Volume 6B: Materials and Fabrication 2018
DOI: 10.1115/pvp2018-84538
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StrainLife: Efficient Fatigue Life Data Generation for an Enhanced Ageing Assessment of Metallic Components

Abstract: Pressurized pipes in hot water environment are subject to ageing mechanisms such as fatigue and environmental-assisted fatigue. These ageing effects limit the in-service time of components due to the possibility of crack formation, initiation and growth. Furthermore, uncertainties in life time assessment evolve as a consequence of increased scattering and resulting deviations in material properties. The lack of appropriate information requires safety-oriented design and conservative margins in the acceptable o… Show more

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“…Some other parameters, e.g., strain, 50 hardness indentation, 45 electrical resistance, 46,51 and magnetic Barkhausen noise signal, 52 have also been shown to be applicable in both these methods and their derivative approaches. In recent years, the physically based StressLife 53 and StrainLife 54 prediction models were also proposed by introducing the morrow empirical relation to the short‐term evaluation procedure.…”
Section: Fatigue Life Prediction Methodsmentioning
confidence: 99%
“…Some other parameters, e.g., strain, 50 hardness indentation, 45 electrical resistance, 46,51 and magnetic Barkhausen noise signal, 52 have also been shown to be applicable in both these methods and their derivative approaches. In recent years, the physically based StressLife 53 and StrainLife 54 prediction models were also proposed by introducing the morrow empirical relation to the short‐term evaluation procedure.…”
Section: Fatigue Life Prediction Methodsmentioning
confidence: 99%