNPs-AISI 1020 steel and CrNPs-A618 steel). Data collection shows the direct relationship between applied potential (VDC), current (A), concentration (ppm), and time (s) for the homogeneous formation of the coating during the electrodeposition process, as estimated by the theoretical model developed. Their potential reuse data is done to establish the precision of the theoretical model in predicting the formation and growth of nanostructured surface coatings with metallic nanoparticles to give surface-mechanical properties.

Details

Language :
English
ISSN :
23523409
Volume :
48
Issue :
109269-
Database :
Directory of Open Access Journals
Journal :
Data in Brief
Publication Type :
Academic Journal
Accession number :
edsdoj.87cf127d1e6a4f13809740996151d883
Document Type :
article
Full Text :
https://doi.org/10.1016/j.dib.2023.109269