2021
DOI: 10.48550/arxiv.2107.14574
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Surrogate Modelling for Injection Molding Processes using Machine Learning

Abstract: Injection molding is one of the most popular manufacturing methods for the modeling of complex plastic objects. Faster numerical simulation of the technological process would allow for faster and cheaper design cycles of new products. In this work, we propose a baseline for a data processing pipeline that includes the extraction of data from Moldflow simulation projects and the prediction of the fill time and deflection distributions over 3-dimensional surfaces using machine learning models. We propose algorit… Show more

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