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Research Article | Open Access | Just Accepted

Employing knowledge transfer in machine learning for wear assessment on synthetic and biological materials

Manuel HenkelOliver Lieleg1,2( )

1 School of Engineering and Design, Department of Materials Engineering, Technical University of Munich, Boltzmannstraße 15, 85748 Garching, Germany

2 Center for Protein Assemblies (CPA) and Munich Institute of Biomedical Engineering, Technical University of Munich, Ernst-Otto-Fischer Straße 8, 85748, Garching, Germany

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Abstract

Assessing wear is an indispensable task across almost all engineering disciplines, and automated wear assessment would be highly desirable. To determine the occurrence of wear, machine learning strategies have already been successfully applied. However, classifying different types of wear remains challenging. Additionally, data scarcity is a major bottle neck that limits the applicability of machine learning models in certain areas such as biomedical engineering. Here, we present a method to accurately classify surface topographies representing the three most common types of mechanically induced wear: abrasive, erosive, and adhesive wear. First, a Random Forest classifier is trained on a list of parameters determined from 3dimensional surface scans. Then, this method is adapted to a small data set obtained from damaged cartilage tissue by using knowledge transfer principles. In detail, two Random Forest models are trained separately: A base model on a large training data set obtained on synthetic samples, and a complementary model on the scarce cartilage data. After the separate training phases, the decision trees of both models are combined for inference on the scarce cartilage data. This model architecture provides a highly adaptable framework for assessing wear on biological samples and requires only a handful of training data. A similar approach might also be useful in many other areas of materials science where training data is difficult to obtain.

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Cite this article:
Henkel M, Lieleg O. Employing knowledge transfer in machine learning for wear assessment on synthetic and biological materials. Friction, 2024, https://doi.org/10.26599/FRICT.2025.9441039

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Received: 27 June 2024
Revised: 25 October 2024
Accepted: 12 November 2024
Available online: 18 November 2024

© The author(s) 2025

The articles published in this open access journal are distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/).

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