Malte Schemmann Schemmann Biaxial Characterization and Mean-field Based Damage Modeling of Sheet Molding Compound Composites

Biaxial Characterization and Mean-field Based Damage Modeling of Sheet Molding Compound Composites

von Malte Schemmann

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Beschreibung

The focus of this work lies on the microstructure-based modeling and characterization of a discontinuous fiber-reinforced thermoset in the form of sheet molding compound (SMC). A microstructure-based parameter identification scheme for SMC with an inhomogeneous fiber orientation distribution is introduced. Different cruciform specimen designs, including two concepts to reinforce the specimens' arms are evaluated. Additionally, a micromechanical mean-field damage model for the SMC is introduced.
The focus of this work lies on the microstructure-based modeling and characterization of a discontinuous fiber-reinforced thermoset in the form of sheet molding compound (SMC). A microstructure-based parameter identification scheme for SMC with an inhomogeneous fiber orientation distribution is introduced. Different cruciform specimen designs, including two concepts to reinforce the specimens' arms are evaluated. Additionally, a micromechanical mean-field damage model for the SMC is introduced.

Autor*in

Malte Schemmann

Themen in »Biaxial Characterization and Mean-field Based Damage Modeling of Sheet Molding Compound Composites«

biaxial tensile testing parameter identification Komposit Probendesign specimen design Schädigungsmodellierung biaxiale Zugversuche damage modeling composite Parameteridentifikation

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Details

ISBN: 9783731508182
Verlag: KIT Scientific Publishing
Erscheinung: 09.11.2018

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