Prediction of the Form of a Hardened Metal Workpiece during the Straightening Process

Author:

Peršak Tadej1,Hernavs Jernej1,Vuherer Tomaž1,Belšak Aleš1,Klančnik Simon1ORCID

Affiliation:

1. Faculty of Mechanical Engineering, University of Maribor, Smetanova ulica 17, 2000 Maribor, Slovenia

Abstract

In industry, metal workpieces are often heat-treated to improve their mechanical properties, which leads to unwanted deformations and changes in their geometry. Due to their high hardness (60 HRC or more), conventional bending and rolling straightening approaches are not effective, as a failure of the material occurs. The aim of the research was to develop a predictive model that predicts the change in the form of a hardened workpiece as a function of the arbitrary set of strikes that deform the surface plastically. A large-scale laboratory experiment was carried out in which a database of 3063 samples was prepared, based on the controlled application of plastic deformations on the surface of the workpiece and high-resolution capture of the workpiece geometry. The different types of input data, describing, on the one hand, the performed plastic surface deformations on the workpieces, and on the other hand the point cloud of the workpiece geometry, were combined appropriately into a form that is a suitable input for a U-Net convolutional neural network. The U-Net model’s performance was investigated using three statistical indicators. These indicators were: relative absolute error (RAE), root mean squared error (RMSE), and relative squared error (RSE). The results showed that the model had excellent prediction performance, with the mean values of RMSE less than 0.013, RAE less than 0.05, and RSE less than 0.004 on test data. Based on the results, we concluded that the proposed model could be a useful tool for designing an optimal straightening strategy for high-hardness metal workpieces. Our results will open the doors to implementing digital sustainability techniques, since more efficient handling will result in fewer subsequent heat treatments and shorter handling times. An important goal of digital sustainability is to reduce electricity consumption in production, which this approach will certainly do.

Funder

Slovenian Research Agency

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

Reference43 articles.

1. Heat Treatment of Steel 1.1730 with Concentrated Solar Energy;Stoicanescu;Mater. Plast.,2019

2. Publications Office of the European Union (2023, April 03). Further Improvements of Energy Efficiency in Industry. Available online: https://op.europa.eu/en/publication-detail/-/publication/9f7388b4-79d4-11ed-9887-01aa75ed71a1.

3. Energy efficiency and productivity change of China’s iron and steel industry: Accounting for undesirable outputs;He;Energy Policy,2013

4. Fa-jun, D. (2014). Heat Treatment Process and Defect Analysis of the Aviation Piston Engine Crankshaft, IEEE.

5. Minimization of Distortion in Heat Treated AISI D2 Tool Steel: Mechanism and Distortion Analysis;Sonar;Procedia Manuf.,2018

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