Projekter pr. år
Abstract
This paper describes research that addresses the variable behaviour of industrial quality metals and the extension of computational techniques into the fabrication process. It describes the context of robotic incremental sheet metal forming, a freeform method for imparting 3D form onto a 2D thin metal sheet. The paper focuses on the issue of geometric inaccuracies associated with material springback that are experienced in the making of a research demonstrator. It asks how to fabricate in conditions of material inconsistency, and how might adaptive models negotiate between the design model and the fabrication process? Here, two adaptive methods are presented that aim to increase forming accuracy with only a minimum increase in fabrication time, and that maintain ongoing input from the results of the fabrication process. The first method is an online sensor-based strategy and the second method is an offline predictive strategy based on machine learning. Rigidisation of thin metal skins
Originalsprog | Engelsk |
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Titel | Fabricate 2017 |
Redaktører | Achim Menges, Bob Shiel, Ruari Glynn , Marilena Skavara |
Antal sider | 8 |
Forlag | UCL Press |
Publikationsdato | 2017 |
Sider | 114-121 |
ISBN (Trykt) | 978‑1‑78735‑000‑7 |
Status | Udgivet - 2017 |
Kunstnerisk udviklingsvirksomhed (KUV)
- Nej
Projekter
- 1 Afsluttet
-
Complex Modelling
Ramsgaard Thomsen, M., Tamke, M., Ayres, P., Nicholas, P., Stasiuk, D., Holden Deleuran, A., Pauly, M. & Gengnagel, C.
01/09/2013 → 31/08/2017
Projekter: Projekt › Forskning