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oapen-20.500.12657-575352022-07-19T03:08:13Z Mesoscale simulation of the mold filling process of Sheet Molding Compound Meyer, Nils Sheet Molding Compound Fließpressen Prozesssimulation CoDiCoFRP Compression Molding Process simulation bic Book Industry Communication::T Technology, engineering, agriculture::TG Mechanical engineering & materials Sheet Molding Compounds (SMC) are discontinuous fiber reinforced composites that are widely applied due to their ability to realize composite parts with long fibers at low cost. A novel Direct Bundle Simulation (DBS) method is proposed in this work to enable a direct simulation at component scale utilizing the observation that fiber bundles often remain in a bundled configuration during SMC compression molding. 2022-07-18T11:55:23Z 2022-07-18T11:55:23Z 2022 book ONIX_20220718_9783731511731_112 1863-6489 9783731511731 https://library.oapen.org/handle/20.500.12657/57535 eng Karlsruher Schriftenreihe Fahrzeugsystemtechnik application/pdf n/a 9783731511731.pdf https://doi.org/10.5445/KSP/1000143703 KIT Scientific Publishing KIT Scientific Publishing 10.5445/KSP/1000143703 10.5445/KSP/1000143703 44e29711-8d53-496b-85cc-3d10c9469be9 9783731511731 KIT Scientific Publishing 10 294 Karlsruhe open access
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OAPEN
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English
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Sheet Molding Compounds (SMC) are discontinuous fiber reinforced composites that are widely applied due to their ability to realize composite parts with long fibers at low cost. A novel Direct Bundle Simulation (DBS) method is proposed in this work to enable a direct simulation at component scale utilizing the observation that fiber bundles often remain in a bundled configuration during SMC compression molding.
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9783731511731.pdf
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9783731511731.pdf
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9783731511731.pdf
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title_full |
9783731511731.pdf
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9783731511731.pdf
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9783731511731.pdf
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9783731511731.pdf
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publisher |
KIT Scientific Publishing
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2022
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url |
https://doi.org/10.5445/KSP/1000143703
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1771297406027038720
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