journal article Open Access Aug 01, 2023

Development of a Deep Learning Platform for Sheet Stamping Geometry Optimisation under Manufacturing Constraints

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Published
Aug 01, 2023
Vol/Issue
123
Pages
106295
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Hamid Reza Attar, Alistair Foster, Nan Li (2023). Development of a Deep Learning Platform for Sheet Stamping Geometry Optimisation under Manufacturing Constraints. Engineering Applications of Artificial Intelligence, 123, 106295. https://doi.org/10.1016/j.engappai.2023.106295
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