Temporal and Spatial Detection of the Onset of Local Necking and Assessment of its Growth Behavior
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Andreas Maier | Marion Merklein | Christian Jaremenko | Emanuela Affronti | M. Merklein | Christian Jaremenko | Emanuela Affronti | Andreas Maier
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