REGRESSION USING MACHINE LEARNING AND NEURAL NETWORKS FOR STUDYING TRIBOLOGICAL PROPERTIES OF WEAR-RESISTANT LAYERS

Q3 Engineering
P. Malinowski, J. Kasińska
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引用次数: 0

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.
使用机器学习和神经网络的回归来研究耐磨层的摩擦学性能
人工智能在各个研究和工业领域变得越来越普遍。在摩擦学中,各种统计和预测方法允许以摩擦学特性和表面结构几何形状的形式分析数值数据,仅举两个例子。通过机器学习算法和神经网络模型,可以预测连续值(回归),并且可以对单个组进行分类。在这篇文章中,我们回顾了机器学习和神经网络在研究结果分析中的广泛应用。此外,还介绍了基于填充焊缝摩擦学测试的选定机器学习工具的案例研究,从中确定了摩擦学特性(摩擦系数、线性磨损)和磨损指标(最大磨损深度、磨损面积)。将研究结果用于探索性数据分析,建立所选参数之间的相关趋势。它们也可以成为使用机器学习算法和神经网络进行回归分析的基础。本文介绍了在摩擦学背景下使用这些方法的案例研究,并展示了它们准确有效地预测选定摩擦学特性的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Tribologia: Finnish Journal of Tribology
Tribologia: Finnish Journal of Tribology Materials Science-Surfaces, Coatings and Films
CiteScore
2.20
自引率
0.00%
发文量
4
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