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Modelling and Prediction of Surface Roughness in CNC Turning Process using Neural Networks (CROSBI ID 287500)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

SARIC, Tomislav ; VUKELIC, Djordje ; SIMUNOVIC, Katica ; SVALINA, Ilija ; TADIC, Branko ; PRICA, Miljana ; SIMUNOVIC, Goran Modelling and Prediction of Surface Roughness in CNC Turning Process using Neural Networks // Tehnički vjesnik : znanstveno-stručni časopis tehničkih fakulteta Sveučilišta u Osijeku, 27 (2020), 6; 1923-1930. doi: 10.17559/TV-20200818114207

Podaci o odgovornosti

SARIC, Tomislav ; VUKELIC, Djordje ; SIMUNOVIC, Katica ; SVALINA, Ilija ; TADIC, Branko ; PRICA, Miljana ; SIMUNOVIC, Goran

engleski

Modelling and Prediction of Surface Roughness in CNC Turning Process using Neural Networks

The paper presents an approach to solving the problem of modelling and prediction of surface roughness in CNC turning process. In order to solve this problem an experiment was designed. Samples for experimental part of investigation were of dimensions 30 x 350 mm, and the sample material was GJS 500-7. Six cutting inserts were used for the designed experiment as well as variations of cutting speed, feed and depth of cut on CNC lathe DMG Moriseiki - CTX 310 Ecoline. After the conducted experiment, surface roughness of each sample was measured and a data set of 750 instances was formed. For data analysis, the Back- Propagation Neural Network (BPNN) algorithm was used. In modelling different BPNN architectures with characteristic features the results of RMS (Root Mean Square) error were controlled. Specially analysed were the RMS errors realised by different number of neurons in hidden layers. For the BPNN architecture with one hidden layer the architecture (4-8-1) was adopted with RMS error of 3, 37 %. In modelling the BPNN architecture with two hidden layers, a considerable amount of architectures was investigated. The adopted architecture with two hidden layers (4-2-10-1) generated the RMS error of 2, 26 %. The investigation was also directed at the size of the data set and controlling the level of RMS error.

CNC Turning ; Neural Networks ; Prediction ; Surface Roughness

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Podaci o izdanju

27 (6)

2020.

1923-1930

objavljeno

1330-3651

1848-6339

10.17559/TV-20200818114207

Povezanost rada

Strojarstvo

Poveznice
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