Modular Plants are highly flexible and scalable and thus have potential utility to support faster time-to-process. Digital Twins of these modules require FAIR data and prior knowledge from the different domains in process development to describe ...
Artikel
Foundation Model for Determining Suitable Process Parameters in Twin‐Screw Extrusion
Von Wiley-VCH zur Verfügung gestellt
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.
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