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Paper Titles
Preface
Advanced Control of Stretch-Reducing Mills Using Artificial Intelligence
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Proxy-Physics-Informed and Transfer Learning Networks for Radial-Axial Ring Rolling (RARR) under Varying Data Availability
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Material Parameter Identification Using Bayesian Data Assimilation and Biaxial Tensile Test
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Innovation of the “Cut-Clamp-Play” Concept for Robust and Efficient Sheet Metal Material Characterization
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Method of an Automated Tool Design of Punch-Bending Processes Using the Asset Administration Shell
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Uncertainty Detection in Sheet Metal Bending Processes with Machine Learning
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AI-Driven Design and Optimization of Bending Processes
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Hybrid Numerical and Data-Driven Modelling for Defect Prediction in Screw Press Hot Bulk Forging of the En AW-6060 Part
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HomeKey Engineering MaterialsKey Engineering Materials Vol. 1049Preface

Preface

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Key Engineering Materials (Volume 1049)

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April 2026

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