Foundation Model for Determining Suitable Process Parameters in Twin‐Screw Extrusion
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Identifying suitable process parameters in extrusion is difficult, necessitating specialized staff and hindering automation. To address this challenge, a foundation model for various screw geometries was created using simulated data. This model can be fine-tuned for actual extruders with minimal data, overcoming the issue of data scarcity for extruders.
Abstract
Extrusion is a complex process, and identifying suitable process parameters to achieve specific product or process properties is often a time-consuming manual task, which hinders automation and requires specialized staff. Machine learning models present a promising solution, but they typically require large amounts of high-variational data for training to achieve satisfactory precision. To address this challenge, we propose the development of a foundation model for co-rotating twin-screw extruders, leveraging extensive simulated data for training. By employing a transformer architecture combined with a masking technique, this model will be capable of suggesting process parameters based on desired outcomes. We will also demonstrate how this model can be effectively fine-tuned for a specific extrusion plant using minimal data.




