Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment Condition

To evaluate the quality of cast aluminum alloys quantitatively and intuitively, quality index and quality map have been used. Quality index and quality map are to quantitatively evaluate the quality of cast aluminum alloys according to yield strength (YS), ultimate tensile strength (UTS), elongation...

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Main Authors: Won-Chol Yang, Ji-Yon Yang, Ryong-Chol Kim
Format: Article
Language:English
Published: Wiley 2023-01-01
Series:Advances in Materials Science and Engineering
Online Access:http://dx.doi.org/10.1155/2023/7069987
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author Won-Chol Yang
Ji-Yon Yang
Ryong-Chol Kim
author_facet Won-Chol Yang
Ji-Yon Yang
Ryong-Chol Kim
author_sort Won-Chol Yang
collection DOAJ
description To evaluate the quality of cast aluminum alloys quantitatively and intuitively, quality index and quality map have been used. Quality index and quality map are to quantitatively evaluate the quality of cast aluminum alloys according to yield strength (YS), ultimate tensile strength (UTS), elongation to fracture (Ef), and strain energy density (W). There are some quality indices such as Q, QR, QC, and Q0. The quality maps are generated to intuitively evaluate the quality level based on the quality indices. These quality indices and quality maps show the quality levels according to the pairs of tensile mechanical properties such as UTS and Ef, or YS and Ef, or YS and W. By using these quality maps, it is impossible to directly evaluate the quality levels according to the artificial aging heat treatment condition. We develop multiple quadratic polynomial regression models and quality maps for tensile mechanical properties and quality indices of the cast aluminum alloys according to artificial aging heat treatment condition. The performances of the regression models are evaluated using the mean absolute errors, mean relative errors, and coefficients of determination. The regression models and quality maps could be widely used to evaluate the quality of the cast aluminum alloys according to the aging heat treatment conditions and determine the rational aging heat treatment condition.
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spelling doaj-art-ea3acf06153b47c6ba5838f89a04439b2025-08-20T02:21:57ZengWileyAdvances in Materials Science and Engineering1687-84422023-01-01202310.1155/2023/7069987Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment ConditionWon-Chol Yang0Ji-Yon Yang1Ryong-Chol Kim2Faculty of Materials Science and TechnologyFaculty of Materials Science and TechnologyFaculty of Materials Science and TechnologyTo evaluate the quality of cast aluminum alloys quantitatively and intuitively, quality index and quality map have been used. Quality index and quality map are to quantitatively evaluate the quality of cast aluminum alloys according to yield strength (YS), ultimate tensile strength (UTS), elongation to fracture (Ef), and strain energy density (W). There are some quality indices such as Q, QR, QC, and Q0. The quality maps are generated to intuitively evaluate the quality level based on the quality indices. These quality indices and quality maps show the quality levels according to the pairs of tensile mechanical properties such as UTS and Ef, or YS and Ef, or YS and W. By using these quality maps, it is impossible to directly evaluate the quality levels according to the artificial aging heat treatment condition. We develop multiple quadratic polynomial regression models and quality maps for tensile mechanical properties and quality indices of the cast aluminum alloys according to artificial aging heat treatment condition. The performances of the regression models are evaluated using the mean absolute errors, mean relative errors, and coefficients of determination. The regression models and quality maps could be widely used to evaluate the quality of the cast aluminum alloys according to the aging heat treatment conditions and determine the rational aging heat treatment condition.http://dx.doi.org/10.1155/2023/7069987
spellingShingle Won-Chol Yang
Ji-Yon Yang
Ryong-Chol Kim
Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment Condition
Advances in Materials Science and Engineering
title Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment Condition
title_full Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment Condition
title_fullStr Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment Condition
title_full_unstemmed Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment Condition
title_short Multiple Quadratic Polynomial Regression Models and Quality Maps for Tensile Mechanical Properties and Quality Indices of Cast Aluminum Alloys according to Artificial Aging Heat Treatment Condition
title_sort multiple quadratic polynomial regression models and quality maps for tensile mechanical properties and quality indices of cast aluminum alloys according to artificial aging heat treatment condition
url http://dx.doi.org/10.1155/2023/7069987
work_keys_str_mv AT woncholyang multiplequadraticpolynomialregressionmodelsandqualitymapsfortensilemechanicalpropertiesandqualityindicesofcastaluminumalloysaccordingtoartificialagingheattreatmentcondition
AT jiyonyang multiplequadraticpolynomialregressionmodelsandqualitymapsfortensilemechanicalpropertiesandqualityindicesofcastaluminumalloysaccordingtoartificialagingheattreatmentcondition
AT ryongcholkim multiplequadraticpolynomialregressionmodelsandqualitymapsfortensilemechanicalpropertiesandqualityindicesofcastaluminumalloysaccordingtoartificialagingheattreatmentcondition