Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304

In the material�s creep failure analysis, the difficulty of assessing the applied thermo-mechanical boundary conditions make it critically important. Numerous creep laws have been established over the years to predict the creep deformation, damage evolution and rupture of the materials subjected t...

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Main Authors: Sattar, M., Othman, A.R., Kamaruddin, S., Alam, M.A., Azeem, M.
Format: Article
Published: Trans Tech Publications Ltd 2021
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85119357647&doi=10.4028%2fwww.scientific.net%2fSSP.324.188&partnerID=40&md5=44b29cad0fba18d75e04a9fefd38a722
http://eprints.utp.edu.my/29379/
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spelling my.utp.eprints.293792022-03-25T01:46:59Z Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304 Sattar, M. Othman, A.R. Kamaruddin, S. Alam, M.A. Azeem, M. In the material�s creep failure analysis, the difficulty of assessing the applied thermo-mechanical boundary conditions make it critically important. Numerous creep laws have been established over the years to predict the creep deformation, damage evolution and rupture of the materials subjected to creep phenomena. The omega model developed by the American Petroleum Institute and Material Properties Council, is one of the most commonly used creep material models for numerical analysis over the years. It is good in defining the fitness of mechanical equipment for service engineering evaluation to ensure reliable service life of the equipment. The Omega model, however is not readily accessible and specifically incorporated for creep evaluation in FEA software codes and creep data is always scarce for the complete analysis. Therefore, extrapolation of creep behavior was performed by fitting various types of creep models with a limited amount of creep data and then simulating them, beyond the available data points. In conjunction with the Norton Bailey model, based on API-579/ASME FFS-1 standards, curve fitting technique was employed called regression analysis. From the MPC project omega model, different creep strain rates were obtained based on material, stress and temperature dependent data. In addition, as the strain rates increased exponentially with the increase in stresses, regression analysis was used for predicting creep parameters, that can curve fit the data into the embedded Norton Bailey model. The uncertainties in extrapolations and material constants has highlighted to necessitate conservative safety factors for design requirement. In this case study, FEA creep assessment was performed on the material SS-304 dog bone specimen, considered as material coupon to predict time dependent plastic deformation along with creep behavior at elevated temperatures and under constant stresses. The results indicated that the specimen underwent secondary creep deformation for most of the period. © 2021 Trans Tech Publications Ltd, Switzerland. Trans Tech Publications Ltd 2021 Article NonPeerReviewed https://www.scopus.com/inward/record.uri?eid=2-s2.0-85119357647&doi=10.4028%2fwww.scientific.net%2fSSP.324.188&partnerID=40&md5=44b29cad0fba18d75e04a9fefd38a722 Sattar, M. and Othman, A.R. and Kamaruddin, S. and Alam, M.A. and Azeem, M. (2021) Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304. Solid State Phenomena, 324 SS . pp. 188-197. http://eprints.utp.edu.my/29379/
institution Universiti Teknologi Petronas
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description In the material�s creep failure analysis, the difficulty of assessing the applied thermo-mechanical boundary conditions make it critically important. Numerous creep laws have been established over the years to predict the creep deformation, damage evolution and rupture of the materials subjected to creep phenomena. The omega model developed by the American Petroleum Institute and Material Properties Council, is one of the most commonly used creep material models for numerical analysis over the years. It is good in defining the fitness of mechanical equipment for service engineering evaluation to ensure reliable service life of the equipment. The Omega model, however is not readily accessible and specifically incorporated for creep evaluation in FEA software codes and creep data is always scarce for the complete analysis. Therefore, extrapolation of creep behavior was performed by fitting various types of creep models with a limited amount of creep data and then simulating them, beyond the available data points. In conjunction with the Norton Bailey model, based on API-579/ASME FFS-1 standards, curve fitting technique was employed called regression analysis. From the MPC project omega model, different creep strain rates were obtained based on material, stress and temperature dependent data. In addition, as the strain rates increased exponentially with the increase in stresses, regression analysis was used for predicting creep parameters, that can curve fit the data into the embedded Norton Bailey model. The uncertainties in extrapolations and material constants has highlighted to necessitate conservative safety factors for design requirement. In this case study, FEA creep assessment was performed on the material SS-304 dog bone specimen, considered as material coupon to predict time dependent plastic deformation along with creep behavior at elevated temperatures and under constant stresses. The results indicated that the specimen underwent secondary creep deformation for most of the period. © 2021 Trans Tech Publications Ltd, Switzerland.
format Article
author Sattar, M.
Othman, A.R.
Kamaruddin, S.
Alam, M.A.
Azeem, M.
spellingShingle Sattar, M.
Othman, A.R.
Kamaruddin, S.
Alam, M.A.
Azeem, M.
Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304
author_facet Sattar, M.
Othman, A.R.
Kamaruddin, S.
Alam, M.A.
Azeem, M.
author_sort Sattar, M.
title Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304
title_short Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304
title_full Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304
title_fullStr Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304
title_full_unstemmed Creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304
title_sort creep parameters determination by omega model to norton bailey law by regression analysis for austenitic steel ss-304
publisher Trans Tech Publications Ltd
publishDate 2021
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85119357647&doi=10.4028%2fwww.scientific.net%2fSSP.324.188&partnerID=40&md5=44b29cad0fba18d75e04a9fefd38a722
http://eprints.utp.edu.my/29379/
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