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  4. Prediction of fatigue failure in small-scale butt-welded joints with explainable machine learning
 
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Prediction of fatigue failure in small-scale butt-welded joints with explainable machine learning

Citation Link: https://doi.org/10.15480/882.4357
Publikationstyp
Journal Article
Date Issued
2021-11
Sprache
English
Author(s)
Braun, Moritz  orcid-logo
Kellner, Leon  orcid-logo
Schreiber, Sarah  
Ehlers, Sören  
Institut
Konstruktion und Festigkeit von Schiffen M-10  
TORE-DOI
10.15480/882.4357
TORE-URI
http://hdl.handle.net/11420/12778
Journal
Procedia structural integrity  
Volume
38
Issue
C
Start Page
182
End Page
191
Citation
Procedia Structural Integrity 38 (C) : 182-191 (2022)
Contribution to Conference
9th Edition of the International conference on Fatigue Design, Fatigue Design 2021  
Publisher DOI
10.1016/j.prostr.2022.03.019
Scopus ID
2-s2.0-85126595254
Publisher
Elsevier
Butt-welded joints are common in many industries. The fatigue behavior of such joints depends on numerous factors, e.g. load level, local weld geometry, or parent material strength. To make things worse, these factors often interact, yet mutual influence can hardly be quantified by multivariate studies, i.e. varying one factor at a time out of many factors, due to the large number of required tests and the statistical nature of weld geometry. Consequently, fatigue assessment of such joints often deviates significantly between prediction and experimental result. Thus, alternative methods are desirable in order to take various influencing factors into account. To this end, machine learning techniques were used to predict failure locations and number of cycles to failure of fatigue tests performed on small-scale butt-welded joint specimens. In addition to accurate predictions, an understanding of importance and mutual influence of the factors is desired, e.g. a ranking of the most important factors; however, capturing the influence of several possibly interacting factors usually requires complex nonlinear machine learning models. We used gradient boosted trees. Since these are black box models, the SHapley Additive exPlanations (SHAP) framework was used to explain the predictions, i.e. identify influential features and their interactions. Lastly, the model explanations are linked back to domain knowledge.
Subjects
explainable AI
Fatigue life prediction
Fatigue strength
gradient boosted trees
Machine learning models
SHAP
Welded joints
MLE@TUHH
DDC Class
600: Technik
Lizenz
https://creativecommons.org/licenses/by-nc-nd/4.0/
Publication version
publishedVersion
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