Prediction of Dressing in Grinding Operation via Neural Networks
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Data
2017-01-01
Autores
D'Addona, Doriana M.
Matarazzo, Davide
Teti, Roberto
De Aguiar, Paulo R. [UNESP]
Bianchi, Eduardo C. [UNESP]
Fornaro, Arcangelo
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Resumo
In order to obtain a modelling and prediction of tool wear in grinding operations, a Cognitive System has been employed to observe the dressing need and its trend. This paper aims to find a methodology to characterize the condition of the wheel during grinding operations and, by the use of cognitive paradigms, to understand the need of dressing. The Acoustic Emission signal from the grinding operation has been employed to characterize the wheel condition and, by the feature extraction of such signal, a cognitive system, based on Artificial Neural Networks, has been implemented.
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Acoustic emission signal, Artificial neural networks, Dressing, grinding
Como citar
Procedia CIRP, v. 62, p. 305-310.