About this Abstract |
Meeting |
TMS Specialty Congress 2025
|
Symposium
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3rd World Congress on Artificial Intelligence in Materials & Manufacturing (AIM 2025)
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Presentation Title |
A Data-Driven Approach to Print Performance Prediction
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Author(s) |
Jennifer Ruddock, James Hardin |
On-Site Speaker (Planned) |
Jennifer Ruddock |
Abstract Scope |
DIW 3D printing is a useful additive manufacturing technique for high-mix, low-volume manufacturing because the process parameters can be adapted to new materials and geometries. However, the link between printer parameters, ink properties and printed part performance is often not straightforward, resulting in a costly trial-and-error approach to print process adaptation. To avoid this onerous process, we aim to determine what minimal test print pattern can be used to predict useful print performance metrics such as the geometric fidelity (avoiding slumping, voids, etc.) and minimize overall print time. This work will first build a core dataset of potential test prints and representative print challenges then seek to link test prints to print behavior using combinations of data-driven tools. |
Proceedings Inclusion? |
Undecided |