Artificial Intelligence-Based Surface Roughness Estimation Modelling for Milling of AA6061 Alloy

Author:

Eser Aykut1ORCID,Aşkar Ayyıldız Elmas2ORCID,Ayyıldız Mustafa3ORCID,Kara Fuat3ORCID

Affiliation:

1. Department of Manufacturing Engineering, Institute of Science, Düzce University, Düzce, Turkey

2. Department of Mechanical Engineering, Institute of Science, Düzce University, Düzce, Turkey

3. Department of Mechanical Engineering, Düzce University, Düzce, Turkey

Abstract

This study introduces the improvement of mathematical and predictive models of surface roughness parameter (Ra) in milling AA6061 alloy using carbide cutting tools coated with CVD-TiCN in dry condition. An experimental model has been improved for estimating the surface roughness using artificial neural networks (ANN) and response surface methodology (RSM). For these models, cutting speed, depth of cut, and feed rate were evaluated as input parameters for experimental design. For the ANN modelling, the standard backpropagation algorithm was established to be the optimum selection for training the model. In the forming of the network construction, five different learning algorithms were used: the conjugate gradient backpropagation, Levenberg–Marquardt, scaled conjugate gradient, quasi-Newton backpropagation, and resilient backpropagation. The best consequent with single hidden layers for the surface roughness was obtained by 3-8-1 network structures. The statistical analysis was performed with RSM-based second-order mathematics model. The influences of the cutting parameters on surface roughness were defined by using analysis of variance (ANOVA). The ANOVA results show that the depth of cut is the most effective parameter on surface roughness. Prediction models developed using ANN and RSM were compared in terms of prediction accuracy R2, MEP, and RMSE. The data estimated from ANN and RSM were realized to be very close to the data acquired from experimental studies. The value R2 of RSM model was higher than the values of the ANN model which demonstrated the stability and sturdiness of the RSM method.

Publisher

Hindawi Limited

Subject

General Engineering,General Materials Science

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