The aim of this paper is to conduct an experimental study in order to obtain a roughness (Ra) prediction model for dry end-milling (with an AlTiCrSiN PVD-coated tool) of the Co–28Cr–6Mo and Co–20Cr–15W–10Ni biomedical alloys, a model that can contribute to more quickly obtaining the desired surface quality and shortening the manufacturing process time. An experimental plan based on the central composite design method was adopted to determine the influence of the axial depth of cut, feed per tooth and cutting speed process parameters (input variables) on the Ra surface roughness (response variable) which was recorded after machining for both alloys. To develop the prediction models, statistical techniques were used first and three prediction...
All manufacturing engineers are faced with a lot of difficulties and high expenses associated with g...
The output parameter of the model was surface roughness. For this interpretation, advantages of stat...
This thesis presents the milling process modeling to predict surface roughness. Proper setting of cu...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
Abstract. The surface quality of the machined parts is one of the most important product quality cha...
In this present work, the important challenge is to manufacture high quality and low cost products w...
WOS: 000415695400013This contribution presents an approach for the modeling and prediction of surfac...
In this work, an artificial neural network (ANN) model was developed for the investigation and predi...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
Surface roughness (Ra) is one of the most common responses in machining and an effective parameter t...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
In this paper, an attempt has been made to develop an accurate mathematical model for predicting the...
All manufacturing engineers are faced with a lot of difficulties and high expenses associated with g...
The output parameter of the model was surface roughness. For this interpretation, advantages of stat...
This thesis presents the milling process modeling to predict surface roughness. Proper setting of cu...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
Abstract. The surface quality of the machined parts is one of the most important product quality cha...
In this present work, the important challenge is to manufacture high quality and low cost products w...
WOS: 000415695400013This contribution presents an approach for the modeling and prediction of surfac...
In this work, an artificial neural network (ANN) model was developed for the investigation and predi...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
Surface roughness (Ra) is one of the most common responses in machining and an effective parameter t...
The aim of this study is to predict surface roughness in end milling of AISI 1040 steel. In realisin...
In this paper, an attempt has been made to develop an accurate mathematical model for predicting the...
All manufacturing engineers are faced with a lot of difficulties and high expenses associated with g...
The output parameter of the model was surface roughness. For this interpretation, advantages of stat...
This thesis presents the milling process modeling to predict surface roughness. Proper setting of cu...