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

André Hürkamp, Sebastian Gellrich, Antal Dér, Christoph Herrmann, Klaus Dröder, Sebastian Thiede

2021The International Journal of Advanced Manufacturing Technology30 citationsDOIOpen Access PDF

Abstract

Abstract 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.

Topics & Concepts

Process (computing)Surrogate modelQuality (philosophy)Computer scienceProcess engineeringMolding (decorative)Soft sensorThermoformingThermoplasticProcess simulationEngineeringMechanical engineeringMaterials scienceMachine learningComposite materialPhilosophyOperating systemEpistemologyInjection Molding Process and PropertiesManufacturing Process and OptimizationAdditive Manufacturing and 3D Printing Technologies
Machine learning and simulation-based surrogate modeling for improved process chain operation | Litcius