Bayesian inference-based decision of fatigue life model for metal additive manufacturing considering effects of build orientation and post-processing
  • Doh, Jaehyeok
  • Raju, Nandhini
  • Raghavan, Nagarajan
  • Rosen, David W.
  • Kim, Samyeon
Citations

WEB OF SCIENCE

24
Citations

SCOPUS

25

초록

This study proposes a Bayesian inference-based decision framework to quantify the physical uncertainty based on fatigue life tests on maraging steel according to post-processing treatments and build orientations. Uncertainty quantification of fatigue life models is performed to determine the most suitable models for the metal additive manufacturing process by employing Bayesian inference. To select one of the fatigue life models, we introduce a weighted-equivalent metric (WEM) to compare the evaluation results from different statistical metrics. By evaluating the WEM value, the logistic model and Zhurkov fatigue life model are identified as the suitable fatigue life models for maraging steel.

키워드

Bayesian inferenceMetal additive manufacturingFatigue life modelUncertainty quantificationWeighted-Equivalent Metric (WEM)MARAGING-STEEL 300MECHANICAL-PROPERTIESBEHAVIORPERFORMANCEEVOLUTIONSTRENGTHFRACTURE
제목
Bayesian inference-based decision of fatigue life model for metal additive manufacturing considering effects of build orientation and post-processing
저자
Doh, JaehyeokRaju, NandhiniRaghavan, NagarajanRosen, David W.Kim, Samyeon
DOI
10.1016/j.ijfatigue.2021.106535
발행일
2022-02
유형
Article
저널명
International Journal of Fatigue
155