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 × 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 r...
Quality of surface roughness has a great impact on machine parts during their useful life. The machi...
This article presents the development of a system for predicting surface roughness, using a feed-for...
In recent years a direct method of surface finish quality detection by electrical resistance, optic...
Surface roughness and cutting forces are considered as important factors to determine machinability ...
In the metal cutting process of machine tools, the quality of the surface roughness of the product i...
Surface roughness is a very important measurement in machining process and a determining factor desc...
The present study is focused to investigate the effect of the various machining input parameters suc...
In CNC milling process, proper setting of cutting parameter is important to obtain better surface r...
Surface roughness, an indicator of surface quality, is one of the most specified customer requiremen...
A neural network modeling approach is presented for the prediction of surface texture parameters dur...
This proposed work deals with the development of surface roughness prediction model for turning of A...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
In this present work, the important challenge is to manufacture high quality and low cost products w...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
Quality of surface roughness has a great impact on machine parts during their useful life. The machi...
This article presents the development of a system for predicting surface roughness, using a feed-for...
In recent years a direct method of surface finish quality detection by electrical resistance, optic...
Surface roughness and cutting forces are considered as important factors to determine machinability ...
In the metal cutting process of machine tools, the quality of the surface roughness of the product i...
Surface roughness is a very important measurement in machining process and a determining factor desc...
The present study is focused to investigate the effect of the various machining input parameters suc...
In CNC milling process, proper setting of cutting parameter is important to obtain better surface r...
Surface roughness, an indicator of surface quality, is one of the most specified customer requiremen...
A neural network modeling approach is presented for the prediction of surface texture parameters dur...
This proposed work deals with the development of surface roughness prediction model for turning of A...
This paper presents the ANN model for predicting the surface roughness performance measure in the ma...
In this present work, the important challenge is to manufacture high quality and low cost products w...
This thesis discuss the Optimization of surface roughness in milling using Artificial Neural Network...
This study introduces the improvement of mathematical and predictive models of surface roughness par...
Quality of surface roughness has a great impact on machine parts during their useful life. The machi...
This article presents the development of a system for predicting surface roughness, using a feed-for...
In recent years a direct method of surface finish quality detection by electrical resistance, optic...