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A data-driven AI workflow for build-time estimation (BTE)
- Project
- 17010 SAMUEL
- Description
- Build-times of 3D models are mainly predicted employing a global AI modeling approach using all parts in the heterogenous dataset
- As an alternative, the dataset can be divided into subsets of homogenous parts whose characteristics and building times are comparable
- This helps a data-driven algorithm to better learn the mapping between the 3D objects’ characteristics and their printing time
- Allows to gradually construct and maintain a reference repository composed of 3D objects, their characteristic features and the associated AI models for BTE estimation
- Contact
- Mahdi Tabassian, Sirris
- mahdi.tabassian@sirris.be
- Technical features
Input(s):
- 3D Objects (STL, Native CAD)
- Correct BTE
Main feature(s):
- Extraction of features characterizing the 3D objects and automatic selection of the most important features for estimating the objects’ build-time
- Use data-driven methods to divide the heterogenous set of 3D objects into homogeneous subsets
- Train independent AI models on the identified subsets for estimating build-times of the 3D objects
- Incremental learning and performance improvement as more data becomes available
- Capturing any validated BTE estimation into a reference repository
Output(s):
- Reference repository composed of 3D objects - features - AI BTE models
- Estimation of the build-time of 3D objects
- Interactive notebook implementing the validated AI workflow to be used for research experimentation
- Integration constraints
- Access to a large dataset of 3D objects to build independent AI models on the identified subsets of the data. This might not be readily available
- The AI workflow should be trained on a dataset in which the 3D objects were printed in the correct/optimal orientation and their build-times were computed accurately to make a reliable ground-truth
- Targeted customer(s)
- AM research labs
- 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
- SIRRIS (BEL)