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https://doi.org/10.17559/TV-20160405151333

Use of soft computing technique for modelling and prediction of CNC grinding process

Tomislav Šarić orcid id orcid.org/0000-0002-6339-7936 ; Mechanical Engineering Faculty, Trg I. Brlić Mažuranić 2, 35000 Slavonski Brod, Croatia
Goran Šimunović orcid id orcid.org/0000-0002-7159-2627 ; Mechanical Engineering Faculty, Trg I. Brlić Mažuranić 2, 35000 Slavonski Brod, Croatia
Roberto Lujić ; Mechanical Engineering Faculty, Trg I. Brlić Mažuranić 2, 35000 Slavonski Brod, Croatia
Katica Šimunović ; Mechanical Engineering Faculty, Trg I. Brlić Mažuranić 2, 35000 Slavonski Brod, Croatia
Aco Antić orcid id orcid.org/0000-0002-8520-762X ; Faculty of Technical Sciences, Trg Dositeja Obradovića 6, Novi Sad, Serbia


Puni tekst: hrvatski pdf 1.875 Kb

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preuzimanja: 519

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Puni tekst: engleski pdf 1.875 Kb

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Sažetak

Due to the complexity of grinding process of multilayer ceramics, and the need for a specific product quality, the choice of optimal technological parameters is a challenging task for the manufacturers. The main aim of investigation is to secure the demanded final product quality (plane parallelism) in the function of input parameters (machine, machine operator, foil and production line). "Soft computing techniques" are becoming more interesting to the researchers for the modelling of processing parameters of complex technological processes. In this paper, a soft computing technique, known as the Artificial Neural Networks (ANN), is used for the modelling and prediction of parameters of technological process of CNC grinding of multilayer ceramics. The results show that the ANN with the back-propagation algorithm justifies the application also to this problem. By designing different architectures of ANN (learning rules, transfer functions, number and structure of hidden layers and other) on the set of data from the production - technological process, the best result of RMS error (10,76 %) in the process of learning and 12,07 % in the process of validation was achieved. The achieved results confirm the acceptability and the application of this investigation in the technological and operational preparation of production.

Ključne riječi

grinding; neural networks; prediction; soft computing

Hrčak ID:

163760

URI

https://hrcak.srce.hr/163760

Datum izdavanja:

16.8.2016.

Podaci na drugim jezicima: hrvatski

Posjeta: 2.101 *