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Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models

Copper and its related alloys are frequently adopted in contemporary industry due to their outstanding properties, which include mechanical, electrical, and electronic applications. Equal channel angular pressing (ECAP) is a novel method for producing ultrafine-grained or nanomaterials. Modeling mat...

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Autores principales: Shaban, Mahmoud, Alsharekh, Mohammed F., Alsunaydih, Fahad Nasser, Alateyah, Abdulrahman I., Alawad, Majed O., BaQais, Amal, Kamel, Mokhtar, Nassef, Ahmed, El-Hadek, Medhat A., El-Garaihy, Waleed H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9787604/
https://www.ncbi.nlm.nih.gov/pubmed/36556839
http://dx.doi.org/10.3390/ma15249032
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author Shaban, Mahmoud
Alsharekh, Mohammed F.
Alsunaydih, Fahad Nasser
Alateyah, Abdulrahman I.
Alawad, Majed O.
BaQais, Amal
Kamel, Mokhtar
Nassef, Ahmed
El-Hadek, Medhat A.
El-Garaihy, Waleed H.
author_facet Shaban, Mahmoud
Alsharekh, Mohammed F.
Alsunaydih, Fahad Nasser
Alateyah, Abdulrahman I.
Alawad, Majed O.
BaQais, Amal
Kamel, Mokhtar
Nassef, Ahmed
El-Hadek, Medhat A.
El-Garaihy, Waleed H.
author_sort Shaban, Mahmoud
collection PubMed
description Copper and its related alloys are frequently adopted in contemporary industry due to their outstanding properties, which include mechanical, electrical, and electronic applications. Equal channel angular pressing (ECAP) is a novel method for producing ultrafine-grained or nanomaterials. Modeling material design processes provides exceptionally efficient techniques for minimizing the efforts and time spent on experimental work to manufacture Cu or its associated alloys through the ECAP process. Although there have been various physical-based models, they are frequently coupled with several restrictions and still require significant time and effort to calibrate and enhance their accuracies. Machine learning (ML) techniques that rely primarily on data-driven models are a viable alternative modeling approach that has recently achieved breakthrough achievements. Several ML algorithms were used in the modeling training and testing phases of this work to imitate the influence of ECAP processing parameters on the mechanical and electrical characteristics of pure Cu, including the number of passes (N), ECAP die angle (φ), processing temperature, and route type. Several experiments were conducted on pure commercial Cu while altering the ECAP processing parameters settings. Linear regression, regression trees, ensembles of regression trees, the Gaussian process, support vector regression, and artificial neural networks are the ML algorithms used in this study. Model predictive performance was assessed using metrics such as root-mean-squared errors and R(2) scores. The methodologies presented here demonstrated that they could be effectively used to reduce experimental effort and time by reducing the number of experiments runs required to optimize the material attributes aimed at modeling the ECAP conditions for the following performance characteristics: impact toughness (I(T)), electrical conductivity (E(C)), hardness, and tensile characteristics of yield strength (σ(y)), ultimate tensile strength (σ(u)), and ductility (D(u))
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spelling pubmed-97876042022-12-24 Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models Shaban, Mahmoud Alsharekh, Mohammed F. Alsunaydih, Fahad Nasser Alateyah, Abdulrahman I. Alawad, Majed O. BaQais, Amal Kamel, Mokhtar Nassef, Ahmed El-Hadek, Medhat A. El-Garaihy, Waleed H. Materials (Basel) Article Copper and its related alloys are frequently adopted in contemporary industry due to their outstanding properties, which include mechanical, electrical, and electronic applications. Equal channel angular pressing (ECAP) is a novel method for producing ultrafine-grained or nanomaterials. Modeling material design processes provides exceptionally efficient techniques for minimizing the efforts and time spent on experimental work to manufacture Cu or its associated alloys through the ECAP process. Although there have been various physical-based models, they are frequently coupled with several restrictions and still require significant time and effort to calibrate and enhance their accuracies. Machine learning (ML) techniques that rely primarily on data-driven models are a viable alternative modeling approach that has recently achieved breakthrough achievements. Several ML algorithms were used in the modeling training and testing phases of this work to imitate the influence of ECAP processing parameters on the mechanical and electrical characteristics of pure Cu, including the number of passes (N), ECAP die angle (φ), processing temperature, and route type. Several experiments were conducted on pure commercial Cu while altering the ECAP processing parameters settings. Linear regression, regression trees, ensembles of regression trees, the Gaussian process, support vector regression, and artificial neural networks are the ML algorithms used in this study. Model predictive performance was assessed using metrics such as root-mean-squared errors and R(2) scores. The methodologies presented here demonstrated that they could be effectively used to reduce experimental effort and time by reducing the number of experiments runs required to optimize the material attributes aimed at modeling the ECAP conditions for the following performance characteristics: impact toughness (I(T)), electrical conductivity (E(C)), hardness, and tensile characteristics of yield strength (σ(y)), ultimate tensile strength (σ(u)), and ductility (D(u)) MDPI 2022-12-17 /pmc/articles/PMC9787604/ /pubmed/36556839 http://dx.doi.org/10.3390/ma15249032 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Shaban, Mahmoud
Alsharekh, Mohammed F.
Alsunaydih, Fahad Nasser
Alateyah, Abdulrahman I.
Alawad, Majed O.
BaQais, Amal
Kamel, Mokhtar
Nassef, Ahmed
El-Hadek, Medhat A.
El-Garaihy, Waleed H.
Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models
title Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models
title_full Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models
title_fullStr Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models
title_full_unstemmed Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models
title_short Investigation of the Effect of ECAP Parameters on Hardness, Tensile Properties, Impact Toughness, and Electrical Conductivity of Pure Cu through Machine Learning Predictive Models
title_sort investigation of the effect of ecap parameters on hardness, tensile properties, impact toughness, and electrical conductivity of pure cu through machine learning predictive models
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9787604/
https://www.ncbi.nlm.nih.gov/pubmed/36556839
http://dx.doi.org/10.3390/ma15249032
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