Modelling fatigue crack growth in shape memory alloys

We present a phase field-based framework for modelling fatigue damage in Shape Memory Alloys (SMAs). The model combines, for the first time: (i) a generalized phase field description of fracture, incorporating multiple phase field formulations, (ii) a constitutive model for SMAs, based on a Drucker–...

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Main Authors: Simoes, M, Braithwaite, C, Makaya, A, Martinez-Paneda, E
格式: Journal article
語言:English
出版: Wiley 2022
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author Simoes, M
Braithwaite, C
Makaya, A
Martinez-Paneda, E
author_facet Simoes, M
Braithwaite, C
Makaya, A
Martinez-Paneda, E
author_sort Simoes, M
collection OXFORD
description We present a phase field-based framework for modelling fatigue damage in Shape Memory Alloys (SMAs). The model combines, for the first time: (i) a generalized phase field description of fracture, incorporating multiple phase field formulations, (ii) a constitutive model for SMAs, based on a Drucker–Prager form of the transformation surface, and (iii) a fatigue degradation function, with damage driven by both elastic and transformation strains. The theoretical framework is numerically implemented, and the resulting linearized system is solved using a robust monolithic scheme, based on quasi-Newton methods. Several paradigmatic boundary value problems are addressed to gain insight into the role of transformation stresses, stress-strain hysteresis, and temperature. Namely, we compute Δε − N curves, quantify Paris law parameters, and predict fatigue crack growth rates in several geometries. In addition, the potential of the model for solving large-scale problems is demonstrated by simulating the fatigue failure of a 3D lattice structure.
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spelling oxford-uuid:29f9ecd1-e848-4f2f-adc5-b39feb19e5322024-02-28T14:18:00ZModelling fatigue crack growth in shape memory alloysJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:29f9ecd1-e848-4f2f-adc5-b39feb19e532EnglishSymplectic ElementsWiley2022Simoes, MBraithwaite, CMakaya, AMartinez-Paneda, EWe present a phase field-based framework for modelling fatigue damage in Shape Memory Alloys (SMAs). The model combines, for the first time: (i) a generalized phase field description of fracture, incorporating multiple phase field formulations, (ii) a constitutive model for SMAs, based on a Drucker–Prager form of the transformation surface, and (iii) a fatigue degradation function, with damage driven by both elastic and transformation strains. The theoretical framework is numerically implemented, and the resulting linearized system is solved using a robust monolithic scheme, based on quasi-Newton methods. Several paradigmatic boundary value problems are addressed to gain insight into the role of transformation stresses, stress-strain hysteresis, and temperature. Namely, we compute Δε − N curves, quantify Paris law parameters, and predict fatigue crack growth rates in several geometries. In addition, the potential of the model for solving large-scale problems is demonstrated by simulating the fatigue failure of a 3D lattice structure.
spellingShingle Simoes, M
Braithwaite, C
Makaya, A
Martinez-Paneda, E
Modelling fatigue crack growth in shape memory alloys
title Modelling fatigue crack growth in shape memory alloys
title_full Modelling fatigue crack growth in shape memory alloys
title_fullStr Modelling fatigue crack growth in shape memory alloys
title_full_unstemmed Modelling fatigue crack growth in shape memory alloys
title_short Modelling fatigue crack growth in shape memory alloys
title_sort modelling fatigue crack growth in shape memory alloys
work_keys_str_mv AT simoesm modellingfatiguecrackgrowthinshapememoryalloys
AT braithwaitec modellingfatiguecrackgrowthinshapememoryalloys
AT makayaa modellingfatiguecrackgrowthinshapememoryalloys
AT martinezpanedae modellingfatiguecrackgrowthinshapememoryalloys