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- Title
Modelling fatigue uncertainty by means of nonconstant variance neural networks.
- Authors
Nashed, Mohamad Shadi; Renno, Jamil; Mohamed, M. Shadi
- Abstract
The modelling of fatigue using machine learning (ML) has been gaining traction in the engineering community. Among ML techniques, the use of probabilistic neural networks (PNNs) has recently emerged as a candidate for modelling fatigue applications. In this paper, we use PNNs with nonconstant variance to model fatigue. We present two case studies to demonstrate the developed approach. First, we model the fatigue life of cover‐plated beams under constant amplitude loading, and then we model the relationship between random vibration velocity and equivalent stress in process pipework. The two case studies demonstrate that PNNs with nonconstant variance can model the distribution of the data while also considering the variability of both distribution parameters (mean and standard deviation). This shows the potential of PNNs with nonconstant variance in modelling fatigue applications. All the data and code used in this paper are openly available. Highlights: Probabilistic neural networks with nonconstant variance are used to model fatigue.Two case studies are presented to demonstrate the developed approach.The proposed method accurately models fatigue and accounts for aleatoric uncertainty.
- Subjects
CONCRETE fatigue; RANDOM vibration; TRACTION (Engineering); STRAINS &; stresses (Mechanics); FATIGUE life; DATA distribution; MATERIAL fatigue
- Publication
Fatigue & Fracture of Engineering Materials & Structures, 2022, Vol 45, Issue 9, p2468
- ISSN
8756-758X
- Publication type
Article
- DOI
10.1111/ffe.13759