Gyulai, D., Pfeiffer, A., Nick, G., Gallina, V., Sihn, W., & Monostori, L. (2018). Lead time prediction in a flow-shop environment with analytical and machine learning approaches. In IFAC-PapersOnLine (pp. 1029–1034). https://doi.org/10.1016/j.ifacol.2018.08.472
E330-02 - Forschungsbereich Betriebstechnik, Systemplanung und Facility Management
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Published in:
IFAC-PapersOnLine
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Date (published):
2018
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Event name:
16th IFAC Symposium on Information Control Problems in Manufacturing
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Event date:
11-Jun-2018 - 13-Jun-2018
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Event place:
Bergamo
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Event place:
IT
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Number of Pages:
6
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Keywords:
Control and Systems Engineering; Machine learning; Production control; Lead time; Manufacturing systems; Prediction methods; Statistical inference
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Abstract:
Manufacturing lead time (LT) is often among the most important corporate performance indicators that companies wish to minimize in order to meet the customer expectations, by delivering the right products in the shortest possible time. Most production planning and scheduling methods rely on LTs, therefore, the e_ciency of these methods is crucially a_ected by the accuracy of LT prediction. However, achieving high accuracy is often complicated, due to the complexity of the processes and high variety of products. In the paper, analytical and machine learning prediction techniques are analyzed and compared, focusing on a real ow-shop environment exposed to frequent changes and uncertainties resulted by the changing customer order stream. The digital data twin of the processes is applied to accurately predict the manufacturing LT of jobs, keeping the prediction models up-to-date via online connection with the manufacturing execution system, and frequent retraining of the models.