Process Stability Prediction with Machine Learning

The potential of artificial intelligence for the early detection of deviations in pharmaceutical filling

JournalIndustrie 4.0 Management
Issue Volume 36, 2020, Edition 2, Pages 34-38
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Abstract

Due to competitive pressure pharmaceutical companies are also driven to increase the efficiency of their processes. In this paper an approach for the predictive detection of malfunctions of filling systems for powdery pharmaceutical products using machine learning is presented. The focus is on the prediction of filling deviations with recurrent neural networks, with the objective to detect a drift in the process stability to intervene accordingly.

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