Machine learning and simulation-based surrogate modeling for improved process chain operation

In this contribution, a concept is presented that combines different simulation paradigms during the engineering phase. These methods are transferred into the operation phase by the use of data-based surrogates. As an virtual production scenario, the process combination of thermoforming continuous f...

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Veröffentlicht in:International journal of advanced manufacturing technology 2021-12, Vol.117 (7-8), p.2297-2307
Hauptverfasser: Hürkamp, André, Gellrich, Sebastian, Dér, Antal, Herrmann, Christoph, Dröder, Klaus, Thiede, Sebastian
Format: Artikel
Sprache:eng
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Zusammenfassung:In this contribution, a concept is presented that combines different simulation paradigms during the engineering phase. These methods are transferred into the operation phase by the use of data-based surrogates. As an virtual production scenario, the process combination of thermoforming continuous fiber-reinforced thermoplastic sheets and injection overmolding of thermoplastic polymers is investigated. Since this process is very sensitive regarding the temperature, the volatile transfer time is considered in a dynamic process chain control. Based on numerical analyses of the injection molding process, a surrogate model is developed. It enables a fast prediction of the product quality based on the temperature history. The physical model is transferred to an agent-based process chain simulation identifying lead time, bottle necks and quality rates taking into account the whole process chain. In the second step of surrogate modeling, a feasible soft sensor model is derived for quality control over the process chain during the operation stage. For this specific uses case, the production rejection can be reduced by 12% compared to conventional static approaches.
ISSN:0268-3768
1433-3015
DOI:10.1007/s00170-021-07084-5