Build time estimation (BTE) for (high-end) FDM
- Project
- 17010 SAMUEL
- Description
- The current (before the project) accuracy of BTE for FDM had 65% predictions within tolerance. Early tests show that 88% is feasible with a trained AI model
- Two variants can be provided: a pretrained model on a large database present at Materialise (the basic user model) and tools to train models on the customers database (the advanced user model)
- The system can improve over time as more data becomes available
- Contact
- Michel Janssens, Materialise
- michel.janssens@materialise.be
- Technical features
Input(s):
- 3D Models (STL, STEP, Native CAD)
- Production data or database plugin
Main feature(s):
- Train AI model on a set of data to predict the FDM build time of a 3D model
Output(s):
- The build time
- Integration constraints
- Organized, quality AM production data: this is only limited available
- Legacy data is not always useable
- There is currently not a (commercial) system to use customer specific data
- For the training of the AI-model at the user, training algorithms need to be provided. At this moment, free to use packages are used (Keras …) but this might change in the future
- Targeted customer(s)
- AM users and service bureaus
- Existing (software) customers
- Conditions for reuse
- Different business models can be applied: license, pay-per-use …
- OEM contract
- Confidentiality
- Public
- Publication date
- 27-09-2022
- Involved partners
- Materialise (BEL)