Affiliation:
1. Faculty of Foundry Engineering, AGH University of Science and Technology
2. Department of Metal Science and Materials Technology, Kielce University of Technology
Abstract
Artificial intelligence is becoming commonplace in various research and industrial fields. In tribology, various
statistical and predictive methods allow an analysis of numerical data in the form of tribological characteristics
and surface structure geometry, to mention just two examples. With machine learning algorithms and neural
network models, continuous values can be predicted (regression), and individual groups can be classified.
In this article, we review the machine learning and neural networks application to the analysis of research
results in a broad context. Additionally, a case study is presented for selected machine learning tools based
on tribological tests of padding welds, from which the tribological characteristics (friction coefficient, linear
wear) and wear indicators (maximum wear depth, wear area) were determined. The study results were used
in exploratory data analysis to establish the correlation trends between selected parameters. They can also be
the basis for regression analysis using machine learning algorithms and neural networks. The article presents
a case study using these approaches in the tribological context and shows their ability to accurately and
effectively predict selected tribological characteristics.
Reference17 articles.
1. Rosenkranz A., Marian M., Profito F.J., Aragon N., Shah R.: The Use of Artificial Intelligence inTribology – A Perspective. Lubricants 2021, 9, 2, https://doi.org/10.3390/lubricants9010002.
2. Malinowski P.: Poradnik Odlewnika, Zastosowanie sztucznej inteligencji w odlewnictwie – w opracowaniu[Artificial Intelligence in Founding – in Polish].
3. Ciulli, E.: Tribology and industry: From the origins to 4.0. Front. Mech. Eng. 2019, 5, 103.
4. Zhang Z., Yin N., Chen S., Liu C.: Tribo-informatics: Concept, architecture, and case study. Friction2021, 9, pp. 642–655.
5. James G., Witten D., Hastie T., Tibshirani R.: An Introduction to Statistical Learning: With Applicationsin R; Springer: Basel, Switzerland 2017; ISBN 978-1-4614-7138-7.