A unified creep and fatigue life prediction approach for 316 austenitic stainless steel using machine and deep learning
Harsh Kumar Bhardwaj,
Mukul Shukla
Abstract:Abstract316 Austenitic stainless steel (AusSS) is extensively utilized in high‐temperature industrial applications such as boiler tubes and nuclear reactor pressure vessels. These components commonly experience failure under high‐temperature and high‐pressure conditions, attributed to either creep or fatigue. Existing classical models for creep and fatigue life prediction focus on a singular failure mode (either creep or fatigue) and consider physical features only. This study aims to develop a unified life pr… Show more
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