Additive manufacturing (AM) has emerged as a very promising technology for producing complex metallic components with enhanced design flexibility. However, the mechanical properties and fatigue behavior of AM metals differ significantly from conventionally manufactured materials, thereby presenting challenges in accurately predicting their fatigue life. This study provides a comprehensive overview of recent developments and future trends in fatigue life prediction of AM metals, with a particular emphasis on machine learning (ML) modeling techniques. This review recalls recent developments and achievements in fatigue characteristics of AM metals, ML-based approaches for fatigue life prediction of AM metals, and non-ML-based methodologies for the same purpose. In particular, some commonly used regression and classification techniques for fatigue evaluation of AM metals are summarized and elaborated. The study intends to furnish researchers, engineers, and practitioners in the field of AM with a guidance for the accurate and efficient prediction of fatigue life in AM metal components.

Recent developments and future trends in fatigue life assessment of additively manufactured metals with particular emphasis on machine learning modeling / Zhan, Z.; He, X.; Tang, D.; Dang, L.; Li, A.; Xia, Q.; Berto, F.; Li, H.. - In: FATIGUE & FRACTURE OF ENGINEERING MATERIALS & STRUCTURES. - ISSN 8756-758X. - 46:12(2023), pp. 4425-4464. [10.1111/ffe.14152]

Recent developments and future trends in fatigue life assessment of additively manufactured metals with particular emphasis on machine learning modeling

Li A.;Berto F.
Penultimo
;
2023

Abstract

Additive manufacturing (AM) has emerged as a very promising technology for producing complex metallic components with enhanced design flexibility. However, the mechanical properties and fatigue behavior of AM metals differ significantly from conventionally manufactured materials, thereby presenting challenges in accurately predicting their fatigue life. This study provides a comprehensive overview of recent developments and future trends in fatigue life prediction of AM metals, with a particular emphasis on machine learning (ML) modeling techniques. This review recalls recent developments and achievements in fatigue characteristics of AM metals, ML-based approaches for fatigue life prediction of AM metals, and non-ML-based methodologies for the same purpose. In particular, some commonly used regression and classification techniques for fatigue evaluation of AM metals are summarized and elaborated. The study intends to furnish researchers, engineers, and practitioners in the field of AM with a guidance for the accurate and efficient prediction of fatigue life in AM metal components.
2023
additive manufacturing; life assessment; machine learning; metal fatigue
01 Pubblicazione su rivista::01g Articolo di rassegna (Review)
Recent developments and future trends in fatigue life assessment of additively manufactured metals with particular emphasis on machine learning modeling / Zhan, Z.; He, X.; Tang, D.; Dang, L.; Li, A.; Xia, Q.; Berto, F.; Li, H.. - In: FATIGUE & FRACTURE OF ENGINEERING MATERIALS & STRUCTURES. - ISSN 8756-758X. - 46:12(2023), pp. 4425-4464. [10.1111/ffe.14152]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1702159
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