Predictive residual stress analysis in gear units: an artificial intelligence approach based on finite element data
Hamid Reza Bayat,
Bilawal Mustaq,
Axel Vötterl
Abstract:Determining residual stresses is essential for ensuring the safety and longevity of gear components. Traditional methods, such as analytical, numerical, and experimental approaches, are often costly, time-consuming, and sometimes destructive. This study proposes a new method to predict residual stresses in gear units using artificial intelligence based on data from finite element analysis. To achieve this, a commercial finite element tool models the heat treatment and carburization processes, grounded in therm… Show more
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