Data mining is a powerful technology used in the manufacturing industries to discovery useful information. Data mining technology could be integrated with computer integrated manufacturing system in order to analyze the data of the real situation of the manufacturing process. Clustering is one form of unsupervised learning used in data mining. There are a number of applications in a wide variety of area such as pattern recognition, image processing, automatic control, communication, and bio-information. Downtime and malfunction of industrial equipments represents a significant cost burden and productivity loss. Fault diagnosis of such industrial equipments is carried out to pinpoint the location of these fault(s) and their cause(s). Stat...
Anomaly detection and recognition are of prime importance in process industries. Faults are usually ...
Widespread application of distributed control systems and measurement technologies in chemical plant...
Unforeseen machine tool component failures cause considerable losses. This study presents a new appr...
Tool Condition Monitoring (TCM) is a necessary action during end-milling process as worn milling-too...
Improving the overall equipment effectiveness of machine tools will improve resource-efficiency and ...
AbstractImproving the overall equipment effectiveness of machine tools will improve resource-efficie...
This study investigated a methodology for an on-line condition monitoring of tool wear during millin...
The ability to monitor and predict tool deterioration during machining is an important goal because ...
Machining processes, such as milling, drilling, turning and grinding, concern the removal of materia...
Degraded or defect machine components and consumables negatively impact manufacturing quality and pr...
With the onset of ICT and big data capabilities, the physical asset and data computation is integrat...
This paper concerns the analysis of experimental data, verifying the applicability of signal analysi...
This graduate thesis is a study and comparison of various classification techniques applied to manuf...
International audienceThe efficient use of digital manufacturing data is a key leverage point of the...
The paper presents a comparative analysis of selected algorithms for prediction and data analysis. T...
Anomaly detection and recognition are of prime importance in process industries. Faults are usually ...
Widespread application of distributed control systems and measurement technologies in chemical plant...
Unforeseen machine tool component failures cause considerable losses. This study presents a new appr...
Tool Condition Monitoring (TCM) is a necessary action during end-milling process as worn milling-too...
Improving the overall equipment effectiveness of machine tools will improve resource-efficiency and ...
AbstractImproving the overall equipment effectiveness of machine tools will improve resource-efficie...
This study investigated a methodology for an on-line condition monitoring of tool wear during millin...
The ability to monitor and predict tool deterioration during machining is an important goal because ...
Machining processes, such as milling, drilling, turning and grinding, concern the removal of materia...
Degraded or defect machine components and consumables negatively impact manufacturing quality and pr...
With the onset of ICT and big data capabilities, the physical asset and data computation is integrat...
This paper concerns the analysis of experimental data, verifying the applicability of signal analysi...
This graduate thesis is a study and comparison of various classification techniques applied to manuf...
International audienceThe efficient use of digital manufacturing data is a key leverage point of the...
The paper presents a comparative analysis of selected algorithms for prediction and data analysis. T...
Anomaly detection and recognition are of prime importance in process industries. Faults are usually ...
Widespread application of distributed control systems and measurement technologies in chemical plant...
Unforeseen machine tool component failures cause considerable losses. This study presents a new appr...