Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression

Compositionally graded cylinders of Ti–Mn alloys were produced using the Laser Engineered Net Shaping (LENS™) technique, with Mn content varying from 0 to 12 wt.% along the cylinder axis. The cylinders were subjected to different post-build heat treatments to produce a large sample library of a–b mi...

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Main Authors: Xinyi Gong, Yuksel C. Yabansu, Peter C. Collins, Surya R. Kalidindi
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Materials
Subjects:
Online Access:https://www.mdpi.com/1996-1944/13/20/4641
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spelling doaj-dbab7c854af24bdbb0cf73837eae296d2020-11-25T02:26:15ZengMDPI AGMaterials1996-19442020-10-01134641464110.3390/ma13204641Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process RegressionXinyi Gong0Yuksel C. Yabansu1Peter C. Collins2Surya R. Kalidindi3School of Materials Science and Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0245, USAGeorge W. Woodruff School of Mechanical Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0405, USADepartment of Materials Science and Engineering, Iowa State University, Ames, IA 50011, USASchool of Materials Science and Engineering, Georgia Institute of Technology, Atlanta, GA 30332-0245, USACompositionally graded cylinders of Ti–Mn alloys were produced using the Laser Engineered Net Shaping (LENS™) technique, with Mn content varying from 0 to 12 wt.% along the cylinder axis. The cylinders were subjected to different post-build heat treatments to produce a large sample library of a–b microstructures. The microstructures in the sample library were studied using back-scattered electron (BSE) imaging in a scanning electron microscope (SEM), and their mechanical properties were evaluated using spherical indentation stress–strain protocols. These protocols revealed that the microstructures exhibited features with averaged chord lengths in the range of 0.17–1.78 mm, and beta content in the range of 20–83 vol.%. The estimated values of the Young’s moduli and tensile yield strengths from spherical indentation were found to vary in the ranges of 97–130 GPa and 828–1864 MPa, respectively. The combined use of the LENS technique along with the spherical indentation protocols was found to facilitate the rapid exploration of material and process spaces. Analyses of the correlations between the process conditions, several key microstructural features, and the measured material properties were performed via Gaussian process regression (GPR). These data-driven statistical models provided valuable insights into the underlying correlations between these variables.https://www.mdpi.com/1996-1944/13/20/4641high-throughput experimentationadditive manufacturingTi–Mn alloysspherical indentationstatistical analysisGaussian process regression
collection DOAJ
language English
format Article
sources DOAJ
author Xinyi Gong
Yuksel C. Yabansu
Peter C. Collins
Surya R. Kalidindi
spellingShingle Xinyi Gong
Yuksel C. Yabansu
Peter C. Collins
Surya R. Kalidindi
Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression
Materials
high-throughput experimentation
additive manufacturing
Ti–Mn alloys
spherical indentation
statistical analysis
Gaussian process regression
author_facet Xinyi Gong
Yuksel C. Yabansu
Peter C. Collins
Surya R. Kalidindi
author_sort Xinyi Gong
title Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression
title_short Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression
title_full Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression
title_fullStr Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression
title_full_unstemmed Evaluation of Ti–Mn Alloys for Additive Manufacturing Using High-Throughput Experimental Assays and Gaussian Process Regression
title_sort evaluation of ti–mn alloys for additive manufacturing using high-throughput experimental assays and gaussian process regression
publisher MDPI AG
series Materials
issn 1996-1944
publishDate 2020-10-01
description Compositionally graded cylinders of Ti–Mn alloys were produced using the Laser Engineered Net Shaping (LENS™) technique, with Mn content varying from 0 to 12 wt.% along the cylinder axis. The cylinders were subjected to different post-build heat treatments to produce a large sample library of a–b microstructures. The microstructures in the sample library were studied using back-scattered electron (BSE) imaging in a scanning electron microscope (SEM), and their mechanical properties were evaluated using spherical indentation stress–strain protocols. These protocols revealed that the microstructures exhibited features with averaged chord lengths in the range of 0.17–1.78 mm, and beta content in the range of 20–83 vol.%. The estimated values of the Young’s moduli and tensile yield strengths from spherical indentation were found to vary in the ranges of 97–130 GPa and 828–1864 MPa, respectively. The combined use of the LENS technique along with the spherical indentation protocols was found to facilitate the rapid exploration of material and process spaces. Analyses of the correlations between the process conditions, several key microstructural features, and the measured material properties were performed via Gaussian process regression (GPR). These data-driven statistical models provided valuable insights into the underlying correlations between these variables.
topic high-throughput experimentation
additive manufacturing
Ti–Mn alloys
spherical indentation
statistical analysis
Gaussian process regression
url https://www.mdpi.com/1996-1944/13/20/4641
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AT peterccollins evaluationoftimnalloysforadditivemanufacturingusinghighthroughputexperimentalassaysandgaussianprocessregression
AT suryarkalidindi evaluationoftimnalloysforadditivemanufacturingusinghighthroughputexperimentalassaysandgaussianprocessregression
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