Modelling of kerf width in plasma jet metal cutting process using ANN approach (CROSBI ID 236748)
Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija
Podaci o odgovornosti
Peko, Ivan ; Nedić, Bogdan ; Đorđević, Aleksandar ; Veža, Ivica
engleski
Modelling of kerf width in plasma jet metal cutting process using ANN approach
In this paper Artificial Neural Network (ANN) model was developed for prediction of kerf width in plasma jet metal cutting process. Process parameters whose influence was analyzed are cutting height, cutting speed and arc current. An L18 (21x37) Taguchi orthogonal array experiment was conducted on aluminium sheet of 3 mm thickness. Using the experimental data a feed – forward backpropagation artificial neural network model was developed. After the prediction accuracy of the developed model was verified, the model was used to generate plots that show influence of process parameters and their interactions on analzyed kerf width and to get conlusions about process parameters values that lead to minimal kerf width.
artificial neural networks ; kerf width ; modeling ; plasma jet metal cutting
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Podaci o izdanju
25 (2)
2018.
401-406
objavljeno
1330-3651
1848-6339
10.17559/TV-20161024093323