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Anomaly Detection in Injection Molding Process Data Based on Unsupervised Learning

Zeitschrift Kunststofftechnik/Journal of Plastics Technology - Germany
doi 10.3139/o999.02052018
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Abstract

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Categories
PolymersPlastics
Date

January 1, 2018

Authors
Reinhard Schiffers
Publisher

Carl Hanser Verlag


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