To cut cost of maintenance, being able to stop the machines at the right time before fault and the possibility to implement zero defect manufacturing is an important part of manufacturing aeroplane engine parts. The purpose of this report is to test a statistical method on different data sources of GKN Aerospace Norway, and Sweden to see what kind of available dataset is best suited to prevent high maintenance cost and identify faults in the machine. The data sources are based on calibration data of a probe and temperature from a Carnaghi vertical turning lathe machine at GKN Aerospace Norway, and vibration and runout data from the spindle on a GROB milling machine at GKN Aerospace Sweden. Using Principal component analysis and Mahalanobis ...
Data Study Groups are week-long events at The Alan Turing Institute bringing together some of the co...
This dissertation deals with the study, development and implementation of condition monitoring algor...
This dissertation argues that classification is an effective tool in the prediction of machine condi...
GKN Aerospace is a world leading supplier of engine parts in the aerospace industry, for both milita...
The availability of industrial machinery is crucial to any business operating in the manufacturingse...
International audienceManufacturing companies are under a constant pressure due to multiple factors:...
Abstract The operation of industrial manufacturing processes can suffer greatly when critical compo...
Many manufacturers, in particular machine tool builders, aim for service innovation in order to ...
Programs such as Industry 4.0 and Internet of Things contain the promise of intelligent production ...
AbstractAs the manufacturing community embraces the use of a variety of metrology solutions, the ava...
In high-value manufacturing, production equipment is often calibrated on a regular basis to ensure i...
The presented work is toward population-based predictive maintenance of manufacturing equipment with...
Identifying faults in machinery before they cause critical failure is the core purpose of condition ...
Using machine learning (ML) techniques in general and deep learning techniques in specific needs a c...
Programs such as Industry 4.0 and Internet of Things contain the promise of "intelligent production"...
Data Study Groups are week-long events at The Alan Turing Institute bringing together some of the co...
This dissertation deals with the study, development and implementation of condition monitoring algor...
This dissertation argues that classification is an effective tool in the prediction of machine condi...
GKN Aerospace is a world leading supplier of engine parts in the aerospace industry, for both milita...
The availability of industrial machinery is crucial to any business operating in the manufacturingse...
International audienceManufacturing companies are under a constant pressure due to multiple factors:...
Abstract The operation of industrial manufacturing processes can suffer greatly when critical compo...
Many manufacturers, in particular machine tool builders, aim for service innovation in order to ...
Programs such as Industry 4.0 and Internet of Things contain the promise of intelligent production ...
AbstractAs the manufacturing community embraces the use of a variety of metrology solutions, the ava...
In high-value manufacturing, production equipment is often calibrated on a regular basis to ensure i...
The presented work is toward population-based predictive maintenance of manufacturing equipment with...
Identifying faults in machinery before they cause critical failure is the core purpose of condition ...
Using machine learning (ML) techniques in general and deep learning techniques in specific needs a c...
Programs such as Industry 4.0 and Internet of Things contain the promise of "intelligent production"...
Data Study Groups are week-long events at The Alan Turing Institute bringing together some of the co...
This dissertation deals with the study, development and implementation of condition monitoring algor...
This dissertation argues that classification is an effective tool in the prediction of machine condi...