Bridging Fidelities to Predict Nanoindentation Tip Radii Using Interpretable Deep Learning Models

Author:

Trost Claus O. W.,Zak Stanislav,Schaffer Sebastian,Saringer Christian,Exl Lukas,Cordill Megan J.ORCID

Abstract

AbstractAs the need for miniaturized structural and functional materials has increased, the need for precise materials characterizaton has also expanded. Nanoindentation is a popular method that can be used to measure material mechanical behavior which enables high-throughput experiments and, in some cases, can also provide images of the indented area through scanning. Both indenting and scanning can cause tip wear that can influence the measurements. Therefore, precise characterization of tip radii is needed to improve data evaluation. A data fusion method is introduced which uses finite element simulations and experimental data to estimate the tip radius in situ in a meaningful way using an interpretable multi-fidelity deep learning approach. By interpreting the machine learning models, it is shown that the approaches are able to accurately capture physical indentation phenomena.

Funder

Österreichische Forschungsförderungsgesellschaft

Austrian Science Fund

Österreichische Akademie der Wissenschaften

Publisher

Springer Science and Business Media LLC

Subject

General Engineering,General Materials Science

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