A machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloys

Abstract The class of 9–12% Cr ferritic-martensitic alloys (FMA) and austenitic stainless steels have received considerable attention due to their numerous applications in high temperature power generation industries. To design high strength steels with prolonged service life requires a thorough und...

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Main Authors: Osman Mamun, Madison Wenzlick, Jeffrey Hawk, Ram Devanathan
Format: Article
Language:English
Published: Nature Publishing Group 2021-03-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-83694-z
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spelling doaj-094eb6936e194c509aa2d4fd340cdf772021-03-11T12:18:39ZengNature Publishing GroupScientific Reports2045-23222021-03-011111910.1038/s41598-021-83694-zA machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloysOsman Mamun0Madison Wenzlick1Jeffrey Hawk2Ram Devanathan3Energy and Environment Directorate, Pacific Northwest National LaboratoryMaterials Performance Division, National Energy Technology LaboratoryMaterials Performance Division, National Energy Technology LaboratoryEnergy and Environment Directorate, Pacific Northwest National LaboratoryAbstract The class of 9–12% Cr ferritic-martensitic alloys (FMA) and austenitic stainless steels have received considerable attention due to their numerous applications in high temperature power generation industries. To design high strength steels with prolonged service life requires a thorough understanding of the long-term properties, e.g., creep rupture strength, rupture life, etc., as a function of the chemical composition and processing parameters that govern the microstructural characteristics. In this article, the creep rupture strength of both 9–12% Cr FMA and austenitic stainless steel has been parameterized using curated experimental datasets with a gradient boosting machine. The trained model has been cross validated against unseen test data and achieved high predictive performance in terms of correlation coefficient ( $$R^{2} > 0.98 $$ R 2 > 0.98 for 9–12% Cr FMA and $$R^{2} > 0.95 $$ R 2 > 0.95 for austenitic stainless steel) thus bypassing the need for additional comprehensive tensile test campaigns or physical theoretical calculations. Furthermore, the feature importance has been computed using the Shapley value analysis to understand the complex interplay of different features.https://doi.org/10.1038/s41598-021-83694-z
collection DOAJ
language English
format Article
sources DOAJ
author Osman Mamun
Madison Wenzlick
Jeffrey Hawk
Ram Devanathan
spellingShingle Osman Mamun
Madison Wenzlick
Jeffrey Hawk
Ram Devanathan
A machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloys
Scientific Reports
author_facet Osman Mamun
Madison Wenzlick
Jeffrey Hawk
Ram Devanathan
author_sort Osman Mamun
title A machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloys
title_short A machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloys
title_full A machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloys
title_fullStr A machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloys
title_full_unstemmed A machine learning aided interpretable model for rupture strength prediction in Fe-based martensitic and austenitic alloys
title_sort machine learning aided interpretable model for rupture strength prediction in fe-based martensitic and austenitic alloys
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-03-01
description Abstract The class of 9–12% Cr ferritic-martensitic alloys (FMA) and austenitic stainless steels have received considerable attention due to their numerous applications in high temperature power generation industries. To design high strength steels with prolonged service life requires a thorough understanding of the long-term properties, e.g., creep rupture strength, rupture life, etc., as a function of the chemical composition and processing parameters that govern the microstructural characteristics. In this article, the creep rupture strength of both 9–12% Cr FMA and austenitic stainless steel has been parameterized using curated experimental datasets with a gradient boosting machine. The trained model has been cross validated against unseen test data and achieved high predictive performance in terms of correlation coefficient ( $$R^{2} > 0.98 $$ R 2 > 0.98 for 9–12% Cr FMA and $$R^{2} > 0.95 $$ R 2 > 0.95 for austenitic stainless steel) thus bypassing the need for additional comprehensive tensile test campaigns or physical theoretical calculations. Furthermore, the feature importance has been computed using the Shapley value analysis to understand the complex interplay of different features.
url https://doi.org/10.1038/s41598-021-83694-z
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