Centerless grinding is a machining process characterized by highly nonlinear dynamics and large model uncertainty, making it difficult to predict the quality of the worked parts on the basis of the chosen process parameters. Indeed, it is shown that both physics-based and learning-based approaches alone achieve non-satisfactory prediction performance. In this paper a physics-informed learning approach for this problem is presented. It exploits both the prediction of a physics-based (PB) simulation model and a reduced set of experimental data for a data-driven correction. The approach relies on a hierarchical semi-supervised classification, where the training data, classified on the basis of the three quality intervals of interest, are divi...
AbstractDue to increased calls for environmentally benign machining processes, there has been focus ...
Cyber-physical systems (CPS) have opened up a wide range of opportunities in terms of performance an...
International audienceThe Industry 4.0 framework needs new intelligent approaches. Thus, the manufac...
Centerless grinding is a machining process characterized by highly nonlinear dynamics and large mode...
Centerless grinding is a machining process characterized by highly nonlinear dynamics, large model u...
This work proposes a model for suggesting optimal process configuration in plunge centreless grindin...
The application of modern edge computing solutions within machine tools increasingly empowers the re...
The increasing digitalization and industrial efforts towards artificial intelligence foster the use ...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
Quality inspection is traditionally considered non-productive. That is why the manufacturing industr...
Energy consumption represents a significant operating expense in the mining and minerals industry. G...
This study aims to present an overall review of the recent research status regarding Machine Learnin...
The current manufacturing environment places a growing demand on autonomous control and optimization...
Although intelligent machine learning techniques have been used for input-output modeling of many di...
New integrated sensors and connected machine tools generate a tremendous amount of in-depth process ...
AbstractDue to increased calls for environmentally benign machining processes, there has been focus ...
Cyber-physical systems (CPS) have opened up a wide range of opportunities in terms of performance an...
International audienceThe Industry 4.0 framework needs new intelligent approaches. Thus, the manufac...
Centerless grinding is a machining process characterized by highly nonlinear dynamics and large mode...
Centerless grinding is a machining process characterized by highly nonlinear dynamics, large model u...
This work proposes a model for suggesting optimal process configuration in plunge centreless grindin...
The application of modern edge computing solutions within machine tools increasingly empowers the re...
The increasing digitalization and industrial efforts towards artificial intelligence foster the use ...
Selection of optimum process parameters is vital for performing a sound grinding operation on Incone...
Quality inspection is traditionally considered non-productive. That is why the manufacturing industr...
Energy consumption represents a significant operating expense in the mining and minerals industry. G...
This study aims to present an overall review of the recent research status regarding Machine Learnin...
The current manufacturing environment places a growing demand on autonomous control and optimization...
Although intelligent machine learning techniques have been used for input-output modeling of many di...
New integrated sensors and connected machine tools generate a tremendous amount of in-depth process ...
AbstractDue to increased calls for environmentally benign machining processes, there has been focus ...
Cyber-physical systems (CPS) have opened up a wide range of opportunities in terms of performance an...
International audienceThe Industry 4.0 framework needs new intelligent approaches. Thus, the manufac...