<div class="csl-bib-body">
<div class="csl-entry">Tonejca, L., Trautner, T., Slimane, E., Peso, N., Zulehner, J., & Bleicher, F. (2024). Automated Design of Experiments supporting Feature-based Optimisation of Manufacturing Processes. In <i>Procedia CIRP</i> (pp. 1611–1616). https://doi.org/10.1016/j.procir.2024.10.290</div>
</div>
-
dc.identifier.uri
http://hdl.handle.net/20.500.12708/209644
-
dc.description.abstract
This paper presents a novel process design to enhance time and cost-efficient AI training in manufacturing. As an alternative to time and resource expensive trial-and-error loops, the data basis of the proposed design enables data-driven parameter selection, where the parameter range in which the optimal solution is likely to reside, can be explored in a reproducible and systematical manner. A full-factorial DOE is generated and implemented from within the CAM software. Necessary production artefacts, like NC code, bill-of-material or work plan, are supplied per experiment. The heterogeneous data of different product life cycle phases are collected and related to the according manufacturing feature (i.e., drilling, face-milling, etc.). From within the CAM software, the NC-Code is manipulated to enable the identification of features during production, using feature markers. Instantiated as Siemens NX CAM extension, the novel design was tested on a 5-axis milling and drilling process on aluminium parts. The automated data set generation with feature correlation between different live-cycle phases was verified. As a result, the design supports feature optimization strategies for decision support systems - either as input for CAD/CAM, PLM, ERP and MES.
en
dc.description.sponsorship
FFG - Österr. Forschungsförderungs- gesellschaft mbH