Inferential measurement of the dresser width for the grinding process automation
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Ferreira, Fabio Isaac 

de Aguiar, Paulo Roberto 

Lopes, Wenderson Nascimento 

Martins, Cesar Henrique Rossinoli
Ruzzi, Rodrigo de Souza
Bianchi, Eduardo Carlos 

D’Addona, Doriana Marilena
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Resumo
Dressing is an essential process for the machining industries. The grinding community keeps the slogan “grinding is dressing,” given the importance of this reconditioning process. This paper presents a methodology for forecasting the dresser width one step forward by using indirect monitoring. The dresser width is an important parameter to guarantee the quality of the dressing process and, in many cases, it is monitored directly by the operators. Acoustic emission signals were collected during the dressing process and an estimation neural network was used to correlate the dresser width with the processed signals to estimate the current value of the width. The output of the estimation network was input to a time-delay neural network to predict the next value of the dresser width. By utilizing this procedure, an automatic system would be able to readjust the dressing parameters while avoiding the stops, reducing costs, and maintaining repeatability during the process.
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Palavras-chave
Acoustic emission, Artificial neural networks, Dressing operation, Inferential measurement, Tool wear condition
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Inglês
Citação
International Journal of Advanced Manufacturing Technology, v. 100, n. 9-12, p. 3055-3066, 2019.

