This article explores the effects of parameters such as cutting speed, force, polymer wheel hardness, feed, and grit size in the abrasive belt grinding process to model material removal. The process has high uncertainty during the interaction between the abrasives and the underneath surface, therefore the theoretical material removal models developed in belt grinding involve assumptions. A conclusive material removal model can be developed in such a dynamic process involving multiple parameters using statistical regression techniques. Six different regression modelling methodologies, namely multiple linear regression, stepwise regression, artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFIS), support vector regressi...
Grinding force is an important parameter that affects the productivity and quality of industrial pro...
In this study, models based on artificial neural networks (ANN) and regression analysis were develop...
Given the application of a multiple regression and artificial neural networks (ANNs), this paper des...
The surface finishing and stock removal of complicated geometries is the principal objective for gri...
The surface finishing and stock removal of complicated geometries is the principal objective for gri...
The surface finishing and stock removal of complicated geometries is the principal objective for gri...
Automation and self-monitoring implementation of manufacturing processes will support the developmen...
Increasing quality requirements, high process safety, low production costs and short production time...
Abstract- Cylindrical grinding is one of the important metal cutting processes used extensively in t...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
This paper is intended to develop an artificial neural network (ANN) based model of material removal...
This paper is intended to develop an artificial neural network (ANN) based model of material removal...
AbstractThe life of a cutting tool is greatly influenced by the forces acting on it during a cutting...
The Grade-H high strength steel is used in the manufacturing of many civilian and military products....
The successful prediction of abrasive wheel behaviour should greatly simplify the complex problem of...
Grinding force is an important parameter that affects the productivity and quality of industrial pro...
In this study, models based on artificial neural networks (ANN) and regression analysis were develop...
Given the application of a multiple regression and artificial neural networks (ANNs), this paper des...
The surface finishing and stock removal of complicated geometries is the principal objective for gri...
The surface finishing and stock removal of complicated geometries is the principal objective for gri...
The surface finishing and stock removal of complicated geometries is the principal objective for gri...
Automation and self-monitoring implementation of manufacturing processes will support the developmen...
Increasing quality requirements, high process safety, low production costs and short production time...
Abstract- Cylindrical grinding is one of the important metal cutting processes used extensively in t...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
This paper is intended to develop an artificial neural network (ANN) based model of material removal...
This paper is intended to develop an artificial neural network (ANN) based model of material removal...
AbstractThe life of a cutting tool is greatly influenced by the forces acting on it during a cutting...
The Grade-H high strength steel is used in the manufacturing of many civilian and military products....
The successful prediction of abrasive wheel behaviour should greatly simplify the complex problem of...
Grinding force is an important parameter that affects the productivity and quality of industrial pro...
In this study, models based on artificial neural networks (ANN) and regression analysis were develop...
Given the application of a multiple regression and artificial neural networks (ANNs), this paper des...