Unforeseen machine tool component failures cause considerable losses. This study presents a new approach to unsupervised machine component condition identification. It uses test cycle data of machine components in healthy and various faulty conditions for modelling. The novelty in the approach consists of the time series representation as features, the filtering of the features for statistical significance, and the use of this feature representation to train a clustering model. The benefit in the proposed approach is its small engineering effort, the potential for automation, the small amount of data necessary for training and updating the model, and the potential to distinguish between multiple known and unknown conditions. Online measurem...
In high speed cutting processes, late replacement of defective tools may lead to machine breakdowns ...
Prognostics and Health Management of machine devices and parts is a hot topic in the Industry 4.0 er...
In this paper a novel approach for monitoring tool-related faults in milling processes by utilizing ...
Degraded or defect machine components and consumables negatively impact manufacturing quality and pr...
Interpretation of sensor data from machine elements is challenging, if no prior knowledge of the sys...
Improving the reliability and efficiency of rotating machinery are central problems in many applicat...
Failures on machine tools not only occur on main components, but also on auxiliaries like cooling un...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
Tool Condition Monitoring (TCM) is a necessary action during end-milling process as worn milling-too...
We propose a framework of self-aware machines based on data collected using the MTConnect protocol. ...
The health monitoring and management have been accepted in modern industrial machinery for an intell...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
This paper studies an intelligent technique for the healthmonitoring and prognostics of common rotar...
Data mining is a powerful technology used in the manufacturing industries to discovery useful inform...
International audienceIn this paper, we propose an offline and online machine health assessment (MHA...
In high speed cutting processes, late replacement of defective tools may lead to machine breakdowns ...
Prognostics and Health Management of machine devices and parts is a hot topic in the Industry 4.0 er...
In this paper a novel approach for monitoring tool-related faults in milling processes by utilizing ...
Degraded or defect machine components and consumables negatively impact manufacturing quality and pr...
Interpretation of sensor data from machine elements is challenging, if no prior knowledge of the sys...
Improving the reliability and efficiency of rotating machinery are central problems in many applicat...
Failures on machine tools not only occur on main components, but also on auxiliaries like cooling un...
Electric machines and motors have been the subject of enormous development. New concepts in design a...
Tool Condition Monitoring (TCM) is a necessary action during end-milling process as worn milling-too...
We propose a framework of self-aware machines based on data collected using the MTConnect protocol. ...
The health monitoring and management have been accepted in modern industrial machinery for an intell...
We focus on machine failure prediction in industry 4.0.Indeed, it is used for classification problem...
This paper studies an intelligent technique for the healthmonitoring and prognostics of common rotar...
Data mining is a powerful technology used in the manufacturing industries to discovery useful inform...
International audienceIn this paper, we propose an offline and online machine health assessment (MHA...
In high speed cutting processes, late replacement of defective tools may lead to machine breakdowns ...
Prognostics and Health Management of machine devices and parts is a hot topic in the Industry 4.0 er...
In this paper a novel approach for monitoring tool-related faults in milling processes by utilizing ...