In industrial applications, the continuously growing development of multi-sensor approaches, together with the trend of creating data-rich environments, are straining the effectiveness of the traditional Statistical Process Control (SPC) tools. Industrial data streams frequently violate the statistical assumptions on which SPC tools are based, presenting non-normal or even mixture distributions, strong autocorrelation and complex noise patterns. To tackle these challenges, novel nonparametric approaches are required. Machine learning techniques are suitable to deal with distributional assumption violations and to cope with complex data patterns. Recent studies showed that those methods can be used in quality control problems by exploitin...
Continuous advances of sensor technology and real-time computational capabilities allow developing...
Tool condition monitoring (TCM) is a mean to optimize production systems trying to use cutting tool ...
AbstractModern monitoring systems in machine tools are able to detect process errors promptly. Still...
In industrial applications, the continuously growing development of multi-sensor approaches, togethe...
AbstractIn industrial applications, the continuously growing development of multi-sensor approaches,...
The data-rich environments of industrial applications lead to large amounts of correlated quality ch...
The data-rich environments of industrial applications lead to large amounts of correlated quality ch...
Monitoring discrete manufacturing processes to reliably detect anomalies, is of fundamental relevanc...
This disclosure describes using self-organizing maps (SOMs) to perform unsupervised classification o...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...
It is important to monitor manufacturing processes in order to improve product quality and reduce pr...
International audienceOver the past decades, control charts, one of the essential tools in Statistic...
The huge amount of data recorded by modern production systems definitely have the potential to provi...
The increased accessibility of a large number of data streams makes it possible to use multivariate ...
The great challenge in quality control and process management is to devise computationally efficient...
Continuous advances of sensor technology and real-time computational capabilities allow developing...
Tool condition monitoring (TCM) is a mean to optimize production systems trying to use cutting tool ...
AbstractModern monitoring systems in machine tools are able to detect process errors promptly. Still...
In industrial applications, the continuously growing development of multi-sensor approaches, togethe...
AbstractIn industrial applications, the continuously growing development of multi-sensor approaches,...
The data-rich environments of industrial applications lead to large amounts of correlated quality ch...
The data-rich environments of industrial applications lead to large amounts of correlated quality ch...
Monitoring discrete manufacturing processes to reliably detect anomalies, is of fundamental relevanc...
This disclosure describes using self-organizing maps (SOMs) to perform unsupervised classification o...
We describe work aimed at applying neural network methods to detect abnormalconditions in quality me...
It is important to monitor manufacturing processes in order to improve product quality and reduce pr...
International audienceOver the past decades, control charts, one of the essential tools in Statistic...
The huge amount of data recorded by modern production systems definitely have the potential to provi...
The increased accessibility of a large number of data streams makes it possible to use multivariate ...
The great challenge in quality control and process management is to devise computationally efficient...
Continuous advances of sensor technology and real-time computational capabilities allow developing...
Tool condition monitoring (TCM) is a mean to optimize production systems trying to use cutting tool ...
AbstractModern monitoring systems in machine tools are able to detect process errors promptly. Still...