This paper is an attempt to compare artificial neural networks and response surface methodology for modeling surface roughness and cutting force in terms of better coefficient of determination (R2), lower root mean square error (RMSE) and model predictive error (MPE). Models were developed based on three-level Box-Behnken design (BBD) of experiments with 15 experimental runs composed of three center points, conducted on Inconel 718 work material using coated carbide insert with cutting speed, feed rate and depth of cut as the process parameters under dry environment. Results show that the artificial neural network (ANN) compared with RSM is a better reliable and accurate approach for predicting and detecting the non-linearity of surface rou...
In this present work, the important challenge is to manufacture high quality and low cost products w...
AbstractIn this paper the comparison of the surface roughness prediction models based on response su...
In recent years, response surface methodology (RSM) which is a statistical technique and artificial ...
This paper is an attempt to compare artificial neural networks and response surface methodology for ...
In this work, an artificial neural network (ANN) model was developed for the investigation and predi...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
Surface roughness is a key parameter to consider in the machining of aluminum alloy. It is rendered ...
Surface roughness is a very important measurement in machining process and a determining factor desc...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
AbstractSurface roughness plays an important role in manufacturing process and is a factor of great ...
The paper presents a potential study on prediction of surface roughness in side milling by optimizat...
Quality of surface roughness has a great impact on machine parts during their useful life. The machi...
Study in the paper investigate the influence of the cutting conditions parameters on surface roughne...
In this study, models based on artificial neural networks (ANN) and regression analysis were develop...
In this present work, the important challenge is to manufacture high quality and low cost products w...
AbstractIn this paper the comparison of the surface roughness prediction models based on response su...
In recent years, response surface methodology (RSM) which is a statistical technique and artificial ...
This paper is an attempt to compare artificial neural networks and response surface methodology for ...
In this work, an artificial neural network (ANN) model was developed for the investigation and predi...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
Surface roughness is a key parameter to consider in the machining of aluminum alloy. It is rendered ...
Surface roughness is a very important measurement in machining process and a determining factor desc...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
AbstractSurface roughness plays an important role in manufacturing process and is a factor of great ...
The paper presents a potential study on prediction of surface roughness in side milling by optimizat...
Quality of surface roughness has a great impact on machine parts during their useful life. The machi...
Study in the paper investigate the influence of the cutting conditions parameters on surface roughne...
In this study, models based on artificial neural networks (ANN) and regression analysis were develop...
In this present work, the important challenge is to manufacture high quality and low cost products w...
AbstractIn this paper the comparison of the surface roughness prediction models based on response su...
In recent years, response surface methodology (RSM) which is a statistical technique and artificial ...