Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks
The article describes a method of evaluating the reliability of groove turning for piston rings in combustion engines. Parameters representing the roughness of a machined surface, Ra and Rz, were selected for use in evaluation. At present, evaluation of surface roughness is performed manually by ope...
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doaj-84812357536f48168153ac64033ef9802021-09-06T19:39:53ZengSciendoArchives of Mechanical Technology and Materials2450-94692017-01-01371354010.1515/amtm-2017-0005amtm-2017-0005Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural NetworksLisiak Paweł0Rojek Izabela1Twardowski Paweł2Poznan University of Technology, Piotrowo 3, 60-965 Poznan, PolandKazimierz Wielki University, J. K. Chodkiewicza 30, 85-064 Bydgoszcz, PolandPoznan University of Technology, Piotrowo 3, 60-965 Poznan, PolandThe article describes a method of evaluating the reliability of groove turning for piston rings in combustion engines. Parameters representing the roughness of a machined surface, Ra and Rz, were selected for use in evaluation. At present, evaluation of surface roughness is performed manually by operators and recorded on measurement sheets. The authors studied a method for evaluation of the surface roughness parameters Ra and Rz using multi-layered perceptron with error back-propagation (MLP) and Kohonen neural networks. Many neural network models were developed, and the best of them were chosen on the basis of the effectiveness of measurement evaluation. Experiments were carried out on real data from a production company, obtained from several machine tools. In this way it becomes possible to assess machines in terms of the reliability evaluation of turning.https://doi.org/10.1515/amtm-2017-0005reliability evaluationsurface roughnessneural networks |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lisiak Paweł Rojek Izabela Twardowski Paweł |
spellingShingle |
Lisiak Paweł Rojek Izabela Twardowski Paweł Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks Archives of Mechanical Technology and Materials reliability evaluation surface roughness neural networks |
author_facet |
Lisiak Paweł Rojek Izabela Twardowski Paweł |
author_sort |
Lisiak Paweł |
title |
Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks |
title_short |
Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks |
title_full |
Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks |
title_fullStr |
Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks |
title_full_unstemmed |
Evaluating the Reliability of Groove Turning for Piston Rings in Combustion Engines with the Use of Neural Networks |
title_sort |
evaluating the reliability of groove turning for piston rings in combustion engines with the use of neural networks |
publisher |
Sciendo |
series |
Archives of Mechanical Technology and Materials |
issn |
2450-9469 |
publishDate |
2017-01-01 |
description |
The article describes a method of evaluating the reliability of groove turning for piston rings in combustion engines. Parameters representing the roughness of a machined surface, Ra and Rz, were selected for use in evaluation. At present, evaluation of surface roughness is performed manually by operators and recorded on measurement sheets. The authors studied a method for evaluation of the surface roughness parameters Ra and Rz using multi-layered perceptron with error back-propagation (MLP) and Kohonen neural networks. Many neural network models were developed, and the best of them were chosen on the basis of the effectiveness of measurement evaluation. Experiments were carried out on real data from a production company, obtained from several machine tools. In this way it becomes possible to assess machines in terms of the reliability evaluation of turning. |
topic |
reliability evaluation surface roughness neural networks |
url |
https://doi.org/10.1515/amtm-2017-0005 |
work_keys_str_mv |
AT lisiakpaweł evaluatingthereliabilityofgrooveturningforpistonringsincombustionengineswiththeuseofneuralnetworks AT rojekizabela evaluatingthereliabilityofgrooveturningforpistonringsincombustionengineswiththeuseofneuralnetworks AT twardowskipaweł evaluatingthereliabilityofgrooveturningforpistonringsincombustionengineswiththeuseofneuralnetworks |
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1717769800562769920 |