This work proposes a model for suggesting optimal process configuration in plunge centreless grinding operations. Seven different approaches were implemented and compared: first principles model, neural network model with one hidden layer, support vector regression model with polynomial kernel function, Gaussian process regression model and hybrid versions of those three models. The first approach is based on an enhancement of the well-known numerical process simulation of geometrical instability. The model takes into account raw workpiece profile and possible wheel-workpiece loss of contact, which introduces an inherent limitation on the resulting profile waviness. Physical models, because of epistemic errors due to neglected or oversimpli...
This paper reports the results of an experimental programme to study the effects of process paramete...
This study is aimed at getting simplified model of mill filling technological process of fine crushi...
The paper presents a model based on neural networks which is able to predict the time required to pa...
This work proposes a model for suggesting optimal process configuration in plunge centreless grindin...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
Centerless grinding is a machining process characterized by highly nonlinear dynamics, large model u...
Advanced manufacturing depends on the timely acquisition, distribution, and utilization of informati...
Centerless grinding is a machining process characterized by highly nonlinear dynamics and large mode...
Increasing quality requirements, high process safety, low production costs and short production time...
The growth and decay of lobes during centreless grinding have been studied by previous researchers u...
The current manufacturing environment places a growing demand on autonomous control and optimization...
Grinding gap geometry based on setup conditions and its effect on roundness generation is a complex ...
Continuation of research on solving the problem of estimation of CNC grinding process parameters of ...
The residual properties of the ball screw raceway after whirling milling are the critical factors af...
Grinding is one of the important finishing machining operations. It is applied at the last stage of ...
This paper reports the results of an experimental programme to study the effects of process paramete...
This study is aimed at getting simplified model of mill filling technological process of fine crushi...
The paper presents a model based on neural networks which is able to predict the time required to pa...
This work proposes a model for suggesting optimal process configuration in plunge centreless grindin...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
Centerless grinding is a machining process characterized by highly nonlinear dynamics, large model u...
Advanced manufacturing depends on the timely acquisition, distribution, and utilization of informati...
Centerless grinding is a machining process characterized by highly nonlinear dynamics and large mode...
Increasing quality requirements, high process safety, low production costs and short production time...
The growth and decay of lobes during centreless grinding have been studied by previous researchers u...
The current manufacturing environment places a growing demand on autonomous control and optimization...
Grinding gap geometry based on setup conditions and its effect on roundness generation is a complex ...
Continuation of research on solving the problem of estimation of CNC grinding process parameters of ...
The residual properties of the ball screw raceway after whirling milling are the critical factors af...
Grinding is one of the important finishing machining operations. It is applied at the last stage of ...
This paper reports the results of an experimental programme to study the effects of process paramete...
This study is aimed at getting simplified model of mill filling technological process of fine crushi...
The paper presents a model based on neural networks which is able to predict the time required to pa...