Application of machine learning models for estimating the material parameters for multiaxial fatigue strength calculation

Author:

Nagode Marko1,Papuga Jan2,Oman Simon1ORCID

Affiliation:

1. Faculty of Mechanical Engineering University of Ljubljana Ljubljana Slovenia

2. Faculty of Mechanical Engineering Czech Technical University in Prague Prague Czech Republic

Abstract

AbstractThis paper deals with a practical task of estimating missing material fatigue strengths required for the evaluation of multiaxial fatigue strength criteria, knowing other static or fatigue material parameters. Instead of searching for various analytical equations describing the dependencies between different material parameters, several machine learning models implemented in the caret R package are used here. The dataset used to train and test these models is based on the FatLim dataset with different material parameters, which has been redesigned for this new purpose. It is demonstrated that substantially more data points, such as were available in this study, are needed to achieve the goal set here. Although the results obtained at the current scale may be improved by the addition of new data points, the best performance of the random forest model rf and the worst performance of the pcr model are evident.

Funder

European Social Fund

Javna Agencija za Raziskovalno Dejavnost RS

Publisher

Wiley

Subject

Mechanical Engineering,Mechanics of Materials,General Materials Science

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