Modelling Anisotropic Phenomena of Friction of Deep-Drawing Quality Steel Sheets Using Artificial Neural Networks

Author:

Trzepieciński Tomasz1,Lemu Hirpa G.2,Chodoła Łukasz3,Ficek Daniel4,Szczęsny Ireneusz4

Affiliation:

1. Rzeszow University of Technology, Faculty of Mechanical Engineering and Aeronautics , Department of Materials Forming and Processing , Rzeszów , Poland

2. University of Stavanger , Department of Mechanical and Structural Engineering , Stavanger , Norway

3. Rzeszow University of Technology, Faculty of Mechanics and Technology , Department of Integrated Design and Tribology Systems , Stalowa Wola , Poland

4. Rzeszow University of Technology, Faculty of Mechanical Engineering and Aeronautics , Department of Aerospace Engineering , Rzeszów , Poland

Abstract

Abstract This paper presents a method of determining the coefficient of friction in metal forming using multilayer perceptron based on experimental data obtained from the pin-on-disk tribometer. As test material, deep-drawing quality DC01, DC03 and DC05 steel sheets were used. The experimental results show that the coefficient of friction depends on the measured angle from the rolling direction and corresponds to the surface topography. The number of input variables of the artificial neural network was optimized using genetic algorithms. In this process, surface parameters of the sheet, sheet material parameters, friction conditions and pressure force were used as input parameters to train the artificial neural network. Some of the obtained results have pointed out that genetic algorithm can successfully be applied to optimize the training set. The trained multilayer perceptron predicted the value of the friction coefficient for the DC04 sheet. It was found that the tested steel sheet exhibits anisotropic tribological properties. The highest values of the coefficient of friction under dry friction conditions were registered for sheet DC05, which had the lowest value of the yield stress. Prediction results of coefficient of friction by multilayer perceptron were in qualitative and quantitative agreement with the experimental ones.

Publisher

Walter de Gruyter GmbH

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Fractal Dimension as Robust Estimate of Low Carbon Steels Hardness;Advances in Science and Technology Research Journal;2022-11-01

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