A system of analysis and prediction of the loss of forging tool material applying artificial neural networks
The article presents the use of artificial neural networks (ANN) to build a system of analysis and forecasting of the durability of forging tools and the process of acquiring the source knowledge necessary for the network learning process. In particular, the study focuses on the prediction of the ge...
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Technical Faculty, Bor
2018-01-01
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doaj-ac7054002bd94109ad981801ee0ac06b2020-11-25T00:41:12ZengTechnical Faculty, BorJournal of Mining and Metallurgy. Section B: Metallurgy1450-53392217-71752018-01-0154332333710.2298/JMMB180417023H1450-53391800023HA system of analysis and prediction of the loss of forging tool material applying artificial neural networksHawryluk M.0Mrzyglod B.1Wroclaw University of Science and Technology, Department of Metal Forming and Metrology, PolandAGH University of Science and Technology, Faculty of Metals Engineering and Industrial Computer Science, Krakow, PolandThe article presents the use of artificial neural networks (ANN) to build a system of analysis and forecasting of the durability of forging tools and the process of acquiring the source knowledge necessary for the network learning process. In particular, the study focuses on the prediction of the geometrical loss of the tool material after different surface treatment variants.The methodology of developing neural network models and their quality parameters is also presented. The standard single-layer MLP networks were used here; their quality parameters are at a high level and the results presented with their participation give satisfactory results in line with technological practice. The data used in the learning process come from extensive comprehensive performance tests of forging tools operating under extreme operating conditions (cyclic mechanical and thermal loads). The parameterization of the factors important for the selected forging process was made and a database was developed, including 900 knowledge vectors, each of which provided information on the size of the geometrical loss of the tool material (explained variables). The value of wear was determined for the set values of explanatory variables such as: number of forgings, pressure, temperature on selected tool surfaces, friction path and the variant of the applied surface treatment. The results presented in the study, confirmed by expert technologists, have a clear applicational character, because based on the presented solutions, the optimal treatment can be chosen and the appropriate preventive measures applied, which will extend the service life.http://www.doiserbia.nb.rs/img/doi/1450-5339/2018/1450-53391800023H.pdfDecision support systemDurability of forging toolsArtificial neural networkLoss of materialWear |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hawryluk M. Mrzyglod B. |
spellingShingle |
Hawryluk M. Mrzyglod B. A system of analysis and prediction of the loss of forging tool material applying artificial neural networks Journal of Mining and Metallurgy. Section B: Metallurgy Decision support system Durability of forging tools Artificial neural network Loss of material Wear |
author_facet |
Hawryluk M. Mrzyglod B. |
author_sort |
Hawryluk M. |
title |
A system of analysis and prediction of the loss of forging tool material applying artificial neural networks |
title_short |
A system of analysis and prediction of the loss of forging tool material applying artificial neural networks |
title_full |
A system of analysis and prediction of the loss of forging tool material applying artificial neural networks |
title_fullStr |
A system of analysis and prediction of the loss of forging tool material applying artificial neural networks |
title_full_unstemmed |
A system of analysis and prediction of the loss of forging tool material applying artificial neural networks |
title_sort |
system of analysis and prediction of the loss of forging tool material applying artificial neural networks |
publisher |
Technical Faculty, Bor |
series |
Journal of Mining and Metallurgy. Section B: Metallurgy |
issn |
1450-5339 2217-7175 |
publishDate |
2018-01-01 |
description |
The article presents the use of artificial neural networks (ANN) to build a system of analysis and forecasting of the durability of forging tools and the process of acquiring the source knowledge necessary for the network learning process. In particular, the study focuses on the prediction of the geometrical loss of the tool material after different surface treatment variants.The methodology of developing neural network models and their quality parameters is also presented. The standard single-layer MLP networks were used here; their quality parameters are at a high level and the results presented with their participation give satisfactory results in line with technological practice. The data used in the learning process come from extensive comprehensive performance tests of forging tools operating under extreme operating conditions (cyclic mechanical and thermal loads). The parameterization of the factors important for the selected forging process was made and a database was developed, including 900 knowledge vectors, each of which provided information on the size of the geometrical loss of the tool material (explained variables). The value of wear was determined for the set values of explanatory variables such as: number of forgings, pressure, temperature on selected tool surfaces, friction path and the variant of the applied surface treatment. The results presented in the study, confirmed by expert technologists, have a clear applicational character, because based on the presented solutions, the optimal treatment can be chosen and the appropriate preventive measures applied, which will extend the service life. |
topic |
Decision support system Durability of forging tools Artificial neural network Loss of material Wear |
url |
http://www.doiserbia.nb.rs/img/doi/1450-5339/2018/1450-53391800023H.pdf |
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