4.7 Article

Microstructure-sensitive notch root analysis for dwell fatigue in Ni-base superalloys

Journal

INTERNATIONAL JOURNAL OF FATIGUE
Volume 31, Issue 3, Pages 515-525

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.ijfatigue.2008.04.007

Keywords

Ni-base superalloys; Fatigue; Microstructure; Viscoplasticity models

Funding

  1. Pratt and Whitney (Project Manager Bob Grelotti)
  2. US Air Force VAATE Program

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Macroscopic viscoplastic constitutive models for gamma-gamma' Ni-base superalloys typically do not contain an explicit dependence on the underlying microstructure. Microstructure-sensitive models are of interest in many applications since microstructure can vary in components, whether intentional or not. In such cases, the use of experiments from one microstructure condition to fit macroscopic models may be too limiting. The principal microstructure attributes that can significantly affect the cyclic stress-strain response of gamma-gamma' Ni-base superalloys are the grain size and gamma' precipitate volume fraction and size distributions. An artificial neural network (ANN) is used to correlate the material parameters of a macroscale internal state variable cyclic viscoplasticity model with these microstructure attributes using a combination of limited experiments augmented by polycrystal plasticity calculations performed on other (virtual) microstructures within the range characterized experimentally. The trained model is applied to an example of a component fatigue notch root analysis with dwell periods at peak load to demonstrate the methodology and explore the potential impact of microstructure-sensitive constitutive models on life prediction for notched structures subjected to realistic load histories. (C) 2008 Elsevier Ltd. All rights reserved.

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