Build Quality Surveillance
- Project
- 17010 SAMUEL
- Type
- New product
- Description
The tool provides new insights and a better understanding in the physics of the AM process under surveillance.
- Contact
- Michel Janssens, Materialise
- michel.janssens@materialise.be
- Technical features
Input(s):
- Production monitoring data
Main feature(s):
- Train AI model on a set of monitoring data
Output(s):
- Detected anomalies
- Identified anomalies (diagnostic)
- Specific corrective actions
- Integration constraints
- The method requires full access to monitoring data. Most of the legacy systems are “black box”. Materialise has an open controller (MCP) enabling this
- The solution still requires insight and is intended as a tool for the AM expert rather than the user of AM machines
- Integration with open AI environments is still complex (the interactive notebook of Sirris might help here)
- Targeted customer(s)
- AM OEMs
- AM experts
- Conditions for reuse
OEM Contract, bilateral collaboration.
- Confidentiality
- Public
- Publication date
- 27-09-2022
- Involved partners
- Materialise (BEL)