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  5. Numerical and Analytical Models for Fatigue Analysis of Wire Arc Additively Manufactured Steel

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Preprint
en
2024

Numerical and Analytical Models for Fatigue Analysis of Wire Arc Additively Manufactured Steel

0 Datasets

0 Files

en
2024
DOI: 10.2139/ssrn.4838602

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Leroy Gardner
Leroy Gardner

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Niels Pichler
Lingzhen Li
Cheng Huang
+5 more

Abstract

This paper addresses the modelling of the static and fatigue behaviour of as-built and machined wire arc additively manufactured (WAAM) steel. Based on 3D laser scans of WAAM coupons, finite element (FE) models are developed and validated against experimental results obtained using digital image correlation (DIC). The FE method, though accurate, is computationally expensive, since very fine meshes are required to model the as-built undulating surfaces of the WAAM coupons. Therefore, two simplified analytical models, one based on bending and the other on surface curvature, are proposed for the local stress analysis of the WAAM coupons, allowing for the influence of material thickness. The proposed methods are shown to predict the local stresses in the WAAM steel with reasonable accuracy and high computational efficiency. The obtained local stresses are further used for the prediction of the fatigue crack initiation and fatigue life of WAAM steel, achieving good agreement with the experimental results. Two fatigue design classes of FAT 145 and FAT 135 with endurance limits of 270 MPa and 250 MPa, respectively, are derived for WAAM ER70S-6 steel using the proposed models.

How to cite this publication

Niels Pichler, Lingzhen Li, Cheng Huang, Davide Ferarri, Maryam Mohri, Eleni Chatzi, Leroy Gardner, Elyas Ghafoori (2024). Numerical and Analytical Models for Fatigue Analysis of Wire Arc Additively Manufactured Steel. , DOI: https://doi.org/10.2139/ssrn.4838602.

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Publication Details

Type

Preprint

Year

2024

Authors

8

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.2139/ssrn.4838602

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